HTML table
a TSV: tab separated value.
b RDF: resource description framework.
c TDE: tableau data extract.
Data Wrangler is a web-based data cleaning and reorganization project developed by Stanford University [ 26 ]. It is a web-based data cleaning tool, mainly used to remove invalid data and organize data into user-required formats. Several data collations can be done in Data Wrangler with a simple click. It also lists the history of data modifications, making it extremely convenient for users to view past modifications and undo a modification operation. Data Wrangler can process data in 2 ways: users can either paste the data into its web interface or use the web interface to export any data operations to Python code and process them.
Advantages of Data Wrangler are that it has column and grid views, uses natural language to describe transformations, supports data visualization and every step of data cleaning, and supports large-scale editing. Disadvantages are that the free version of Data Wrangler provides only limited functionality and consumes a large amount of memory.
Python is a concise, easy-to-read, and extensible data-cleaning tool [ 27 ]. Currently, Numpy and PANDAS (Python Data Analysis Library) are the most used mainstream modules in Python for data cleaning. The PANDAS module is mainly used for data analysis, of which data cleaning is a part. The Numpy module has a powerful N-dimensional array object, and vectorization operations make data processing efficient and helpful in cleaning large data sets.
Advantages of Python are that it is easy to embed into other tools and applications, and users can customize solutions based on their needs. Disadvantages are that it requires users to have advanced programming skills, learn how to use many modules in Python, and understand the required steps during the cleaning process in advance, making it difficult to implement.
R is the language and operating environment used for statistical calculations, data analysis, and graphics [ 28 ]. R is a free, open-source software belonging to the GNU’s Not Unix (GNU) system. It can provide some integrated statistical tools. More importantly, it can provide various mathematical and statistical calculation functions, allowing users to flexibly analyze data and create new statistical calculation methods that meet their needs. R has a set of tools that can effectively and comprehensively clean data. The R environment can read data in multiple formats and process these files. R provides sufficient visualization tools. During the cleaning process, visualization of data at each stage is useful.
Advantages of R are that it supports the visualization of data and each step of data cleaning, making it more suitable for analyzing statistical data. Disadvantages of R are that it is not a good choice for projects outside data science. Users must understand the required steps during the cleaning process in advance, making it difficult to implement.
OpenRefine is a web-based ,independent, open-source application with various functions such as data portrait, cleaning, and conversion [ 29 ]. It can perform visual manipulations on data. It is similar to traditional Microsoft Excel software. However, it works like a database, as it does not deal with individual cells but rather with columns and fields. OpenRefine, formerly known as Google Refine, is a tool for cleaning, reshaping, and editing bulk, unstructured, and cluttered data. OpenRefine is a desktop application that opens as a local web server in a browser. Since it is an open-source project, its code can be reused in other projects. OpenRefine performs cleanup tasks by filtering and faceting, and then converts the data into a more structured format.
Advantages of OpenRefine are that it is a desktop application that does not require networking, making data sets more difficult to tamper with and relatively secure. It can be easily operated and has powerful functions for converting data. Users can use its facet function to filter data into subsets. Disadvantages include a limit of 5000 records, making OpenRefine not suitable for processing large data sets. It assumes that data is organized in a tabular format with limited operations and an unfriendly user interface. In addition, Google has removed support for the tool.
The Guidelines for Real-World Evidence to Support Drug Research and Development and Review (Trial) of the National Medical Products Administration of China (No 1 of 2020) stipulated that “transparency and reproducibility of evidence” should be achieved in the process of translating real-world data into real-world evidence, noting that proper documentation retention is the basis for ensuring transparency and reproducibility. We recommend that the data cleaning plan be stipulated in the RWS data governance plan, which should include personnel requirements, previous expectations for screening suspicious data, diagnostic procedures for identifying errors in the source data, cleaning tools, and decision rules to be applied in the cleaning phase.
Additionally, appropriate documentation should be provided at each of the following points: (1) precleaning (the raw data stage); (2) cleaning operation (during this stage, documentation should include differential markers of suspicious feature types, diagnostic information related to the type of dirty data, application algorithms and operational steps for data editing, and corresponding cleaning reports generated after cleaning is complete; simultaneously, the modification date must be marked for each operation, and the information of the relevant personnel involved in the modification must be saved); (3) the retention stage (after cleaning the data).
Most research projects do not formulate data-cleaning plans in advance. Analyses performed without complete cleaning of the dirty data will lead to biased results, and identifying the causes of any deviations from scratch will further delay the progress of the work. As the diversity of data sources increases the difficulty and workload of data cleaning, we recommend the following strategy.
First, formulate the cleaning plan in advance. As mentioned above, the results of statistical analyses are closely related to the cleanliness of the data. Data cleaning plans should be formulated in advance to ensure sufficient time and technical guidance for data cleaning.
Second, cultivate medical and computer talent. While analyzing real-world data, many medical researchers find that they do not understand computer programming. Conversely, many computer programmers do not have much medical expertise, resulting in poor communication between the two sides and affecting the development of data-cleaning strategies. Therefore, it is necessary to cultivate a group with compound talents who understand both medical statistics and computer applications.
Third, strengthen the computer skills training required for data cleaning. Hospitals and data companies should work together to organize and implement skills training for data cleaning in a timely manner. In addition, medical researchers and computer programmers should participate simultaneously to acquire professional knowledge from each other. Machine-based and manual methods can be selected to improve work efficiency when adopting combined human-machine cleaning strategies.
Fourth, establish a unified data governance and management platform. Researchers should fully use modern technical means to realize the collection, review, governance, and management of RWS data. Moreover, project researchers should perform unified management and maintenance of platform data.
Real-world data are large-scale with low value density. The data source yields dirty data, plagued by issues such as duplication, missing values, and outliers owing to various reasons. Analyses based on such data can severely reduce the efficiency of data use and negatively affect the quality of decision-making. Data cleaning technology can improve data quality and provides more accurate and realistic target data than the source data, which can then be used to support data consumers in making appropriate decisions. The data cleaning principles and workflows discussed in this study may aid in developing standardized methods for data cleaning in RWS.
The authors would like to acknowledge support from the foundation of the Science and Technology Innovation Project of the Chinese Academy of Traditional Chinese Medicine (Research on Key Technologies for Clinical Evaluation of New Chinese Medicines under the Three Combination Evaluation Evidence System), with the subject number CI2021A04701.
GNU | GNU’s Not Unix |
MPN | most probable number |
PANDAS | Python Data Analysis Library |
RCT | randomized controlled trial |
RDF | resource description framework |
RWS | real-world research |
SNM | sorted-neighborhood method |
TDE | tableau data extract |
TSV | tab separated value |
Authors' Contributions: RG and QL put forward the writing direction of this paper, MG was responsible for the idea and writing the first draft of this paper, and other authors participated in the discussion during the preparation of the paper. MZ, YC, and XJ were responsible for demonstrating the practical part of data cleaning. All authors contributed to the paper and approved the submitted version.
Conflicts of Interest: None declared.
Data cleaning is a critical step in the data analysis, ensuring that data is accurate, consistent, and ready for analysis. For analysts, having access to reliable data cleaning tools can significantly streamline the data preparation process, allowing them to focus on deriving insights rather than fixing errors. Here’s a roundup of the best data-cleaning tools that every analyst should consider in 2024.
OpenRefine (formerly known as Google Refine) is a powerful open-source tool designed specifically for cleaning and transforming data. It supports a wide range of data formats and is particularly useful for dealing with messy data.
Key Features
Data exploration and cleaning capabilities
Faceted browsing to filter data easily
Supports data transformations using a robust expression language
Handles large datasets efficiently
Why It’s Great for Analysts
OpenRefine’s intuitive interface makes it easy for analysts to perform complex data-cleaning tasks without extensive coding knowledge.
