Experience in developing models of industrial plants by large scale artificial neural networks

Z. Boger
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引用次数: 9

Abstract

Artificial neural networks (ANN) are used for modeling of industrial processes. However, most of the published papers deal with small or medium scale systems. One of the possible reasons, the slow learning or non convergence of large scale networks can now be overcome by the use of non-developed ANN process model may be optimized, after the elimination of non-relevant input and hidden-layer "neurons". Causal relationships may be extracted from the ANN process model. This paper describes the experience acquired using these algorithms during the last six years in developing ANN models of industrial plants. Examples are given of an activated-sludge urban wastewater treatment plant and a batch reactor for the production of organic chemicals.
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有利用大规模人工神经网络建立工业厂房模型的经验
人工神经网络(ANN)用于工业过程的建模。然而,大多数已发表的论文涉及中小型系统。其中一个可能的原因是,现在可以通过使用非开发的人工神经网络来克服大规模网络学习缓慢或不收敛的问题,在消除非相关输入和隐藏层“神经元”之后,过程模型可能得到优化。因果关系可以从人工神经网络过程模型中提取出来。本文描述了在过去六年中使用这些算法开发工业厂房人工神经网络模型所获得的经验。给出了城市污水活性污泥处理厂和生产有机化学品的间歇式反应器的实例。
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