Application of genetic algorithm in selection of dominant input variables in sensor fault diagnosis of nonlinear systems

M. El-Koujok, M. Benammar, N. Meskin, M. Al-Naemi, R. Langari
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引用次数: 2

Abstract

Industrial processes rely heavily on information provided by sensors. Reliability of sensor data is vital to assure an acceptable performance of these complex and nonlinear processes. In this paper, the analytical redundancy approach has been adopted to detect and isolate sensor faults in which the model of a given nonlinear dynamical system is identified based on the available input/output time profile. Towards this goal, an evolving Takagi-Sugeno approach as a universal approximator is used to represent a nonlinear mapping between the past values of input/output data and the current value of the output data. However, the main challenge is the selection of the appropriate set of past values that can lead to the best estimate of the output. In this paper, a genetic algorithm is utilized as a powerful data-driven tool for finding the best set of input-output past values. The proposed approach is applied to the problem of sensor fault detection and isolation in a Continuous-Flow Stirred-Tank Reactor. Simulation results demonstrate and validate the performance capabilities of the proposed approach.
遗传算法在非线性系统传感器故障诊断中主导输入变量选择中的应用
工业过程严重依赖传感器提供的信息。传感器数据的可靠性对于确保这些复杂和非线性过程的可接受性能至关重要。本文采用分析冗余的方法来检测和隔离传感器故障,其中基于可用的输入/输出时间轮廓来识别给定非线性动力系统的模型。为了实现这一目标,一个不断发展的Takagi-Sugeno方法作为一个通用逼近器被用来表示输入/输出数据的过去值和输出数据的当前值之间的非线性映射。然而,主要的挑战是选择一组合适的过去值,这些值可以导致对输出的最佳估计。本文利用遗传算法作为一种强大的数据驱动工具来寻找最佳的输入输出过去值集。将该方法应用于连续流搅拌釜反应器中传感器故障的检测与隔离问题。仿真结果验证了该方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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