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Helical fault diagnosis model based on data-driven incremental mergence

机译:基于数据驱动增量合并的螺旋故障诊断模型

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摘要

With the improving capability for acquiring real-time data in the field of intelligent manufacturing, the data driven machine learning approach has been an effective means for equipment fault diagnosis. Although incremental learning can make up for the shortcoming of machine learning that newly generated data must be combined with the original data for retraining, it cannot be carried out directly and effectively in the face of problems caused by fault data streams of massive-volume, imbalance, strong noise, and strong causality. In this paper, a helical fault diagnosis model based on data-driven incremental mergence is proposed to tackle this problem. Each helical cycle includes four procedures to handle incremental data blocks for imbalanced data processing, feature extraction and classification, effective example selection, and dynamic evaluation of features and examples. The effective features and examples are then transmitted to the next helical cycle to merge for preserving the fault information. The experimental results of bearing operation data demonstrate that the proposed model could efficiently solve the problem of incremental learning with massive and imbalanced fault data, significantly improve the recognition rate of minority faults, and reduce the time cost, thus contributing to meeting the specific requirements of equipment fault data.
机译:随着智能制造领域中获取实时数据的能力不断提高,数据驱动的机器学习方法已成为设备故障诊断的有效手段。尽管增量学习可以弥补机器学习的不足,即新生成的数据必须与原始数据结合起来进行重新训练,但是面对大量,不平衡的故障数据流所导致的问题,无法直接有效地进行增量学习,强烈的噪音和强烈的因果关系。为了解决这个问题,本文提出了一种基于数据驱动的增量合并的螺旋故障诊断模型。每个螺旋循环包括四个过程,用于处理增量数据块,以进行不平衡数据处理,特征提取和分类,有效的示例选择以及特征和示例的动态评估。然后将有效特征和示例传输到下一个螺旋循环以合并以保留故障信息。轴承运行数据的实验结果表明,该模型可以有效地解决海量不平衡故障数据的增量学习问题,显着提高了少数故障的识别率,降低了时间成本,从而满足了具体的要求。设备故障数据。

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