Its powerful clustering and transformation functions can detect inconsistencies and standardize data quickly.
Trifacta Wrangler is a popular tool among data analysts for data wrangling and preparation. It uses machine learning to suggest data transformations, making the data-cleaning process more efficient.
Smart suggestions for data transformations
Visual interface for intuitive data manipulation
Supports a wide range of data formats and sources
Real-time collaboration capabilities
Trifacta Wrangler’s smart suggestion feature speeds up the data cleaning process, allowing analysts to focus on analyzing data rather than preparing it.
Its visual interface simplifies the process of understanding and manipulating complex datasets.
Alteryx Designer is a comprehensive data preparation tool that enables analysts to clean, blend, and transform data from multiple sources. It offers a drag-and-drop interface, making it accessible to users without advanced coding skills .
Drag-and-drop interface for data preparation
Extensive library of tools for data blending and transformation
Supports advanced analytics and predictive modeling
Integration with various data sources and platforms
Alteryx Designer’s user-friendly interface and robust capabilities make it ideal for analysts looking to perform complex data preparation tasks quickly.
The platform’s integration with other data sources allows for seamless data workflows, from data cleaning to advanced analytics.
Talend Data Preparation is a data cleaning tool that integrates seamlessly with Talend’s broader data integration platform. It’s designed to make the data preparation process faster and more efficient with its self-service data preparation capabilities.
Self-service data preparation
Data cleansing, normalization, and transformation
Integration with Talend’s data integration platform
Collaboration features for team-based data preparation
Talend Data Preparation allows analysts to easily clean and prepare data without needing IT support, empowering them to work more independently.
Its seamless integration with Talend’s other tools makes it a powerful choice for organizations already using Talend for data integration.
Dataiku is a data science platform that provides tools for data preparation, machine learning , and AI. Its data preparation features are particularly strong, offering a range of tools for data cleaning and transformation.
Visual interface for data preparation
Advanced cleaning functions, including deduplication and normalization
Collaboration and versioning features for team-based projects
Dataiku’s intuitive interface and comprehensive data preparation capabilities make it a versatile tool for analysts.
The platform’s collaboration features facilitate teamwork, allowing multiple analysts to work on data preparation simultaneously.
Pandas is a powerful open-source data manipulation and analysis library for Python. While not a standalone tool, it is widely used by data analysts for data cleaning and preparation tasks.
Advanced data manipulation capabilities
Data cleaning functions, such as handling missing values and duplicates
Integration with other Python libraries for data analysis and visualization
Supports data from various formats, including CSV, Excel, and SQL databases
Pandas is highly flexible and powerful, allowing analysts to perform a wide range of data cleaning and manipulation tasks.
Its integration with other Python libraries makes it a versatile choice for analysts looking to perform end-to-end data analysis within the Python ecosystem.
TIBCO Clarity is a cloud-based data preparation tool that provides comprehensive data cleaning and transformation capabilities. It is designed to handle large datasets and support team-based data preparation.
Data profiling and cleansing tools
Support for large datasets and multiple data sources
Collaboration features for team-based projects
Integration with TIBCO’s broader data analytics platform
TIBCO Clarity’s powerful data profiling and cleansing tools make it a strong choice for analysts working with large and complex datasets.
The tool’s cloud-based nature allows for easy collaboration and scalability.
Tableau Prep is part of the Tableau suite of products, designed to help users clean and prepare data for visualization and analysis. It offers a visual interface for data preparation, making it accessible to non-technical users.
Integration with Tableau for seamless data visualization
Data cleaning and transformation tools
Real-time data updates and collaboration features
Tableau Prep’s visual interface simplifies the data preparation process, making it easy for analysts to see their data changes in real time.
The tool’s integration with Tableau allows for seamless transitions from data preparation to data visualization and analysis.
Data cleaning is an essential part of the data analysis process, and choosing the right tool can significantly enhance efficiency and accuracy. From open-source solutions like OpenRefine to advanced platforms like Alteryx Designer and Trifacta Wrangler, there are tools available to suit various needs and skill levels. Whether you're a seasoned data analyst or just starting, these data cleaning tools provide the functionality and ease of use needed to handle messy data and ensure high-quality outputs. By mastering these tools, analysts can save time on data preparation and focus more on deriving valuable insights.
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Cleaning efficacy study, for surfaces contaminated with SARS-Co-2.
This dataset is associated with the following publication: Nelson, S., R. Hardison, R. Limmer, J. Marx, B.M. Taylor, R. James, M. Stewart, S. Lee, W. Calfee, S. Ryan, and M. Howard. Efficacy of Detergent-Based Cleaning and Wiping against SARS-CoV-2 on High Touch Surfaces. Letters in Applied Microbiology. Blackwell Publishing, Malden, MA, USA, 76(3): ovad033, (2023).
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Scientific Reports volume 14 , Article number: 21026 ( 2024 ) Cite this article
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The pore structure of coal plays a key role in the effectiveness of gas extraction. Conventional hydraulic fracturing techniques have limited success in modifying the pore structure using clean fracturing fluid (CFF), and the stimulating effects of ultrasonic can enhance the effectiveness of CFF in modifying coal pore structures. To research the effects of ultrasonic stimulation on the pore structure of medium to high-rank coal when using CFF, this study employed mercury intrusion porosimetry (MIP) and low-temperature nitrogen adsorption (LT-N 2 A) methods to analyze the changes in pore structures after cooperative modification. The results indicate that the pore volume and surface area of medium to high rank coal exhibit an increase and followed by a decrease with increasing R o,max values, while the average pore diameter and permeability demonstrate a decrease and followed by an increase with R o,max . Although there are some variations in the results of MIP and LT-N 2 A analysis for different pore size ranges, the overall findings suggest that ultrasonic stimulation in conjunction with CFF effectively alters the coal pore structure. The most significant improvement was observed in coking coal, where pore volume increased by 22%, pore area decreased by 11% and tortuosity decreased by 47%. The improvement of lean coal is the smallest, the pore volume increases by about 7%, and the surface area decreases by about 14%. It is found that the modification of coal pore volume is mainly concentrated in transition pores and macropores. These research outcomes provide valuable insights into the application of ultrasonic technology in coalbed gas extraction.
In the future, coal will remain the main energy source for many countries, such as China and India. Coalbed methane (CBM) can induce coal and gas outbursts, and other disasters, which restricts the high-efficient mining of coal 1 , 2 , 3 . CBM is a kind of clean energy source, and its direct emission will also aggravate the greenhouse effect 4 , 5 . Therefore, mining CBM can reduce coal mine accidents, increase energy supply and help achieve carbon peaking 6 , 7 .
In the last 20 years, water jet cutting technology, water jet perforation technology, hydraulic fracturing technology, and other technologies have emerged one after another and have become the main technologies to enhance CBM extraction 8 , 9 , 10 . Among them, the application effect of hydraulic fracturing is more prominent, and it has been applied in most highly gassy mine in China 11 . To further improve the effectiveness of hydraulic fracturing technology, many new hydraulic fracturing technologies were proposed 12 , 13 , 14 , such as pulse fracturing 15 , tree-type fracturing 16 , and the fracturing pressure, fracturing range, and extraction effect also researched 17 , 18 , 19 . These research results have more or less promoted the development of hydraulic fracturing technology. In addition to optimizing fracturing technology, improving fracturing fluid is also an important means to improve hydraulic fracturing 20 , 21 , 22 , 23 , such as CFF, foam fracturing fluid, guar gum fracturing fluid and so on. Among them, CFF is one of the fracturing fluids with better application effect 24 . The research 25 shows that the fracturing fluid has stronger fracturing ability, can form wider and more complex hydraulic fractures, and is conducive to CBM extraction. Fracturing fluid will also produce physicochemical reactions with minerals in coal, increase the pore structure and average pore diameter of coal. Zhou et al. 26 found that CFF has a better wetting effect, can also reduce the functional groups, reduce the ash content, and increase the calorific value of coal combustion. Xue et al. 27 compared the effects of Slickwater, Guar gel and VES fracturing fluid on the shape and fractal dimension of coal pores, and the effect of VES clean fracturing fluid was the most significant. Huang et al. 28 compared different fracturing fluids on gas flow, and found that compared with foam fracturing fluid, water-based fracturing fluid gels have adverse effects on the permeability of gas. Ge et al. 29 studied the impact of different types of fracturing fluids on pore volume and connectivity, and compared the effects by combining the changes in pore volume of different pore.
