首页> 外文期刊>ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B. Mechanical Engineering >Fuzzy-FMSA: Evaluating Fault Monitoring and Detection Strategies Based on Failure Mode and Symptom Analysis and Fuzzy Logic
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Fuzzy-FMSA: Evaluating Fault Monitoring and Detection Strategies Based on Failure Mode and Symptom Analysis and Fuzzy Logic

机译:模糊FMSA:基于故障模式和症状分析的故障监测和检测策略和模糊逻辑

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摘要

Failure mode and symptoms analysis (FMSA) is a relatively new and still not very much employed variation of failure modes, effects and criticality analysis (FMECA), a technique broadly used in reliability, safety, and quality engineering. While FMECA is an extension of the well-known failure mode and effects analysis (FMEA) method, primarily used when a criticality analysis is required, FMSA focuses on the symptoms produced by each considered failure mode and the selection of the most appropriate detection and monitoring techniques and strategies, maximizing the confidence level in the diagnosis and prognosis. However, in the same way as FMECA and FMEA, FMSA inherits some deficiencies, presenting somewhat biased results and uncertainties intrinsic to its development, due to its own algorithm and the dependence on knowledge-based inputs from experts. Accordingly, this article presents a fuzzy logic application as a complement to FMSA in order to mitigate such uncertainties' effects. As a practical example, the method is applied to a Kaplan turbine shaft system. The monitoring priority number (MPN) obtained through FMSA is compared to the fuzzy monitoring priority number (FMPN) resulting from fuzzy logic application, demonstrating how the proposed method improves the evaluation of detection and monitoring techniques and strategies.
机译:失败模式和症状分析(FMSA)是一种相对较新的,并且仍然没有非常多的失败模式的变化,效果和临界分析(FMECA),这是可靠性,安全性和优质工程的技术。虽然FMECA是众所周知的失效模式和效果分析(FMEA)方法的延伸,主要用于在需要临界分析时,FMSA专注于每个考虑的故障模式产生的症状和最合适的检测和监测技术与策略,最大化诊断和预后的置信水平。然而,与FMECA和FMEA相同,FMSA继承了一些缺陷,由于自己的算法以及对专家的知识投入的依赖性,呈现出一些偏见的结果和不确定性。因此,本文呈现了模糊逻辑应用作为对FMSA的补充,以减轻这种不确定性的影响。作为实例,该方法应用于Kaplan涡轮机轴系统。通过FMSA获得的监测优先级(MPN)与模糊逻辑应用产生的模糊监测优先级(FMPN)进行比较,证明了所提出的方法如何改善检测和监测技术和策略的评估。

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