合成气
工艺工程
木材气体发生器
燃烧
人工神经网络
制氢
生物量(生态学)
环境科学
燃烧热
过程模拟
过程(计算)
氢
废物管理
化学
工程类
计算机科学
机器学习
煤
操作系统
有机化学
海洋学
地质学
作者
Fasiha Tahir,Muhammad Yousaf Arshad,Muhammad Azam Saeed,Usman Ali
标识
DOI:10.1016/j.enconman.2023.117702
摘要
A significant driver of global warming is fast growth in greenhouse gas (GHG) generated by energy-producing areas. Converting biomass into useful products, chemical looping gasification is an appropriate route. Using integrated steam gasification technology that utilizes a chemical looping method to produce hydrogen. Mn-, Ni-, and Ca-based materials are the three types of oxygen carriers (OC), and they are utilized. This process offers the syngas, in the greatest quality and quantity, which is a key factor. We consider that the optimum gasifier temperature is 1100 °C. The steam-to-biomass ratio is 0.95, if the steam is further increased then the char gasification reaction starts moving in the reverse direction. In this process, 736.629 MW of power is produced when only natural gas and air are used in the combustion chamber and if we add hydrogen, power is increased up to 16 MW. To predict syngas composition and the S/B ratio, machine learning modeling using Artificial Neural Networks (ANN) algorithms are applied and compared, Bayesian Regularization and Scaled Conjugate gradient proves to be the best ANN model for validating and comparing with process model, demonstrating its accuracy and potential for optimizing biomass gasification processes as high as up-to 0.99 R2 value.
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