In addition, changing the external physical field can also promote the extraction of CBM, such as ultrasonic 30 , 31 , high-voltage electricity 23 , 32 and so on. Among them, the study on the use of ultrasonic to enhance CBM has been carried out for many years, and its application potential is huge 33 . Scholars have also researched the use of ultrasonic to stimulate coal seam fracturing and promote gas desorption and flow 34 , 35 . Scholars such as Liu 36 and Tang 37 found that ultrasound can improve the shape and size of pores, expand the original cracks in coal seam and increase their connectivity, thus improving the permeability. Jiang et al. 38 also confirmed the influence of ultrasonic on fracture width and permeability through numerical simulation, and found that coal body properties and ultrasonic incident angle are the main factors affecting the effect of ultrasonic on increasing coal seam permeability. Jiang et al. 39 studied the effect of ultrasonic on the desorption rate and desorption amount of coalbed methane, and also established a model of CBM desorption under the action of ultrasonic according to the experimental results. Liu et al. 40 studied the gas adsorption and diffusion of coal samples with different water content after ultrasonic stimulation, and found that the gas adsorption and diffusion coefficient increased significantly after ultrasonic stimulation, and the higher the water content, the more obvious.
Zuo et al. combined the advantages of the above technologies to propose a new technology of ultrasonic and hydraulic fracturing to increase the permeability and gas extraction effect 41 . The research found that the fracturing fluid and ultrasonic can significantly improve the modification effect of coal seam, the ultrasonic power and temperature will also affect the modification effect 42 . As shown in Fig. 1 , the thermal, cavitation, mechanical and chemical effects of ultrasonic waves can induce the extension direction of fractures, accelerate the reaction rate between coal and CFF, clear the extraction channel, promote the desorption and flow of CBM, and finally enhance the gas extraction effect. However, the applicability of this technology to different coal ranks is still unclear. Therefore, this paper carries out an immersion test of different coal samples affected by ultrasonic, and analyzes the changes of coal pore structure after treated by CFF. The research conclusions can expand the theory and technology of CBM mining and promote the development of ultrasonic assisted hydraulic fracturing technology.
Principle diagram of ultrasonic assisted hydraulic fracturing.
Samples preparation.
Four samples of different coal ranks were obtained from four mines in Guizhou and Yunnan, China. The basic parameters were determined, as shown in Table 1 . According to the China National Standards: Chinese classification of in seam coal (GB/T 17607-1998), the DH, WJ, and TC are medium-rank coal, and BL is high-rank coal.
The coal samples were immersed in a high-pressure sealed tank for a duration of 4 h, the immersion pressure was 1.0 MPa, as shown in Fig. 2 . The experimental temperature was maintained at a constant 40 °C. The ultrasonic parameters during the immersion process were set at 40 kHz with a total power of 1 kW. CFF was employed for the experiment, consisting of a mixture of 0.2 wt% Nasal, 0.8 wt% CTAC, and 1 wt% KCl. Preliminary experiments have indicated that this CFF can undergo chemical reactions with coal, and ultrasonic waves can significantly enhance the rate of these chemical reactions, thereby substantially improving the micro-pore structure of coal.
Flow chart of the experiment (the map from the Map Technology Review Center, Department of Natural Resources; http://bzdt.ch.mnr.gov.cn/browse.html?picId=%224o28b0625501ad13015501ad2bfc0280%22 ).
To assess the influence of ultrasonic-assisted CFF on coal samples of varying degrees of metamorphism, MIP and LT-N 2 A were chosen to analyze the changes in coal sample pore structure before and after the treatment.
Mip analysis.
The MIP curves for the four coal samples are depicted in Fig. 3 . Among them, the TC coal sample exhibits the highest pore volume, while the WJ sample shows the lowest, corresponding to the variations in porosity. It is evident that after the application of ultrasonic-assisted CFF, the MIP curves of the coal samples demonstrate varying degrees of alteration, with increased pore volumes observed across all coal ranks. This suggests that ultrasonic-assisted fracturing technology enhances permeability in different medium-ranked coals, although the extent of improvement varies. Furthermore, the efficiency of mercury withdrawal differs before and after the treatment. After the application of ultrasonic-assisted CFF, the mercury withdrawal rates for all coal samples increase, indicating improved pore connectivity and a reduction in the proportion of closed pores. Compared to the raw coal samples, ultrasonic-assisted CFF widens pore fractures, connects some closed pores, and reduces the complexity of pore throat structures, thereby facilitating the removal of mercury from closed pores during withdrawal.
The MIP curves of different coal samples. ( a ) The DH coal sample; ( b ) The WJ coal sample; ( c ) The TC coal sample; ( d ) The BL coal sample.
According to Hodott's aperture classification standard, pores with diameters less than 10 nm are referred to as micropores, pores ranging from 10 to 100 nm are termed transition pores, pores between 100 and 1000 nm are considered mesopores, and pores larger than 1000 nm are classified as macropores. Figure 4 presents the pore volume distribution curves and the distribution percentages of different pore sizes, respectively. The DH, TC, and BL coal samples exhibit similar pore size distributions, primarily consisting of transition pores and macropores, with fewer mesopores. In contrast, the lower-ranked WJ coal sample primarily consists of transition pores, with fewer macropores and mesopores. Notably, after the application of CFF, the different coal ranks show variations in the distribution of pore size categories: (a) For the DH coal sample, the percentage of pore volume in different pore sizes remains basically unchanged after the experiment, but the overall volume increases from 0.036 to 0.041 mL/g, a 13% increase. The volumes of micropores, transition pores, and macropores increase, while the volume of mesopores decreases, particularly for pores smaller than 20 nm and larger than 10,000 nm. Mid-sized pores show a decrease. This is primarily because the interaction of CFF with the coal widens existing pores to varying degrees, increasing their sizes, with fewer new micropores generated. (b) In the case of the WJ coal sample, there is a slight increase in transition pores after the experiment, while the distribution percentages of other pore sizes remain relatively stable. However, the overall volume increases from 0.029 to 0.032 mL/g, approximately a 14% increase. This suggests that some micropores in the coal sample have transformed into transition pores during the process. (c) For the TC coal sample, the volume increased from 0.054 to 0.066 mL/g after the experiment, a 22% increase, indicating that the interaction between CFF and TC coal is the most effective. The changes in the pore volumes of micropores and transition pores are particularly pronounced. Treated with ultrasonic-assisted CFF, the number of micropores decreases, while the number of transition pores increases, with little change in mesopores and macropores. This is primarily because the TC coal sample has the highest number of micropores, providing the largest contact area between CFF and coal, which facilitates the reaction and significantly alters the micropore sizes. Additionally, since transition pores range from 10 to 100 nm, under the same conditions, micropores are more likely to transform into transition pores. (d) The BL coal sample exhibits similarities to the TC coal sample, with a decrease in micropores and mesopores and a slight increase in transition pores and macropores. However, the total pore volume for the BL coal sample increases from 0.030 to 0.032 mL/g, representing an approximately 7% increase. This suggests that the interaction between CFF and the BL coal sample is less effective, mainly because the micropores are widened into transition pores, and relatively few new micropores are generated.
