Solving process engineering problems using artificial neural networks

M. Willis, C. Massimo, G. Montague, M. Tham, A. Morris
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引用次数: 7

Abstract

Artificial neural networks are made up of highly inter-connected layers of simple 'neuron' like nodes. The neurons act as nonlinear processing elements within the network. An attractive property of artificial neural networks is that given the appropriate network topology, they are capable of characterising nonlinear functional relationships. Furthermore, the structure of the resulting neural network based process model may be considered generic, in the sense that little prior process knowledge is required in its determination. The methodology therefore provides a cost efficient and reliable process modelling technique.
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利用人工神经网络解决工艺工程问题
人工神经网络是由高度互连的简单“神经元”节点层组成的。神经元在网络中充当非线性处理元素。人工神经网络的一个吸引人的特性是,给定适当的网络拓扑结构,它们能够表征非线性函数关系。此外,由此产生的基于神经网络的过程模型的结构可以被认为是通用的,因为在确定过程中需要很少的先验过程知识。因此,该方法提供了一种成本效益高且可靠的过程建模技术。
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