改进残差故障检测性能的遗传-模糊混合系统

Francisco Serdio, Alexandru-Ciprian Zavoianu, E. Lughofer, K. Pichler, T. Buchegger, Hajrudin Efendic
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引用次数: 0

摘要

我们演示了如何通过遗传模糊系统(gfs)改进基于残差的故障检测。因此,纯数据驱动故障检测系统的性能依赖于系统识别模型,使用遗传模糊系统创建的模型可以提高系统的性能。进化方法用于模糊系统的确定性训练不能产生良好结果的情况。因此,当确定性优化算法陷入局部最优时,使用gfs来改进(微调)非全局解决方案,使用内置的遗传算子,能够帮助收敛解决方案脱离其局部。结果是通过故障检测曲线(FDC)呈现的-受接收者工作特征(ROC)曲线的启发-并表明,即使考虑具有良好检测能力的故障检测(FD)系统,引入新的遗传进化的模糊模型仍然会产生重要的改进,反映在更高的曲线下面积(AUC)上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Genetic-Fuzzy Systems for improved performance in Residual-Based Fault Detection
We demonstrate how Residual-Based Fault Detection can be improved by means of Genetic-Fuzzy Systems (GFSs). Thus, the performance of a pure Data-Driven Fault Detection System, which relies on system identification models, is improved using models created by Genetic-Fuzzy Systems. The evolutionary approach is used in the cases where a deterministic training of the fuzzy systems is not able to produce good results. As such, when the deterministic optimization algorithm is trapped in local optima, GFSs are used in order to improve (fine tune) the non-global solutions using built-in genetic operators that are able to help converged solutions escape from their locality. The results are presented by means of Fault Detection Curves (FDC) -inspired by Receiver Operating Characteristic (ROC) curves- and show how, even when considering a Fault Detection (FD) system with good detection capabilities, the introduction of new, genetically evolved, fuzzy models still produces an important improvement, reflected by higher Areas Under the Curve (AUC).
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