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A CNN-ELM Compound Fault Diagnosis Method Based on Joint Distribution Modification

机译:基于联合分布改造的CNN-ELM复合故障诊断方法

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In the industrial field, compound faults often occur on rolling bearings and it's difficult to diagnose them correctly. To solve this problem, this article proposes a CNN-ELM compound fault diagnosis method based on joint distribution modification. Firstly, considering the complementarity and coupling of data from multiple sensors, a data input trick of multi-sensor data connected in parallel is designed. Secondly, due to the discrepancy of distribution between the compound fault data features and the single fault data features, the marginal distribution matrix and the posterior distribution matrix are used to modify the CNN-ELM network, so that the network can extract more reliable data features for fault diagnosis. Finally, referring to the categories and criteria of bearing damage proposed by Paderborn University, the label code is defined. The corresponding data set is used to verify the proposed algorithm. Experimental results show that the algorithm can accurately obtain detailed fault information such as fault location, fault type, and fault severity.
机译:在工业领域,复合误差经常发生在滚动轴承上,很难正确诊断它们。为了解决这个问题,本文提出了基于联合分布改性的CNN-ELM复合故障诊断方法。首先,考虑来自多个传感器的数据的互补性和耦合,设计了并行连接的多传感器数据的数据输入特征。其次,由于复合故障数据特征与单个故障数据特征之间分布的分布差异,边际分布矩阵和后部分布矩阵用于修改CNN-ELM网络,使网络可以提取更可靠的数据特征用于故障诊断。最后,参考Paderborn University提出的轴承损坏的类别和标准,定义了标签代码。相应的数据集用于验证所提出的算法。实验结果表明,该算法可以准确地获得故障定位,故障类型和故障严重性等详细故障信息。

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