Co (III)/Al2O3催化剂下费托合成天然气的神经网络预测

M. Esfandyari, M. Amiri, M. K. Salooki
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引用次数: 13

摘要

研究了Co (III)/ al2o3催化剂在费托合成(FTS)中的应用,并与人工神经网络模拟结果进行了比较。本研究采用神经网络模型对天然气费托过程中ch4、CO 2和CO的组成进行预测,输入向量为包含70个不同实验的操作压力、操作温度、时间和CO/H 2比4个变量的4维向量,输出为CO 2、CO和CH 4的组成。采用MLP算法进行训练,并采用测试集R2、MAE、MSE和RMSE来评估系统的性能。结果表明,模型预测值与实验数据吻合较好。本文指出了神经网络作为一种很有前途的预测技术,将如何有效地用于FTS预测。DOI: http://dx.doi.org/10.3329/cerb.v17i1.22915化学工程研究通报17(2015)25-33
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NEURAL NETWORK PREDICTION OF THE FISCHER-TROPSCH SYNTHESIS OF NATURAL GAS WITH Co (III)/Al2O3 CATALYST
Application of Co (III)/Al 2 O 3 catalyst in Fischer-Tropsch synthesis (FTS) was studied in a wide range of synthesis gas conversions and compared with ANN Simulation results. Present study applies Neural Network model to predict composition of CH 4 , CO 2 and CO of the Fischer–Tropsch Process of Natural Gas, while the input vector was 4-dimension vector including four variables from operating pressure, operating temperature, time and ratio of CO/H 2 of 70 different experiments and the output were composition of CO 2 , CO and CH 4 . The MLP algorithm has been applied for the training and the test set was applied to evaluate the performance of the system including R2, MAE, MSE and RMSE. The results exposed that the predicted values from the model were in good agreement with the experimental data. The paper indicates how Neural Network, as a promising predicting technique, would be effectively used for FTS. DOI: http://dx.doi.org/10.3329/cerb.v17i1.22915 Chemical Engineering Research Bulletin 17(2015) 25-33
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