纤维素乙醇
生物制氢
生物燃料
生物量(生态学)
生化工程
生物炼制
环境科学
化石燃料
生物技术
制浆造纸工业
工程类
废物管理
工艺工程
制氢
化学
纤维素
农学
生物
有机化学
化学工程
氢
作者
Muhammad Naveed,Muhammad Nouman Aslam Khan,Muhammad Mukarram,Salman Raza Naqvi,Abdullah Abdullah,Zeeshan Haq,Hafeez Ullah,Hamad Al Mohamadi
标识
DOI:10.1016/j.rser.2023.113906
摘要
Scarcity in fossil fuel reserves and their environmental impacts has forced the world towards the production of clean and environment-friendly fuels called biofuels. This review focuses on the importance of different machine learning models and optimization techniques to simulate and optimize process conditions, yield and parameters in the fermentation of cellulosic biomass from fifty recent studies. The superiority of ML models, especially ANN dominance in 70 % of studies with highest coefficient of regression over conventional techniques in the production of bioethanol and biohydrogen is comprehensively reviewed. Research gaps and studies directed toward the usage of most optimum ML models in future are directed after the sensitivity analysis with 5 % variation that suggest the stability of ML models. It is intended to spur further investigation into the development and use of ML models combined with optimization methods and CFD in the fermentation process to produce bioethanol and biohydrogen.
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