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Simulation of Supercritical CO_2 Extraction for Peanut Oil Based on Artificial Neural Networks

机译:基于人工神经网络的花生油超临界CO_2萃取模拟

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The BP ANN was established based on MATLAB to simulate the supercritical CO_2 extraction process for extracting peanut oil. The supercritical CO_2 extraction experiment for peanut oil was carried out and the experimental results were used to train the BP ANN. The operating pressure, temperature and time were regarded as the inputs of the BP ANN and the percentage extraction as the output. By testing the BP ANN with other groups of experimental data, the precision of the BP ANN was verified. This BP ANN can predict the percentage extraction when the processing parameters of supercritical CO_2 extraction are given, and the optimization of the processing parameters can also be realized.
机译:BP ANN是基于MATLAB建立的,以模拟超临界CO_2提取方法,用于提取花生油。对花生油进行超临界CO_2提取实验,并使用实验结果培训BP ANN。经运行压力,温度和时间被认为是BP ANN的输入和作为输出的提取百分比。通过使用其他实验数据组测试BP ANN,验证了BP ANN的精度。该BP ANN可以预测给出超临界CO_2提取的处理参数时提取百分比,并且还可以实现处理参数的优化。

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