中试装置二元精馏塔多输入单输出(MISO)前馈人工神经网络(FANN)模型

Z. Abdullah, Z. Ahmad, N. Aziz
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引用次数: 3

摘要

精馏塔控制由于工业能耗大,控制变量非线性,成为控制研究的主要课题。“绿色技术”和可持续性日益增长的重要性促使研究人员关注这一问题。因此,一种柱的建模和控制方法是必不可少的。神经网络是一个强大的工具,特别是在建模非线性和复杂的过程。为此,本文采用前馈人工神经网络(FANN)对多输入单输出(MISO)模型进行精馏塔顶、底组分预测。从相关系数(R值)和最小和平方误差(SSE)两方面说明了模型的性能和精度。研究发现,FANN可以很好地模拟MISO的过程。结果表明,MISO模型能较好地反映精馏过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Input-Single Output (MISO) Feedforward Artificial Neural Network (FANN) Models for Pilot Plant Binary Distillation Column
Distillations column control becomes the main subject of control research due to the intensive energy usage in the industry and the nonlinearity behavior in control variables. The growing importance of "green technology" and sustainability has triggered researchers to focus on this matter. Therefore, a method of modeling and controlling of the column is certainly indispensible in this matter. Neural networks are a powerful tool especially in modeling nonlinear and intricate process. Hence, in this paper Feed forward Artificial Neural network (FANN) have been chosen to model the multiple input-single output (MISO) for the distillation column predicting top and bottom composition. The performance and the accuracy of the models have been presented in term of correlation coefficient (R value) and the smallest sum squared error (SSE). It has been found that FANN can model MISO in representing the process. The results obtained also show that the MISO model is suitable to be used to represent the distillation process accurately.
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