Zhou Xuelian, Tang Yongchuan
School of Computer and Information Science, Southwest University, Chongqing 400715, China.
School of Electronics and Information, Northwestern Polytechnical University, Xi'an 710072, China.
Entropy (Basel). 2018 Nov 9;20(11):864. doi: 10.3390/e20110864.
As a typical tool of risk analysis in practical engineering, failure mode and effects analysis (FMEA) theory is a well known method for risk prediction and prevention. However, how to quantify the uncertainty of the subjective assessments from FMEA experts and aggregate the corresponding uncertainty to the classical FMEA approach still needs further study. In this paper, we argue that the subjective assessments of FMEA experts can be adopted to model the weight of each FMEA expert, which can be regarded as a data-driven method for ambiguity information modeling in FMEA method. Based on this new perspective, a modified FMEA approach is proposed, where the subjective uncertainty of FMEA experts is handled in the framework of Dempster-Shafer evidence theory (DST). In the improved FMEA approach, the ambiguity measure (AM) which is an entropy-like uncertainty measure in DST framework is applied to quantify the uncertainty degree of each FMEA expert. Then, the classical risk priority number (RPN) model is improved by aggregating an AM-based weight factor into the RPN function. A case study based on the new RPN model in aircraft turbine rotor blades verifies the applicable and useful of the proposed FMEA approach.
作为实际工程中典型的风险分析工具,失效模式与效应分析(FMEA)理论是一种广为人知的风险预测与预防方法。然而,如何量化FMEA专家主观评估的不确定性并将相应的不确定性整合到经典FMEA方法中仍需进一步研究。在本文中,我们认为可以采用FMEA专家的主观评估来对每位FMEA专家的权重进行建模,这可被视为一种在FMEA方法中对模糊信息进行建模的数据驱动方法。基于这一新视角,提出了一种改进的FMEA方法,其中在Dempster-Shafer证据理论(DST)框架内处理FMEA专家的主观不确定性。在改进的FMEA方法中,应用DST框架内类似熵的不确定性度量——模糊度量(AM)来量化每位FMEA专家的不确定程度。然后,通过将基于AM的权重因子整合到风险优先数(RPN)函数中对经典RPN模型进行改进。基于飞机涡轮转子叶片新RPN模型的案例研究验证了所提出FMEA方法的适用性和有效性。