The pore volume distribution curves and percentages of different pore sizes. ( a ) The pore volume distribution curves; ( b ) The percentages of different pore sizes.
It can also be found that, affected by the properties of specific surface area, the pore surface area (PSA) of coal samples of different coal ranks is principally micropores and transition pores, for about 98%. The PSA of DH, WJ, and BL coal samples are relatively small, while that of TC coal samples is larger. In Fig. 5 , the PSA of DH and WJ coal samples increased after treated by ultrasonic assisted CFF, while the PSA of TC and BL samples decreased after the action of CFF. (a) For DH coal samples, after the experiment, the total PSA increased from 4.2 to 5.5 m 2 /g, an increase of about 30%, but the proportion of PSA of different pore sizes remained basically unchanged, which meant that the PSA of micropores and transition pores increased. Combined with the changes in the number of pore volumes, the pore size of the coal sample becomes larger after treated by CFF, and the micropores become transition pores. Besides, a small number of new micropores will be generated, ultimately resulting in an increase in the PSA of both micropores and transition pores with unchanged distribution percentages. (b) For the WJ coal sample, the total PSA increased from 5.6 to 6.3 m 2 /g after the experiment, an increase of about 13%. Specifically, the PSA of micropores changed a little, the PSA of transition pores increased, and the proportion of PSA increased by about 5%, indicating that new micropores were generated when the original micropores became transition pores in the WJ coal. (c) For TC coal, the total PSA decreased from 11.6 to 10.3 m 2 /g after the experiment, with a reduction of about 11%. The PSA of micropores decreased from 8.0 to 4.9 m 2 /g, and the PSA of transition pores increased from 3.6 to 5.3 m 2 /g, indicating that relatively few new micropores were generated after the interaction of CFF and TC coal. The possible reason is that there are many micropores in TC coal, and the contact area between CFF and coal is the largest, which is conducive to chemical reaction between CFF and coal. Finally, during the immersion process, CFF will chemically react with minerals around the micropores and expand the pores to become transition pores, without generating too many new micropores. It is also possible that there is less mineral content in the coal, making it difficult for the CFF to react with the coal. (d) Similar to the TC coal, the BL coal sample exhibits a decrease in the PSA of micropores and an increase in the PSA of transition pores after the experiment. The total PSA for the BL coal sample decreases from 4.5 to 3.9 m 2 /g, indicating a roughly 14% decrease. The PSA of micropores decreases from 2.9 to 2.0 m 2 /g, while the PSA of transition pores increases from 1.5 to 1.8 m 2 /g. This is also attributed to the limited generation of new micropores.
The pore area distribution curves and percentages of different pore sizes. ( a ) The pore area distribution curves; ( b ) The percentages of different pore sizes.
The fractal dimension can characterize the uniformity coefficient of coal seam pore structures. A smaller fractal dimension indicates a more uniform distribution of reservoir pore throats and stronger homogeneity. The fractal dimension of porous rocks typically falls between 2 and 3. The Menger model 43 is used to analyze the fractal dimension of pores. The relationship between \(dV_{P}\) and \(dP\) is expressed by Eq. ( 1 ).
where V P is the cumulative mercury intake when the mercury intake pressure is P , D = A + 4, A is the slope of Eq. ( 1 ), D is the fractal dimension, and the larger D is, the stronger the pore heterogeneity is.
To get the average fractal dimension ( D T ) with data divided into micropores (< 100 nm), mesopores (100–1000 nm), and macropores (> 1000 nm) according to the aperture size 44 , and the fractal dimensions D 1 , D 2 , and D 3 were calculated respectively. Then D T can be calculated as Eq. ( 2 ).
where \(\varphi_{1}\) , \(\varphi_{2}\) , and \(\varphi_{3}\) is the proportion of pore volume of micropores (< 100 nm), mesopores (100–1000 nm), and macropores (> 1000 nm), respectively.
The D 1 , D 2 , and D 3 can be obtained by piecewise fitting of the \(dV_{P}\) and \(dP\) data, as shown in Fig. 6 .
Macropores: The fractal dimensions of DH, WJ, and BL coal samples all decreased after treated by CFF, with a reduction of approximately 11%. This suggests that the pore structure became simpler, and pore homogeneity increased. Combined with Fig. 4 , it can be seen that after treated by CFF, the pore volume of macropores becomes larger, that is, the pore diameter becomes larger. Additionally, any protruding particles within the pores were eliminated, resulting in reduced pore tortuosity. Only the fractal dimension of TC increased after the treatment, with an increase of about 15%. Combined with Fig. 4 , the pore volume of macropores is basically unchanged after CFF action, indicating that CFF action has little influence on macropores.
Mesopores: In contrast to macropores, the fractal dimensions of DH, WJ, and BL all increased by approximately 5% after the CFF treatment, while the fractal dimension of TC coal decreased by about 5%. Combined with the changes in the pore volume after treated by CFF in Fig. 4 , only the pore volume of TC coal sample increases, and the pore structure becomes simple.
Micropores: The fractal dimensions of DH and WJ coal samples increased by 7% and 1% after the CFF treatment, respectively. While the fractal dimensions of TC and BL decreased by 15% and 3%, respectively. Combined with Fig. 4 , it is found that the transition pores volume increases after CFF action, while the pore volume decreases in TC and BL coal samples and increases in DH and WJ coal samples after CFF action This indicates that micropores play a crucial role in determining the fractal dimension within this size range, primarily because micropores have smaller diameters, making them more sensitive to changes in pore shape.
Fractal dimension of coal samples. ( a ) The DH coal sample; ( b ) The WJ coal sample; ( c ) The TC coal sample; ( d ) The BL coal sample.
Figure 7 shows the LT-N 2 adsorption and desorption curves of four coal samples of different ranks before and after CFF action. The adsorption and desorption curves of different raw coal samples are basically similar. Among them, DH, TC, and BL exhibit relatively small hysteresis loops, while the hysteresis loop in WJ is not very pronounced. In the nitrogen adsorption curve, when the relative pressure is less than 0.9, the N 2 adsorption amount increases relaxedly with the increase of the relative pressure. When the relative pressure is greater than 0.9, the adsorption amount of N 2 increases rapidly. After treated by CFF, all coal samples exhibit varying degrees of hysteresis loops. Among them, the DH-treated coal sample has the most pronounced hysteresis loop, with the most significant changes occurring around a relative pressure of 0.5. This suggests that the morphological structure of the pores has changed. In addition, the volume of nitrogen adsorbed by different treated coals also changes to different degrees, indicating that the size and quantity of pores have changed.
LT-N 2 adsorption and desorption curves.
The maximum nitrogen adsorption capacity of different raw coal samples does not vary significantly, but it increases to different degrees after the combined action of ultrasonic-assisted CFF. Among the raw coal samples, the TC coal exhibited the highest N 2 adsorption capacity, while the DH coal showed the most significant increase after ultrasonic-assisted CFF treatment. The maximum nitrogen adsorption capacities for the DH, WJ, TC, and BL coal samples were 3.18 cm 3 /g, 3.36 cm 3 /g, 5.22 cm 3 /g, and 3.65 cm 3 /g, respectively. After the treatment with ultrasonic-assisted CFF, these capacities increased by 52.3%, 35.9%, 27.6%, and 14.3%, respectively. The number, size, and shape of pores are the dominant factors influencing nitrogen adsorption capacity. As coal rank increases, the rate of increase in maximum nitrogen adsorption capacity gradually decreases. This is primarily because higher-ranked coals typically have fewer mineral impurities, which reduces the efficacy of the reaction between CFF and the coal, limiting effective pore modification.
