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Error Entropy and Mean Square Error Minimization Algorithms for Neural Identification of Supercritical Extraction Process

机译:超临界提取过程神经识别误差熵和均方误差最小化算法

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In this paper, Artificial Neural Networks (ANN) are used to model an extraction process that uses a supercritical fluid as solvent which its pilot installation is located at the Institute of Experimental and Technological Biology – IBET in Oeiras – Lisbon – Portugal. A strategy is used to complement the experimental data collected in laboratory during extraction procedures of useful compositions for the pharmaceutical industry using Black Agglomerate Residues (BAR) originating from of the cork production as raw material. The strategy involves fitting of data obtained during an operation of extraction. Two neural models are presented: the neural model trained using a Mean Square Error (MSE) minimization algorithm and the neural model which the learning was based on the error entropy minimization. A comparison of the performance of the two models is presented.
机译:在本文中,人工神经网络(ANN)用于模拟利用超临界流体作为其Pilot安装的溶剂的提取过程,该溶剂位于Oeiras的实验和技术生物学研究所 - 里斯本 - 葡萄牙。一种策略用于补充在制药工业的有用组合物的提取程序中的实验室中收集的实验数据,使用源自软木生产作为原料的黑色附聚残留物(棒)。该策略涉及拟合在提取过程中获得的数据。提出了两个神经模型:使用均方误差(MSE)最小化算法和学习基于误差熵最小化的神经模型进行了训练的神经模型。提出了两种模型性能的比较。

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