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Predicting the higher heating value of syngas pyrolyzed from sewage sludge using an artificial neural network

机译:使用人工神经网络预测从污水污泥热解的合成气的更高加热值

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摘要

Sludge pyrolysis is a complex process including complicated reaction chemistry, phase transition, and transportation phenomena. To better evaluate the use of syngas, the monitoring and prediction of a higher heating value (HHV) is necessary. This study developed an artificial neural network (ANN) model to predict the HHV of syngas, with the process variables (i.e., sludge type, catalyst type, catalyst amount, pyrolysis temperature, and moisture content) as the inputs. In the first step, through optimizing various sets of parameters, a three-layer network including 8 input neurons, 15 hidden neurons, and 1 output neuron was established. Then, in the second step, an ANN model has been successfully used to predict the HHV of syngas, with a fitting correlation coefficient of 0.97 and a root mean square error (MSE) value of 14.62. The relative influence of input variables showed that the pyrolysis temperature and moisture content were the determining factors that affected the HHV of syngas. The results of optimization experiments showed that when temperature was 895?°C and the moisture content was 45.63?wt%, the highest HHV can be obtained as 438.22?kcal/m3-N. Moreover, the ANN model showed a higher prediction accuracy than other models like multiple linear regression and principal component regression. The model developed in this work may be used to predict the HHV of syngas using conventional operational parameters measured from in situ experiments, thus further providing predictive information for the use of syngas as energy and fuel.
机译:污泥热解是一种复杂的过程,包括复杂的反应化学,相转变和运输现象。为了更好地评估合成气的使用,需要更高的加热值(HHV)的监测和预测。该研究开发了一种人工神经网络(ANN)模型,以预测合成气的HHV,该过程变量(即,污泥型,催化剂类型,催化剂量,热解温和水分含量)作为输入。在第一步中,通过优化各种参数集,建立了包括8个输入神经元,15个隐藏神经元和1个输出神经元的三层网络。然后,在第二步中,ANN模型已成功地用于预测合成气的HHV,其拟合相关系数为0.97和14.62的根均方误差(MSE)值。输入变量的相对影响表明,热解温和水分含量是影响合成气HHV的决定因素。优化实验结果表明,当温度为895Ω·℃并且水分含量为45.63℃时,最高的HHV可以获得为438.22 kcal / m3-n。此外,ANN模型显示比多个线性回归和主成分回归的其他模型更高的预测精度。本作品中开发的模型可用于使用从原位实验中测量的传统操作参数预测合成气的HHV,从而进一步为使用合成气作为能量和燃料提供预测信息。

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