The adsorption and desorption curves provide insight into the morphology and quantity of micropores. It is observed that there is no coincidence between desorption and adsorption curves across the full pore size range of different coal samples, with the extent of the difference varying. The primary reason for this is capillary condensation of N 2 in larger pores, leading to the formation of "hysteresis loops" of varying degrees. These hysteresis loops indicate the presence of micropores, especially at lower relative pressures, where significant adsorption hysteresis occurs. Notably, the desorption and adsorption curves for the DH-treated and WJ-treated coal samples exhibit a large gap, with pronounced hysteresis loops, indicating a relatively strong chemical reaction between CFF and coal. The pores formed in these samples are primarily open, with many micropores and a significant number of slit or parallel plate pores. In contrast, other coal samples, particularly the raw ones, exhibit smaller hysteresis loops, suggesting fewer slit or parallel plate pores and more poorly connected pores (such as wedge-shaped, conical, or cylindrical pores).
It is worth mentioning that inflection points appear near a relative pressure of 0.5, with the inflection point being most pronounced in the DH-treated coal sample and least in the WJ coal sample. This indicates varying numbers of ink-bottle-shaped pores in the samples. The specific reason for this is that the desorption rate of nitrogen slows at the bottleneck of ink-bottle-shaped pores. As the relative pressure decreases and the bottleneck is overcome, the desorption rate accelerates, causing the condensed liquid N 2 in these pores to gush out rapidly, resulting in a steep decline in the desorption curve and forming an inflection point. Mineral impurities in coal generally exist as particles or layers and are connected with the original natural pores. When CFF reacts with these mineral impurities, it likely erodes the coal through the original natural pores, forming ink-bottle-shaped pores deep within the coal. Additionally, when the relative pressure approaches 1, the adsorption curve rises sharply and partially coincides with the desorption curve. This phenomenon is due to multimolecular layer adsorption in large pores within the coal, where the interaction between N 2 molecules and the pore surface area (PSA) is relatively weak.
To further analyze the pore structure, the fractal dimension D of the pore was calculated using the Frenkel-Halsey-Hill (FHH) model 45 , as shown in Eq. ( 3 ). The specific results are shown in Fig. 8 . Due to the existence of many ink-bottle shaped pores in the coal sample, an inflexion point appeared on the desorption curve. The fractal dimension calculated in sections can get accurate results. When the relative pressure is larger than 0.5, the fractal dimension is D 1 , and when the relative pressure is less than 0.5, the fractal dimension is D 2 . When the relative pressure is 0.5, the corresponding aperture is about 4.5 nm. The aperture measured by fractal dimension D 1 is in the range of 4.5–100 nm, and the aperture measured by fractal dimension D 2 is in the range of 2.0–4.5 nm.
where P 0 is the gas-saturated vapor pressure of N 2 , MPa; P is the actual pressure, MPa; V is the corresponding N 2 adsorption capacity, mL/g; V 0 is the monolayer volume of N 2 adsorption at standard temperature and pressure (ml/g); C is the constant; and A is the slope of the fitted curve. So the fractal dimension is A + 3. The fractal dimension always between 2 and 3, and the closer it is to 2, the smoother the pores.
The fractal dimension fitting results.
It can be observed that the fractal dimension D 1 is approximately around 2.5 when the relative pressure exceeds 0.5, while D 2 is generally less than 2 when the relative pressure is less than 0.5. When ultrasonic and CFF works together, the fractal dimension D 1 shows a small increase with relatively minor changes. In contrast, D 2 exhibits varying changes, with some increasing and others decreasing. Moreover, except for WJ coal, D 2 of other treated coal was closer to 2.
Based on the principles of LT-N 2 A, when the relative pressure is less than 0.5, smaller pores are measured, otherwise is larger pores are measured. The relatively minor changes in fractal dimension D 1 and the more substantial changes in fractal dimension D 2 imply that the combined effect of ultrasonic and CFF treatment has a more pronounced impact on smaller pores and a less significant effect on larger pores. This is primarily due to the reactions between the CFF and coal, which results in the disappearance of mineral particles around smaller pores. The same mineral particles have a more significant impact on smaller pores, result in the greater variations in fractal dimension D 2 .
To analyze the changes in pore structure across different coal ranks after treatment with ultrasonic-assisted CFF, SEM was used to observe the coal samples before and after treatment. Figure 9 shows the specific scanning results. It is evident that the mineral particles attached to the coal of different ranks are significantly reduced after treatment. This reduction occurs because the mechanical vibrations from the ultrasound generate shear and tensile stresses, causing the attached mineral particles to detach from the coal sample surface. Additionally, the acid in the fracturing fluid chemically reacts with the mineral particles, dissolving them within the CFF. Regarding the pore morphology on the sample surfaces, slight differences are observed across the various coal ranks, primarily reflected in surface roughness and the presence of micropores. The SEM images reveal noticeable differences in the number and size of pores, indicating the creation of many new micron-scale pores. These microscale pores often develop from nanoscale pores, suggesting that new nanoscale pores are also generated during processing. Overall, the surfaces of the TC and BL coal samples appear smoother, while the surfaces of the WJ and TC coal samples show slightly more porosity. This difference is primarily due to the coal becoming denser and more brittle during the metamorphism process, making it easier to form a flat section during crushing. After treatment with ultrasonic-assisted CFF, the surfaces of all coal samples became smoother, with some of the original small undulations disappearing. These changes result from the chemical reaction between the CFF and the coal, combined with the surface washing effect of the ultrasound.
SEM photos of different coal samples.
With the increase of the coal metamorphism degree, the total pore volume and total PSA both increase first and then decrease, and the peak value occurs when coking coal ( R o,max is 1.5), and the pore volume and total PSA are the largest. As shown in Fig. 10 , the average pore diameter and permeability showed a trend of decreasing first and then increasing, and both showed a trough value when coking coal ( R o,max is 1.5). This is mainly because the porosity of coal is affected by the degree of metamorphism, and the porosity will first decrease and then rise as the metamorphism degree increase. This is mainly because in the process of metamorphism, affected by temperature and geological conditions, the molecular structure of coal has changed, resulting in changes in the porosity of coal. After treated by ultrasonic and CFF, the total pore volume and total PSA still increase first and then decrease, and the peak value appears when coking coal ( R o,max is 1.5). The average pore diameter and permeability still showed a trend of decrease first and then increase, but the valley value appeared in the fat coal ( R o,max is 1.1). The reason for this phenomenon is that TC coal sample has the most pronounced response to CFF, which has a great influence on pore diameter and permeability.
Variation rules of pore parameters by MIP data.
Mercury withdrawal efficiency and tortuosity are also parameters used to assess coal seam pore structure and gas flow efficiency. The higher mercury withdrawal efficiency, the less proportion of closed holes and the more proportion of open holes in the coal sample, the more helpful the gas desorption and flow. The greater the tortuosity of cracks, the greater the gas flow resistance. For the raw coal in Fig. 11 , both mercury withdrawal efficiency and tortuosity show an initial increase followed by a decrease when metamorphism degree increase. The tortuosity is the largest when it is coking coal ( R o,max is 1.5), and the mercury withdrawal efficiency is the highest when it is fat coal ( R o,max is 1.1). After the combined treatment of ultrasonic and CFF, the trends for mercury withdrawal efficiency and tortuosity remain consistent. However, the peak of mercury withdrawal efficiency is observed at the coke coal ( R o,max is 1.5), while tortuosity reaches its maximum at the fat coal ( R o,max is 1.1). Besides, the average fractal dimension increases first, then decreases and then increases, and the minimum value appears in coking coal ( R o,max is 1.5).
