Yongjun Wang, Mingze Guo, Hung Vo Thanh, Hemeng Zhang, Xiaoying Liu, Qian Zheng, Xiaoming Zhang, Mohammad Sh. Daoud, Laith Abualigah
{"title":"基于地下煤火区实验方法的二氧化碳通量预测先进机器学习方案","authors":"Yongjun Wang, Mingze Guo, Hung Vo Thanh, Hemeng Zhang, Xiaoying Liu, Qian Zheng, Xiaoming Zhang, Mohammad Sh. Daoud, Laith Abualigah","doi":"10.1016/j.jare.2024.10.034","DOIUrl":null,"url":null,"abstract":"<h3>Introduction</h3>Underground coal fires pose significant environmental and health risks due to releasing CO<sub>2</sub> emissions. Predicting surface CO<sub>2</sub> flux accurately in underground coal fire areas is crucial for understanding the distribution of spontaneous combustion zones and developing effective mitigation strategies. In recent years, advanced machine learning techniques have shown promise in various carbon-related studies. This research uses an experimental approach to explore the power of advanced machine learning schemes for predicting CO<sub>2</sub> flux in underground coal fire areas.<h3>Objectives</h3>By leveraging the power of advanced machine learning schemes and experimental approaches, this research aims to provide valuable insights into CO<sub>2</sub> flux prediction in coal fire areas and inform environmental monitoring and management strategies.<h3>Methods</h3>The study involves the collection of an experimental dataset specific to underground coal fire areas, encompassing various parameters related to CO<sub>2</sub> flux and underground coal fire characteristics. Innovative feature engineering techniques are applied to capture the unique characteristics of underground coal fire areas and their impact on CO<sub>2</sub> flux. Different machine learning algorithms, including Natural gradient boosting regression (NGRB), Extreme gradient boosting (XGboost), Light gradient boosting (LGRB), and random forest (RF), are evaluated and compared for their predictive capabilities. The models are trained, optimized, and assessed using appropriate performance metrics.<h3>Results</h3>The NGRB model yields the best predictive performances with <em>R<sup>2</sup></em> of 0.967 and MAE of 0.234. The novel contributions of this study include the development of accurate prediction models tailored to underground coal fire areas, shedding light on the underlying factors driving CO<sub>2</sub> flux. The findings have practical implications for delineating the spontaneous combustion zone and mitigating CO<sub>2</sub> emissions from underground coal fires, contributing to global efforts in combating climate change.","PeriodicalId":14952,"journal":{"name":"Journal of Advanced Research","volume":"33 1","pages":""},"PeriodicalIF":11.4000,"publicationDate":"2024-11-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Advanced machine learning schemes for prediction CO2 flux based experimental approach in underground coal fire areas\",\"authors\":\"Yongjun Wang, Mingze Guo, Hung Vo Thanh, Hemeng Zhang, Xiaoying Liu, Qian Zheng, Xiaoming Zhang, Mohammad Sh. Daoud, Laith Abualigah\",\"doi\":\"10.1016/j.jare.2024.10.034\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<h3>Introduction</h3>Underground coal fires pose significant environmental and health risks due to releasing CO<sub>2</sub> emissions. Predicting surface CO<sub>2</sub> flux accurately in underground coal fire areas is crucial for understanding the distribution of spontaneous combustion zones and developing effective mitigation strategies. In recent years, advanced machine learning techniques have shown promise in various carbon-related studies. This research uses an experimental approach to explore the power of advanced machine learning schemes for predicting CO<sub>2</sub> flux in underground coal fire areas.<h3>Objectives</h3>By leveraging the power of advanced machine learning schemes and experimental approaches, this research aims to provide valuable insights into CO<sub>2</sub> flux prediction in coal fire areas and inform environmental monitoring and management strategies.<h3>Methods</h3>The study involves the collection of an experimental dataset specific to underground coal fire areas, encompassing various parameters related to CO<sub>2</sub> flux and underground coal fire characteristics. Innovative feature engineering techniques are applied to capture the unique characteristics of underground coal fire areas and their impact on CO<sub>2</sub> flux. Different machine learning algorithms, including Natural gradient boosting regression (NGRB), Extreme gradient boosting (XGboost), Light gradient boosting (LGRB), and random forest (RF), are evaluated and compared for their predictive capabilities. The models are trained, optimized, and assessed using appropriate performance metrics.<h3>Results</h3>The NGRB model yields the best predictive performances with <em>R<sup>2</sup></em> of 0.967 and MAE of 0.234. The novel contributions of this study include the development of accurate prediction models tailored to underground coal fire areas, shedding light on the underlying factors driving CO<sub>2</sub> flux. 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Advanced machine learning schemes for prediction CO2 flux based experimental approach in underground coal fire areas
Introduction
Underground coal fires pose significant environmental and health risks due to releasing CO2 emissions. Predicting surface CO2 flux accurately in underground coal fire areas is crucial for understanding the distribution of spontaneous combustion zones and developing effective mitigation strategies. In recent years, advanced machine learning techniques have shown promise in various carbon-related studies. This research uses an experimental approach to explore the power of advanced machine learning schemes for predicting CO2 flux in underground coal fire areas.
Objectives
By leveraging the power of advanced machine learning schemes and experimental approaches, this research aims to provide valuable insights into CO2 flux prediction in coal fire areas and inform environmental monitoring and management strategies.
Methods
The study involves the collection of an experimental dataset specific to underground coal fire areas, encompassing various parameters related to CO2 flux and underground coal fire characteristics. Innovative feature engineering techniques are applied to capture the unique characteristics of underground coal fire areas and their impact on CO2 flux. Different machine learning algorithms, including Natural gradient boosting regression (NGRB), Extreme gradient boosting (XGboost), Light gradient boosting (LGRB), and random forest (RF), are evaluated and compared for their predictive capabilities. The models are trained, optimized, and assessed using appropriate performance metrics.
Results
The NGRB model yields the best predictive performances with R2 of 0.967 and MAE of 0.234. The novel contributions of this study include the development of accurate prediction models tailored to underground coal fire areas, shedding light on the underlying factors driving CO2 flux. The findings have practical implications for delineating the spontaneous combustion zone and mitigating CO2 emissions from underground coal fires, contributing to global efforts in combating climate change.
期刊介绍:
Journal of Advanced Research (J. Adv. Res.) is an applied/natural sciences, peer-reviewed journal that focuses on interdisciplinary research. The journal aims to contribute to applied research and knowledge worldwide through the publication of original and high-quality research articles in the fields of Medicine, Pharmaceutical Sciences, Dentistry, Physical Therapy, Veterinary Medicine, and Basic and Biological Sciences.
The following abstracting and indexing services cover the Journal of Advanced Research: PubMed/Medline, Essential Science Indicators, Web of Science, Scopus, PubMed Central, PubMed, Science Citation Index Expanded, Directory of Open Access Journals (DOAJ), and INSPEC.