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Application of an information fusion method to compound fault diagnosis of rotating machinery

机译:一种信息融合方法在旋转机械复合故障诊断中的应用

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Aiming at how to use the multiple fault features information synthetically to improve accuracy of compound fault diagnosis, an information fusion method based on the weighted evidence theory was proposed to effectively diagnose compound faults of rotating machinery. Firstly multiple fault features were extracted by the genetic programming. Each fault feature was separately used to act as evidence and the initial diagnosis accuracy was regarded as the weight coefficient of the evidence. Then through the negative selection algorithm, the diagnosis ability of the local diagnosis was advanced and an impersonal means of obtaining basic probability assignment was given. Finally the fusion result was obtained by utilizing the weighted evidence theory into the decision-making information fusion for the preliminary result. By comparing the diagnosis results with other artificial intelligence algorithm, experiment result indicates that using multiple weighted evidences fusion can improve the diagnostic accuracy of compound fault.
机译:旨在如何使用多个故障特征信息,综合性地提高复合故障诊断的准确性,提出了一种基于加权证据理论的信息融合方法,以有效地诊断旋转机械的复合故障。首先通过遗传编程提取多个故障特征。每个故障特征单独用于充当证据,初始诊断精度被认为是证据的重量系数。然后通过负选择算法,给出了局部诊断的诊断能力,并且给出了获得基本概率分配的非个人手段。最后,通过利用加权证据理论进入初步结果的决策信息融合来获得融合结果。通过将诊断结果与其他人工智能算法进行比较,实验结果表明,使用多加权证据融合可以提高复合故障的诊断准确性。

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