基于模糊神经网络的cstr故障诊断

J Zhang, A.J Morris, G.A Montague
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引用次数: 9

摘要

本文介绍了利用模糊神经网络在线诊断过程故障的方法。模糊神经网络是在传统的前馈神经网络基础上增加模糊化层而得到的。模糊化层将在线测量和控制器输出的增量转换为三个模糊集:“增加”、“稳定”和“减少”。过程中的异常由在线测量和控制器输出的定性增量表示。这些被网络划分为不同的类别。通过以定性的形式表示异常,可以压缩训练数据。模糊方法保证了从一个模糊集到另一个模糊集的平滑过渡,从而增强了对测量噪声的鲁棒性。该技术已成功应用于CSTR系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault diagnosis of a cstr using fuzzy neural networks

On-line process fault diagnosis using fuzzy neural networks is described in this paper. The fuzzy neural network is obtained by adding a fuzzification layer to a conventional feed forward neural network. The fuzzification layer converts increments in on-line measurements and controller outputs into three fuzzy sets: “increase”, “steady”, and “decrease”. Abnormalities in a process are represented by qualitative increments in on-line measurements and controller outputs. These are classified into various categories by the network. By representing abnormalities in qualitative form, training data can be condensed. The fuzzy approach ensures smooth transitions from one fuzzy sets to another and, hence, robustness to measurement noise is enhanced. The technique has been successfully applied to a CSTR system.

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