首页> 外文期刊>International Journal of Applied Mathematics and Computer Science >ADVANCES IN MODEL-BASED FAULT DIAGNOSIS WITH EVOLUTIONARY ALGORITHMS AND NEURAL NETWORKS
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ADVANCES IN MODEL-BASED FAULT DIAGNOSIS WITH EVOLUTIONARY ALGORITHMS AND NEURAL NETWORKS

机译:演化算法和神经网络的基于模型的故障诊断的研究进展

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摘要

Challenging design problems arise regularly in modem fault diagnosis systems. Unfortunately, the classical analytical techniques often cannot provide acceptable solutions to such difficult tasks. This explains why soft computing techniques such as evolutionary algorithms and neural networks become more and more popular in industrial applications of fault diagnosis. The main objective of this paper is to present recent developments regarding the application of evolutionary algorithms and neural networks to fault diagnosis. In particular, a brief introduction to these computational intelligence paradigms is presented, and then a review of their fault detection and isolation applications is performed. Close attention is paid to techniques that integrate the classical and soft computing methods. A selected group of them is carefully described in the paper. The performance of the presented approaches is illustrated with the use of the DAMADICS fault detection benchmark that deals with a valve actuator.
机译:在现代的故障诊断系统中经常出现具有挑战性的设计问题。不幸的是,经典的分析技术通常无法为此类困难的任务提供可接受的解决方案。这解释了为什么诸如进化算法和神经网络之类的软计算技术在故障诊断的工业应用中变得越来越流行。本文的主要目的是介绍有关进化算法和神经网络在故障诊断中的应用的最新进展。特别是,简要介绍了这些计算智能范式,然后对其故障检测和隔离应用程序进行了回顾。密切关注集成了经典计算和软计算方法的技术。本文中精心描述了其中的一组。通过使用与阀门执行器相关的DAMADICS故障检测基准来说明所提出方法的性能。

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