Variation rules of pore structure by MIP data.
We also analyzed the variation trend of LT-N 2 A results with coal rank, which show some differences compared to the MIP results, as detailed in Fig. 12 . It can be found that with the increase of metamorphism degree, the N 2 adsorption capacity of the raw coal shows a trend of first increasing and then decreasing, and the peak value appears when it is coking coal ( R o,max is 1.5). The average pore diameter also shows the same trend, and also appears the maximum value at coking coal ( R o,max is 1.5). These changes are related to the coal metamorphism degree, as the pore distribution and porosity of coal continuously change during the coal's metamorphic process. After combined treatment of ultrasonic and CFF, the adsorption amount of N 2 increases in all coal rank samples, and the average size of pore shows both decreases and increases. The main reason is that the pore structure and mineral impurities of different coal samples are different, and the effect of CFF is also different. Only the BL treated coal samples show a significant increase in the average pore size, with an increase of approximately 18%, while the average pore size of the other samples remains relatively unchanged. The primary reason is that the CFF changes the natural pore diameter, but also produces new small pores, so the average pore diameter does not have a big change. Combined with MIP data, it can be found that due to the development of pore structure of BL coal sample, it is more conducive to chemical reaction with CFF, so the pore volume and average pore diameter change greatly.
Variation rules of pore structure by LT-N 2 A data.
Furthermore, the changes in fractal dimensions D 1 and D 2 for different pore size ranges exhibit distinct trends, with D 2 showing significantly larger variations compared to D 1 . The D 1 of raw coal and treated coal decreased first and then increased as the metamorphism degree increase, and the variation of D 1 after the action of CFF was small, about 2% on average. The D 2 of raw coal samples exhibits a trend of increasing first and then decreasing, while for treated coal samples, D 2 shows a pattern of decreasing initially, then increasing, and finally decreasing again with increasing metamorphism degree. It's notable that DH and WJ coal samples exhibit relatively large changes in D 2 after CFF treatment, with variations of 33% and 18%, respectively. This is because, with the increase in coal metamorphism, the micropore structure in the smaller pore sections becomes more complex and is more susceptible to significant changes after the action of CFF. In contrast, larger pores are less affected by CFF and are less likely to undergo substantial changes. Additionally, differences were observed in the trends of fractal dimensions obtained from MIP and LT-N 2 A. We believe there are three main reasons for these differences. First, MIP and LT-N 2 A are based on different testing principles, and the high pressure used in MIP can damage the pores, leading to inaccuracies in the results. Second, MIP targets pores within the size range of 5 to 340,000 nm, while LT-N 2 A focuses on pores ranging from 2 to 500 nm. The differences in the targeted pore sizes between these two methods contribute to the variations in fractal dimension trends. Third, CFF has a significant influence on micropores and transition pores, leading to substantial changes in fractal dimensions and pore volume in these regions. These factors collectively result in the differing fractal dimension trends observed.
Coal is a mixture containing various mineral impurities, including Montmorillonite ((Na,Ca) 0.33 (Al,Mg) 2 [Si 4 O 10 ](OH) 2 ·nH 2 O), Calcite (CaCO 3 ), Kaolinite (Al[Si 4 O 10 ](OH) 8 ), Dolomite (CaMg(CO 3 ) 2 ), Fe 2 O 3 , and other minerals that are randomly distributed within coal seams. The CFF NaSal undergoes ionization to produce H + , as represented by the possible ionization Eq. ( 4 ). H + then react chemically with minerals such as Calcite (CaCO 3 ), Kaolinite (Al[Si 4 O 10 ](OH) 8 ), Fe 2 O 3 , and other minerals. The four samples belong to different coal ranks, and the mineral impurities contained in them will be different. The possible chemical equations for these reactions are presented in Eqs. ( 5 )–( 14 ).
During the chemical reactions between CFF and mineral impurities within coal, the effectiveness of these reactions depends on the degree of contact between the CFF and the minerals. The more extensive the contact, the more active the CFF molecules become, resulting in better chemical reaction outcomes. In the case of TC coal samples, the change in pore volume is most significant and evident. Mainly because the TC coal sample has the largest surface area, it can ensure that the CFF is in full contact with mineral impurities, increasing the possibility of chemical reactions. Additionally, under normal conditions, chemical reactions can lead to concentration gradients and steric hindrance, resulting in a gradual decrease in the chemical reaction rate. However, ultrasonic can accelerate the activity of chemical molecules in the CFF, effectively promoting and enhancing the progress of these reactions 46 , 47 .
CFF and coal undergo physical or chemical reactions that can have four key effects on coal samples, as illustrated in Fig. 13 : (a) New Pore Formation: CFF interacts with coal, eroding and damaging the coal sample, leading to the creation of micropores or small pores on the coal’s surface. The location of these newly formed pores is random but generally influenced by the positions of mineral particles on the coal surface. While a significant number of new pores are generated, their small size does not notably impact the overall pore volume but does increase the coal sample’s specific surface area (PSA), particularly for small pores. (b) Pore Enlargement: CFF may penetrate pre-existing pores in the coal, where it undergoes physical and chemical reactions with the surrounding mineral particles, thereby enlarging these pores. Typically, the number of small pores increases the most, while the number of medium and large pores increases less. This is primarily determined by the distribution of pore numbers and the classification of pore sizes. Since micropores are the most abundant in coal samples, and because the size intervals of micropores (< 10 nm) and transition pores (10–100 nm) are similar, micropores are more likely to transform into transition pores. (c) Pore Connectivity: The chemical reaction between CFF and the coal sample may widen and connect multiple pores, leading to the formation of new, larger pores. Additionally, the pressure exerted by CFF within the pores can cause the coal sample’s pores to break through barriers with previously closed pores, allowing access to these closed pores during the expansion process, thus forming new and larger pores. This process significantly increases pore size and may also impact the tortuosity of the pores. (d) Dissolution: As CFF enters the pores, attached particles within the pores may restrict its flow, reducing the permeability of the coal. The flow of CFF scours these attached particles, accelerates the physicochemical reactions between CFF and the particles, and smoothens the pores, thereby reducing their tortuosity.
The possible four effects on coal samples.
The rate of interaction between the coal sample and the CFF depends on the concentration of the CFF and the contact area between the CFF and the coal sample (the surface area of the coal sample). When the concentration of CFF remains constant, a larger coal sample surface area ensures more extensive contact between the CFF and the coal, resulting in more chemical reactions and improved treatment effectiveness. This lead to the pore volume and mercury withdrawal efficiency of TC coal increase the most.
Under the action of ultrasonic stimulation, the CFF can effectively modify the micropore structure. In this paper, the modification effect of coal pore structure of different ranks was analyzed by MIP and LT-N 2 A. The conclusions as bellow:
The original pore parameters and pore complexity of coal samples differ across various coal ranks. In medium to high-rank coals, pore volume and surface area show an initial increase followed by a decrease trend with respect to R o,max , where coking coal exhibits relatively higher pore volume and surface area. Conversely, the average pore size and permeability decreased first and then increased with R o,max , with fat coal having a relatively smaller average pore diameter and permeability.
Based on the data obtained from MIP, the pore volume of coal from different ranks increased after modification. However, the surface area from various ranks exhibited different degrees of increase or decrease. This is mainly due to the changes in the average pore diameter resulting from the modification by CFF under the influence of ultrasonic waves. Overall, the modification of coking coal by CFF under the influence of ultrasonic waves is the most significant.
According to the LT-N 2 A results, the gas adsorption capacity of different coal ranks significantly increased after modification under the influence of ultrasonic waves, with coking coal exhibiting a relatively large increase in average pore diameter (approximately 18%). The different effects on the pores also lead to distinct trends in the changes of fractal dimensions D 1 and D 2 in various pore size ranges.
