煤炭工程 ›› 2022, Vol. 54 ›› Issue (8): 136-141.doi: 10.11799/ce202208024

• 研究探讨 • 上一篇    下一篇

基于自编码孪生神经网络的采煤机异常检测

冯银辉,宋阳,李务晋,吴雨欣,秦泽宇   

  1. 1. 北京天地玛珂电液控制系统有限公司(北京)
    2. 中国矿业大学(北京)
  • 收稿日期:2022-03-21 修回日期:2022-06-09 出版日期:2022-08-15 发布日期:2022-09-06
  • 通讯作者: 宋阳 E-mail:songy_cumtb@163.com

Anomaly detection of shearer based on Auto-Encoder Siamese neural network

  • Received:2022-03-21 Revised:2022-06-09 Online:2022-08-15 Published:2022-09-06

摘要: 针对机械设备异常检测在实际应用中遇到意想不到的异常情况为数据标注带来挑战的问题,文章提出了一种基于自编码孪生神经网络的采煤机异常检测方法,结合采煤机工况信息构建了的弱标签数据集来解决该问题|针对异常信息过少导致的数据类别不平衡问题,搭建了时空融合的LSTM-CNN Auto-Encoder Siamese神经网络,通过孪生神经网络减少类别不平衡对训练的影响,结合LSTM与CNN的自编码神经网络进行特征抽取,提高模型在诊断时序数据时的准确率。模型的测试结果表明本模型能有效提取高质量特征,针对不平衡数据有很好的鲁棒性,且模型有一定泛化能力,具有有效性与实用性。

关键词: 采煤机, 异常检测, 自编码, 孪生网络

Abstract: The intelligentization of mechanical equipment in fully mechanized mining face is an attractive field, and abnormal detection of mechanical equipment, as an indispensable part, has broad application scenarios. However, the following problems are faced in practical applications. One is that unexpected anomalies encountered in the actual environment bring challenges to data labeling; the other is the imbalance of data categories caused by too little abnormal information. In this paper, a shearer anomaly detection method based on self-encoding twin neural network is proposed, and a weak label data set is constructed by combining shearer working condition information to solve the first problem. For the second problem, build the LCAS (LSTM-CNN Auto-Encoder Siamese) neural network, reduce the impact of class imbalance on training through the twin neural network, and combine the LSTM and CNN auto-encoder neural network for feature extraction to improve model accuracy when diagnosing time series data. The test results of the model show that the model can effectively extract high-quality features, has good robustness against unbalanced data, and the model has a certain generalization ability, which is effective and practical.

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