基于神经网络和RSM的生物柴油生产预测与优化

Ceyla Özgür
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摘要

本实验研究采用人工神经网络(ANN)和响应面法(RSM)结合中心复合设计和酯交换法对石榴籽油生产生物柴油进行预测和优化。中心复合设计(CCD)优化条件为甲醇/油摩尔比(3:1 ~ 11:1)、催化剂用量(0.5 wt% ~ 1.50 wt%)、温度(50℃~ 70℃)、时间(45 min ~ 105 min)。采用基于RSM方法的CCD优化工艺因素,建立了生物柴油产率预测的人工神经网络模型。最佳工艺参数为:甲醇/油摩尔比为8.01:1,催化剂质量分数为1.08 wt%,反应温度为70℃,反应时间为45 min,收率为95.68%。响应面法模型的决定系数(R2)为0.9887,优于人工神经网络模型的决定系数(R2) 0.9691。结果表明,RSM和ANN模型有利于生物柴油生产过程的优化和预测。
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Prediction and optimization of biodiesel production by using ANN and RSM
This experimental work examined the prediction and optimization of biodiesel production from pomegranate seed oil using Artificial Neural Networks (ANN) and Response Surface Methodology (RSM) with central composite design and The transesterification method chosen for biodiesel production. The Central Composite Design (CCD) optimization conditions were methanol/oil molar ratio (3:1 to 11:1), catalyst rate (0.5 wt% to 1.50 wt%), temperature (50 ℃ to 70 ℃) and time (45 min to 105 min). The process factors were optimized by using CCD based on the RSM method and developed an ANN model to predict biodiesel yield. The optimum yield was found 95.68% with optimum process parameters as 8.01:1 methanol/oil molar ratio, 1.08 wt% catalyst rate, 70 ℃ temperature and 45 min time. The coefficient of determination (R2) acquired from the response surface methodology model is 0.9887 and is better when compared to the coefficient of determination (R2) of 0.9691 acquired from the Artificial neural network model. According to the results, using RSM and ANN models is beneficial for optimizing and predicting the biodiesel production process.
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