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首页> 外文期刊>Chemical Engineering & Technology: Industrial Chemistry -Plant Equipment -Process Engineering -Biotechnology >Data-Driven Modeling of Biodiesel Production Using Artificial Neural Networks
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Data-Driven Modeling of Biodiesel Production Using Artificial Neural Networks

机译:生物柴油生产的数据驱动建模使用人工神经网络

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摘要

Data-driven modeling of biodiesel production was developed by simultaneous transesterification and esterification of rapeseed oil and myristic acid with methanol,without catalyst or with different amounts of sulfated zirconia catalyst.An artificial neural network(ANN)-based model was created with experimental literature data.The input data,i.e.,reaction time,catalyst,temperature,and methanol-to-oil ratio,and output data,i.e.,total fatty acid methyl ester and oleic acid methyl ester,were considered to develop the model.Multiple input single output(MISO)ANN architecture was taken to predict the above targeted two output parameters.The proposed ANN model is computationally efficient and works reasonably well when tested on biodiesel production for solving the MISO model.
机译:数据驱动建模生物柴油的生产同时开发的酯基转移作用酯化的菜籽油和肉豆蔻酸甲醇,没有催化剂或不同大量的硫酸氧化锆催化剂。基于人工神经网络(ANN)的模型创建文献与实验数据。输入数据,即反应时间、催化剂、温度、methanol-to-oil比,和输出数据。甲基酯和油酸甲酯认为开发模型。单输出(味噌)安架构被送往预测上述目标两个输出参数。计算效率和合理的工作当测试生物柴油生产味噌模型解决。

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