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Machinery Fault Diagnosis Based On Fuzzy Measure And Fuzzy Integral Data Fusion Techniques

机译:基于模糊测度和模糊集成数据融合技术的机械故障诊断

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Fuzzy measure and fuzzy integral theory are an outgrowth of classical measure theory. Fuzzy measure and fuzzy integral theory take into account the importance of criteria and interactions among them, and have excellent potential for applications such as classification. This paper presents a novel data fusion approach for machinery fault diagnosis using fuzzy measures and fuzzy integrals. The approach consists of a feature-level data fusion model and a decision-level data fusion model. The fuzzy c-means analysis method was employed to identify the relations between a feature set and a fault prototype to establish mappings between features and given faults. Rolling element bearing and electrical motor experiments were conducted to validate the models. Different features were obtained from recorded signals and then fused at both feature and decision levels using fuzzy measure and fuzzy integral data fusion techniques to produce diagnostic results. The results showed that the proposed approach performs very well for bearing and motor fault diagnosis.
机译:模糊测度和模糊积分理论是经典测度理论的产物。模糊测度和模糊积分理论考虑了准则及其之间相互作用的重要性,对于分类等应用具有极好的潜力。本文提出了一种基于模糊测度和模糊积分的机械故障诊断数据融合新方法。该方法包括一个功能级数据融合模型和一个决策级数据融合模型。采用模糊c均值分析方法来识别特征集和故障原型之间的关系,以建立特征与给定故障之间的映射。进行了滚动轴承和电动机实验以验证模型。从记录的信号中获得不同的特征,然后使用模糊测量和模糊积分数据融合技术在特征和决策水平上融合以产生诊断结果。结果表明,该方法在轴承和电机故障诊断中表现良好。

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