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Fuzzy Fault Detection and Diagnosis under Severely Noisy Conditions using Feature-based Approaches

机译:使用基于特征的方法在严重嘈杂的条件下的模糊故障检测和诊断

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This paper introduces an approach to fault detection and diagnosis scheme which uses fuzzy reference models to describe the symptoms of both faulty and fault-free plant operation. Recently, some approaches have been combined with fuzzy logic to enhance its performance in particular applications such as fault detection and diagnosis. The reference models are generated from training data which are produced by computer simulation of typical plant. A fuzzy matching scheme compares the parameters of a fuzzy partial model, identified using on-line data collected from the real plant, with the parameters of the reference models. The reference models are also compared to each other to take account of the ambiguity which arises at some operating points when the symptoms of correct and faulty operations are similar. Independent Components Analysis (ICA) is used to extract the exact data from variables under severe noisy conditions. A Fuzzy Self Organizing Feature Map is applied to the data obtained from ICA for obtaining more accurate and precise features representing different conditions of the system. The results are then applied to the model-based fuzzy procedure for diagnosis goals. Results are presented which demonstrate the applicability of the scheme.
机译:本文介绍了一种故障检测和诊断方案的方法,它使用模糊参考模型来描述故障和无故障植物操作的症状。最近,一些方法与模糊逻辑相结合,以提高其特定应用的性能,如故障检测和诊断。从训练数据生成参考模型,该数据是通过典型植物的计算机模拟产生的。模糊匹配方案比较了使用从真实工厂收集的在线数据识别的模糊部分模型的参数,参考模型的参数。相互比较参考模型,以考虑在正确和故障操作的症状相似时在某些操作点产生的模糊性。独立组件分析(ICA)用于在严重嘈杂的条件下从变量中提取精确数据。模糊自组织特征映射应用于从ICA获得的数据,以获得更准确和精确的特征,代表系统的不同条件。然后将结果应用于基于模型的模糊程序以进行诊断目标。提出了结果,表明了该方案的适用性。

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