CFF will chemically react with coal, which may have the following effects on coal samples: CFF will erode coal and form new pore on the coal surface; CFF enters the pores in the coal sample and enlarges the pore size; CFF connects multiple pores to form new large pores; CFF dissolves attached mineral particles on the coal surface.
The datasets used and analysed during the current study available from the corresponding author on reasonable request.
Checko, J., Urych, T., Magdziarczyk, M. & Smolinski, A. Research on the processes of injecting CO 2 into coal seams with CH 4 recovery using horizontal wells. Energies https://doi.org/10.3390/en13020416 (2020).
Article Google Scholar
Liu, P., Fan, J. Y., Jiang, D. Y. & Li, J. J. Evaluation of underground coal gas drainage performance: Mine site measurements and parametric sensitivity analysis. Process Saf. Environ. Prot. 148 , 711–723. https://doi.org/10.1016/j.psep.2021.01.054 (2021).
Article CAS Google Scholar
Okere, C. J. et al. Experimental, algorithmic, and theoretical analyses for selecting an optimal laboratory method to evaluate working fluid damage in coal bed methane reservoirs. Fuel https://doi.org/10.1016/j.fuel.2020.118513 (2020).
Lekontsev, Y. M., Sazhin, P. V., Novik, A. V. & Mezentsev, Y. B. Methane production rate in hydraulic fracturing of coal seams. J. Min. Sci. 57 , 595–600. https://doi.org/10.1134/S1062739121040062 (2021).
Zou, Q. L., Liu, H., Jiang, Z. B. & Wu, X. Gas flow laws in coal subjected to hydraulic slotting and a prediction model for its permeability-enhancing effect. Energy Source Part A https://doi.org/10.1080/15567036.2021.1936692 (2021).
Lloyd, M. K. et al. Methoxyl stable isotopic constraints on the origins and limits of coal-bed methane. Science 374 , 894. https://doi.org/10.1126/science.abg0241 (2021).
Article ADS CAS PubMed Google Scholar
Serdyukov, S. V., Kurlenya, M. V., Rybalkin, L. A. & Shilova, T. V. Hydraulic fracturing effect on filtration resistance in gas drainage hole area in coal. J. Min. Sci. 55 , 175–184. https://doi.org/10.1134/S1062739119025432 (2019).
Lu, Y. Y., Ge, Z. L., Yang, F., Xia, B. W. & Tang, J. R. Progress on the hydraulic measures for grid slotting and fracking to enhance coal seam permeability. Int. J. Min. Sci. Technol. 27 , 867–871. https://doi.org/10.1016/j.ijmst.2017.07.011 (2017).
Zuo, S. J., Peng, S. Q., Zhou, D. P., Wang, C. W. & Zhang, L. An analytical model of the initiation pressure for multilayer tree-type hydraulic fracturing in gas-bearing coal seams. Geomech. Geophys. Geo https://doi.org/10.1007/s40948-022-00509-9 (2022).
Zuo, S. J., Zhang, L. & Deng, K. Experimental study on gas adsorption and drainage of gas-bearing coal subjected to tree-type hydraulic fracturing. Energy Rep. 8 , 649–660. https://doi.org/10.1016/j.egyr.2021.12.003 (2022).
Li, L. W. & Wu, W. B. Variation law of roof stress and permeability enhancement effect of repeated hydraulic fracturing in low-permeability coal seam. Energy Sci. Eng. 9 , 1501–1516. https://doi.org/10.1002/ese3.909 (2021).
Lu, W. Y. & He, C. C. Numerical simulation of the fracture propagation of linear collaborative directional hydraulic fracturing controlled by pre-slotted guide and fracturing boreholes. Eng. Fract. Mech. https://doi.org/10.1016/j.engfracmech.2020.107128 (2020).
Talapatra, A., Halder, S. & Chowdhury, A. I. Enhancing coal bed methane recovery: Using injection of nitrogen and carbon dioxide mixture. Pet. Sci. Technol. 39 , 49–62. https://doi.org/10.1080/10916466.2020.1831533 (2021).
Zhong, J. Y., Ge, Z. L., Lu, Y. Y., Zhou, Z. & Zheng, J. W. New Mechanical model of slotting-directional hydraulic fracturing and experimental study for coalbed methane development. Nat. Resour. Res. 30 , 639–656. https://doi.org/10.1007/s11053-020-09736-x (2021).
Wei, C., Zhang, B., Li, S. C., Fan, Z. X. & Li, C. X. Interaction between hydraulic fracture and pre-existing fracture under pulse hydraulic fracturing. Spe. Prod. Oper. 36 , 553–571. https://doi.org/10.2118/205387-Pa (2021).
Zuo, S. J., Ge, Z. L., Deng, K., Zheng, J. W. & Wang, H. M. Fracture initiation pressure and failure modes of tree-type hydraulic fracturing in gas-bearing coal seams. J. Nat. Gas Sci. Eng. https://doi.org/10.1016/j.jngse.2020.103260 (2020).
Liu, P., Ju, Y., Feng, Z. & Mao, L. T. Characterization of hydraulic crack initiation of coal seams under the coupling effects of geostress difference and complexity of pre-existing natural fractures. Geomech. Geophys. Geo. https://doi.org/10.1007/s40948-021-00288-9 (2021).
Ren, Q. S. et al. CDEM-based simulation of the 3D propagation of hydraulic fractures in heterogeneous coalbed Methane reservoirs. Comput. Geotech. https://doi.org/10.1016/j.compgeo.2022.104992 (2022).
Zuo, S. J., Ge, Z. L., Lu, Y. Y., Cao, S. R. & Zhang, L. Analytical and experimental investigation of perforation layout parameters on hydraulic fracture propagation. J. Energ. Resour. ASME https://doi.org/10.1115/1.4047596 (2021).
Lu, Y. Y. et al. Influence of viscoelastic surfactant fracturing fluid on coal pore structure under different geothermal gradients. J. Taiwan Inst. Chem. E. 97 , 207–215. https://doi.org/10.1016/j.jtice.2019.01.024 (2019).
Meng, Y., Li, Z. P. & Lai, F. P. Evaluating the filtration property of fracturing fluid and fracture conductivity of coalbed methane wells considering the stress-sensitivity effects. J. Nat. Gas Sci. Eng. https://doi.org/10.1016/j.jngse.2020.103379 (2020).
Wang, Z. P. et al. Effects of acid-based fracturing fluids with variable hydrochloric acid contents on the microstructure of bituminous coal: An experimental study. Energy https://doi.org/10.1016/j.energy.2021.122621 (2022).
Article PubMed Google Scholar
Zhu, C. J. et al. Experimental study on the microscopic characteristics affecting methane adsorption on anthracite coal treated with high-voltage electrical pulses. Adsorpt. Sci. Technol. 36 , 170–181. https://doi.org/10.1177/0263617416686977 (2018).
Yang, F., Ge, Z. L., Zheng, J. L. & Tian, Z. Y. Viscoelastic surfactant fracturing fluid for underground hydraulic fracturing in soft coal seams. J. Pet. Sci. Eng. 169 , 646–653. https://doi.org/10.1016/j.petrol.2018.06.015 (2018).
Zhao, H. F., Liu, C. S., Xiong, Y. G., Zhen, H. B. & Li, X. J. Experimental research on hydraulic fracture propagation in group of thin coal seams. J. Nat. Gas Sci. Eng. https://doi.org/10.1016/j.jngse.2022.104614 (2022).
