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Soft computing approaches to fault diagnosis for dynamic systems: a survey

机译:动态系统故障诊断的软计算方法:调查

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Recent approaches to fault detection and isolation for dynamic systems using methods of integrating quantitative and qualitative model information, based upon soft computing (SC) methods are surveyed. In this study, the use of SC methods is considered an important extension to the quantitative model-based approach for residual generation in FDI. When quantitative models are not readily available, a correctly trained neural network (NN) can be used a sa non-linear dynamic model of the system. However, the neural network does not easily provide insight into model behaviour; the model is explicit rather than implicit in form. This main difficulty can be overcome using qualitative modelling or ruel-based inference methods. For example, fuzzy logic can be used together with state space models or neural networks to enhance FDI diagnostic reasoning capabilities. The paper discusses the properties of several methods of combining quantitative and qualitative system information and their practical value for fault diagnosis of real process systems.
机译:根据软计算(SC)方法,调查了使用集成定量和定性模型信息的方法的动态系统故障检测和隔离方法的最新方法。在这项研究中,使用SC方法被认为是对FDI中的残留生成的定量模型方法的重要扩展。当定量模型不容易获得时,可以使用正确训练的神经网络(NN)系统的SA非线性动态模型。但是,神经网络不容易提供对模型行为的洞察力;该模型是显式而不是形式隐含。可以使用定性建模或基于ruen的推断方法来克服这种主要困难。例如,模糊逻辑可以与状态空间模型或神经网络一起使用,以增强FDI诊断推理能力。本文讨论了多种方法的特性,相结合定量和定性系统信息及其实际价值的实际过程系统的故障诊断。

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