计算机科学
工艺工程
燃烧
可再生能源
过程(计算)
加热
生物量(生态学)
生化工程
过程建模
人工神经网络
人工智能
工业工程
机器学习
热解
环境科学
工艺优化
工程类
化学
废物管理
海洋学
电气工程
有机化学
环境工程
地质学
操作系统
作者
Muzammil Khan,Salman Raza Naqvi,Zahid Ullah,Syed Ali Ammar Taqvi,Muhammad Nouman Aslam Khan,Wasif Farooq,Muhammad Taqi Mehran,Dagmar Juchelková,Libor Štěpanec
出处
期刊:Fuel
[Elsevier]
日期:2022-09-24
卷期号:332: 126055-126055
被引量:116
标识
DOI:10.1016/j.fuel.2022.126055
摘要
Thermochemical conversion of biomass has been considered a promising technique to produce alternative renewable fuel sources for future energy supply. However, these processes are often complex, labor-intensive, and time-consuming. Significant efforts have been made in developing strategies for modeling thermochemical conversion processes to maximize their performance and productivity. Among these strategies, machine learning (ML) has attracted substantial interest in recent years in thermochemical conversion process optimization, yield prediction, real-time monitoring, and process control. This study presents a comprehensive review of the research and development in state-of-the-art ML applications in pyrolysis, torrefaction, hydrothermal treatment, gasification, and combustion. Artificial neural networks have been widely employed due to their ability to learn extremely non-linear input–output correlations. Furthermore, the hybrid ML models outperformed the traditional ML models in modeling and optimization tasks. The comparison between various ML methods for different applications, and insights about where the current research is heading, is highlighted. Finally, based on the critical analysis, existing research knowledge gaps are identified, and future recommendations are presented.
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