Zhou, G. et al. Experimental study and analysis on physicochemical properties of coal treated with clean fracturing fluid for coal seam water injection. J. Ind. Eng. Chem. 108 , 356–365. https://doi.org/10.1016/j.jiec.2022.01.012 (2022).
Xue, S., Huang, Q. M., Wang, G., Bing, W. & Li, J. Experimental study of the influence of water-based fracturing fluids on the pore structure of coal. J. Nat. Gas Sci. Eng. https://doi.org/10.1016/j.jngse.2021.103863 (2021).
Huang, Q. M., Li, M. Y., Li, J., Gui, Z. & Du, F. Comparative experimental study on the effects of water- and foam-based fracturing fluids on multiscale flow in coalbed methane. J. Nat. Gas Sci. Eng. https://doi.org/10.1016/j.jngse.2022.104648 (2022).
Ge, Z. L. et al. Effect of different types of fracturing fluid on the microstructure of anthracite: an experimental study. Energy Source Part A https://doi.org/10.1080/15567036.2021.1980635 (2021).
Sun, Y. et al. Changes of coal molecular and pore structure under ultrasonic stimulation. Energy Fuels 35 , 9847–9859. https://doi.org/10.1021/acs.energyfuels.1c00621 (2021).
Zhang, J., Luo, W., Wan, T. Y., Wang, Z. W. & Hong, T. Y. Experimental investigation of the effects of ultrasonic stimulation on adsorption, desorption and seepage characteristics of shale gas. J. Pet. Sci. Eng. https://doi.org/10.1016/j.petrol.2021.108418 (2021).
Jia, Q. F. et al. AFM characterization of physical properties in coal adsorbed with different cations induced by electric pulse fracturing. Fuel https://doi.org/10.1016/j.fuel.2022.125247 (2022).
Wang, Z. J., Xu, Y. M. & Suman, B. Research status and development trend of ultrasonic oil production technique in China. Ultrason. Sonochem. 26 , 1–8. https://doi.org/10.1016/j.ultsonch.2015.01.014 (2015).
Article CAS PubMed Google Scholar
Chen, X. X., Zhang, L. & Shen, M. L. Experimental research on desorption characteristics of gas-bearing coal subjected to mechanical vibration. Energy Explor. Exploitation 38 , 1454–1466. https://doi.org/10.1177/0144598720956286 (2020).
Peng, S. Q. et al. Research status and trend of coal and gas outburst: a literature review based on VOSviewer. Int. J. Oil Gas Coal T. 33 , 248–281. https://doi.org/10.1504/Ijogct.2023.131646 (2023).
Liu, P., Liu, A., Zhong, F. X., Jiang, Y. D. & Li, J. J. Pore/fracture structure and gas permeability alterations induced by ultrasound treatment in coal and its application to enhanced coalbed methane recovery. J. Pet. Sci. Eng. https://doi.org/10.1016/j.petrol.2021.108862 (2021).
Tang, Z. Q., Zhai, C., Zou, Q. L. & Qin, L. Changes to coal pores and fracture development by ultrasonic wave excitation using nuclear magnetic resonance. Fuel 186 , 571–578. https://doi.org/10.1016/j.fuel.2016.08.103 (2016).
Jiang, Y. P. & Xing, H. L. Numerical modelling of acoustic stimulation induced mechanical vibration enhancing coal permeability. J. Nat. Gas Sci. Eng. 36 , 786–799. https://doi.org/10.1016/j.jngse.2016.11.008 (2016).
Jiang, Y. D., Song, X., Liu, H. & Cui, Y. Z. Laboratory measurements of methane desorption on coal during acoustic stimulation. Int. J. Rock Mech. Min. Sci. 78 , 10–18. https://doi.org/10.1016/j.ijrmms.2015.04.019 (2015).
Liu, P., Fan, L., Fan, J. Y. & Zhong, F. X. Effect of water content on the induced alteration of pore morphology and gas sorption/diffusion kinetics in coal with ultrasound treatment. Fuel https://doi.org/10.1016/j.fuel.2021.121752 (2021).
Zuo, S. J. et al. Mechanism of a novel ultrasonic promoting fracturing technology in stimulating permeability and gas extraction. Energy Rep. 8 , 12776–12786. https://doi.org/10.1016/j.egyr.2022.09.132 (2022).
Zuo, S. J. et al. The effect of temperature and ultrasonic power on the microstructure evolution of coal modified by clean fracturing fluid: An experimental study. Energy https://doi.org/10.1016/j.energy.2024.132436 (2024).
Cai, Y. D., Liu, D. M., Yao, Y. B., Li, J. Q. & Liu, J. L. Fractal characteristics of coal pores based on classic geometry and thermodynamics models. Acta Geol. Sin.-Engl. Ed. 85 , 1150–1162. https://doi.org/10.1111/j.1755-6724.2011.00247.x (2011).
Li, P., Zheng, M., Bi, H., Wu, S. T. & Wang, X. R. Pore throat structure and fractal characteristics of tight oil sandstone: A case study in the Ordos Basin, China. J. Pet. Sci. Eng. 149 , 665–674. https://doi.org/10.1016/j.petrol.2016.11.015 (2017).
Zheng, Y. F. et al. Microstructure evolution of bituminite and anthracite modified by different fracturing fluids. Energy https://doi.org/10.1016/j.energy.2022.125732 (2023).
Jung, Y., Ko, H., Jung, B. & Sung, N. Application of ultrasonic system for enhanced sewage sludge disintegration: A comparative study of single- and dual-frequency. Ksce J. Civ. Eng. 15 , 793–797. https://doi.org/10.1007/s12205-011-0832-6 (2011).
Shi, Q. M., Qin, Y., Zhou, B. Y. & Wang, X. K. Porosity changes in bituminous and anthracite coal with ultrasonic treatment. Fuel https://doi.org/10.1016/j.fuel.2019.115739 (2019).
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This study was financially supported by the National Natural Science Foundation of China (No. 52304129), Guizhou Provincial Science and Technology Projects (ZK[2023] general 446, Zhi Cheng [2022] General 016). Part of this work was also jointly founded by the open project of Guizhou Provincial Double Carbon and Renewable Energy Technology Innovation Research Institute (DCRE-2023-14).
Authors and affiliations.
College of Mining, Guizhou University, Guiyang, 550025, Guizhou, China
Zuo Shaojie, Xu Zhiyuan & Ma Zhenqian
Guizhou Provincial Double Carbon and Renewable Energy Technology Innovation Research Institute, Guizhou University, Guiyang, 550025, China
Zuo Shaojie
Guizhou Energy Group Co. Ltd., Guiyang, 550025, China
Zhou Dongping
School of Mining and Mechanical Engineering, Liupanshui Normal University, Liupanshui, 550025, Guizhou, China
Liu Chengwei
Guizhou Research Institute of Oil & Gas Exploration and Development Engineering, Guiyang, 550022, Guizhou, China
Zhao Fuping
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Zuo Shaojie: Writing-Original draft preparation, Conceptualization, Methodology. Xu Zhiyuan: Data curation, Software. Zhou Dongping: Visualization, Investigation. Ma Zhenqian: Writing-review and editing, Resources, Visualization, Supervision. Liu Chengwei: Supervision, Investigation. Zhao Fuping: Visualization.
Correspondence to Ma Zhenqian .
Competing interests.
The authors declare no competing interests.
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Shaojie, Z., Zhiyuan, X., Dongping, Z. et al. A study on the impact of ultrasonic-stimulated clean fracturing fluid on the pore structure of medium to high rank coal. Sci Rep 14 , 21026 (2024). https://doi.org/10.1038/s41598-024-72253-x
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Received : 12 May 2024
Accepted : 05 September 2024
Published : 09 September 2024
DOI : https://doi.org/10.1038/s41598-024-72253-x
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