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A hybrid neural network model for rule generation and its application to process fault detection and diagnosis

机译:规则生成的混合神经网络模型及其在过程故障检测与诊断中的应用

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摘要

In this paper, a hybrid neural network model, based on the integration of fuzzy ARTMAP (FAM) and the rectangular basis function network (RecBFN), which is capable of learning and revealing fuzzy rules is proposed. The hybrid network is able to classify data samples incrementally and, at the same time, to extract rules directly from the network weights for justifying its predictions. With regards to process systems engineering, the proposed network is applied to a fault detection and diagnosis task in a power generation station. Specifically, the efficiency of the network in monitoring the operating conditions of a circulating water (CW) system is evaluated by using a set of real sensor measurements collected from the power station. The rules extracted are analyzed, discussed, and compared with those from a rule extraction method of FAM. From the comparison results, it is observed that the proposed network is able to extract more meaningful rules with a lower degree of rule redundancy and higher interpretability within the neural network framework. The extracted rules are also in agreement with experts' opinions for maintaining the CW system in the power generation plant.
机译:本文提出了一种基于模糊ARTMAP(FAM)和矩形基函数网络(RecBFN)集成的混合神经网络模型,该模型能够学习和揭示模糊规则。混合网络能够对数据样本进行增量分类,同时还能直接从网络权重中提取规则以证明其预测正确。关于过程系统工程,所提出的网络被应用于发电站的故障检测和诊断任务。具体而言,通过使用从电站收集的一组实际传感器测量值来评估网络在监视循环水(CW)系统的运行状况方面的效率。对提取的规则进行分析,讨论,并与FAM规则提取方法中的规则进行比较。从比较结果可以看出,所提出的网络能够在神经网络框架内以较低的规则冗余度和较高的可解释性提取出更有意义的规则。提取的规则也与专家意见保持一致,以维护电厂中的CW系统。

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