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Fault diagnosis of machines based on D-S evidence theory. Part 2: Application of the improved D-S evidence theory in gearbox fault diagnosis

机译:基于D-S证据理论的机器故障诊断。第2部分:改进的D-S证据理论在变速箱故障诊断中的应用

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摘要

Fault diagnosis requires reasoning and decision-making based on diagnostic knowledge and features extracted from raw data. In practice, fault features may be uncertain and imprecise due to sensor errors, fluctuating working conditions, and limitations of feature extraction methods. Features may not be apparent when a fault is in the early stages of development. In addition, diagnostic knowledge is not always accurate because most of it is obtained from experts' experience. In Part 1 of this study, a new decision method is proposed that can deal with these issues, combine multi-evidence information from different methods, and provide more accurate diagnostic results. It is an improvement on conventional D-S evidence theory. Part 2 of this study reports an application of the improved D-S evidence theory in gearbox fault diagnosis. Compared with conventional diagnostic methods, the proposed method can enhance diagnostic accuracy and autonomy.
机译:故障诊断需要基于诊断知识和从原始数据中提取的特征进行推理和决策。实际上,由于传感器错误,工作条件波动以及特征提取方法的局限性,故障特征可能是不确定的和不精确的。当故障处于开发的早期阶段时,功能可能并不明显。另外,诊断知识并非总是准确的,因为大多数知识是从专家的经验中获得的。在本研究的第1部分中,提出了一种新的决策方法,该方法可以处理这些问题,结合来自不同方法的多证据信息,并提供更准确的诊断结果。它是对传统D-S证据理论的改进。本研究的第2部分报告了改进的D-S证据理论在齿轮箱故障诊断中的应用。与传统的诊断方法相比,该方法可以提高诊断的准确性和自主性。

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