石油焦
当量比
煤
流化床
焦炭
生物量(生态学)
粒子群优化
合成气
粒径
产量(工程)
化学
材料科学
碳纤维
化学工程
工艺工程
数学
工程类
复合材料
有机化学
燃烧
算法
地质学
海洋学
氢
复合数
燃烧室
作者
Jun Kang,Lianfeng Zhao,Weiwei Li,Yan Song
标识
DOI:10.1016/j.renene.2022.05.096
摘要
Co-gasification of petroleum coke (petcoke) with coal or biomass in fluidized bed is a promising way to avoid environmentally problems caused by its discharge. To give more accurately prediction in this process, feed-forward back propagation neural network (FFBPNN) with three optimization algorithms were conducted, including Levenberge Marquardt (LM), genetic algorithm (GA) and particle swarm optimization (PSO). The input parameters in the ANN model were petcoke ratio (W), equivalence ratio (ER), steam flow rate (S), particle diameter (Dp), volatiles (V), and fixed carbon (FC). And the output data were carbon conversion (X), ratio of H2/CO, LHV of syngas and gas yield (Q). The predicted data showed a good agreement with the experimental results. The PSO showed much better performances than those of LM and GA. With ER increased, the predicted X increased and the ratio of H2/CO decreased. But they were almost no changed with Dp increased. The contributive ratio of W was the largest (0.37) at petcoke ratio of 20%. The contributive ratio of ER increased not the same ratio as ER increased. The contributive ratio of particle size (Dp) almost not changed with Dp increased.
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