基于WD结合PEM和RBF网络的FDI在TECP反应器诊断中的应用

M. Barakat, D. Lefebvre, M. Kalil, O. Mustapha, F. Druaux
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引用次数: 3

摘要

我们的工作目标是通过多次测量来检测和隔离大规模系统中发生的故障。提出了一种基于小波分解、参数消去法(PEM)和径向基函数(RBF)网络的高级故障检测与隔离方法。输入信号被分解成近似值(低频)和细节(高频)。从近似和细节信号中提取的统计参数通过参数消除法(PEM)去除对准确分类无用的参数。选取的参数通过有监督RBF网络对故障进行分类。将该算法的性能与基于分类而不采用分解技术和参数选择的常用方法进行了比较。这两种方法在一个化学反应器的模拟器上进行了比较:田纳西伊士曼挑战过程是一个众所周知的大型系统的基准。
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FDI based on WD combined With PEM and RBF networks : Application to the diagnosis of TECP reactor
The objective of our work is to detect and isolate the faults that occur in large scale systems with many measurements. An advanced fault detection and isolation (FDI) method is proposed based on wavelet decomposition, Parameters Elimination Method (PEM) and Radial Basis Function (RBF) networks. Input signals are decomposed into approximations (low frequencies) and details (high frequencies). The extracted statistical parameters from approximation and detail signals pass through Parameters Elimination Method (PEM) to get rid from parameters that are useless for accurate classification. The selected parameters are used to classify the faults using a supervised RBF network. The performance of our algorithm is compared with a usual method based on classification without decomposition technique and parameters selection. The two methods are compared on the simulator of a chemical reactor: the Tennessee Eastman Challenge Process that is a well known benchmark for large scale systems.
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