Detecting anomalies in time series data from a manufacturing system using recurrent neural networks

被引:49
作者
Wang, Yue [1 ]
Perry, Michael [2 ]
Whitlock, Dane [2 ]
Sutherland, John W. [1 ]
机构
[1] Purdue Univ, Environm & Ecol Engn, W Lafayette, IN 47906 USA
[2] Cummins Inc, Columbus, IN 47202 USA
关键词
Anomaly detection; Recurrent neural networks; Time series; Quality control; MAINTENANCE;
D O I
10.1016/j.jmsy.2020.12.007
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The industrial internet of things allows manufacturers to acquire large amounts of data. This opportunity, assuming the right methods are available, allows manufacturers to find anomalies that arise during manufacturing system operation. Data acquired from a manufacturing system are usually in the forms of time series. This paper proposes a new method that can detect anomalies in time series data. This model is based on recurrent neural networks, and it can be trained using data acquired during routine system operation. This is very beneficial because often, there are few data labeled as anomalies, since anomalies are hopefully rare events in a well-managed manufacturing system. The model takes time series data as an input and reconstructs the input data. Time series data with an anomaly would causes patterns in the reconstruction errors that are inconsistent with error patterns of anomaly-free data. The performance of the proposed method is assessed using data from a diesel engine assembly process. Three common types of anomalies are detected from the time series data. It is shown that the method not only can detect anomalies, but it can also provide insights into the timestep at which the anomaly occurred. This feature helps a manufacturer pinpoint the source of the problem.
引用
收藏
页码:823 / 834
页数:12
相关论文
共 35 条
  • [1] Cloud manufacturing - a critical review of recent development and future trends
    Adamson, Goran
    Wang, Lihui
    Holm, Magnus
    Moore, Philip
    [J]. INTERNATIONAL JOURNAL OF COMPUTER INTEGRATED MANUFACTURING, 2017, 30 (4-5) : 347 - 380
  • [2] [Anonymous], 2017, TIME SERIES ANOMALY
  • [3] Anomaly monitoring improves remaining useful life estimation of industrial machinery
    Aydemir, Gurkan
    Acar, Burak
    [J]. JOURNAL OF MANUFACTURING SYSTEMS, 2020, 56 : 463 - 469
  • [4] Bahdanau D, 2016, Arxiv, DOI arXiv:1409.0473
  • [5] Collective Anomaly Detection Based on Long Short-Term Memory Recurrent Neural Networks
    Bontemps, Loic
    Van Loi Cao
    McDermott, James
    Nhien-An Le-Khac
    [J]. FUTURE DATA AND SECURITY ENGINEERING, FDSE 2016, 2016, 10018 : 141 - 152
  • [6] Chalapathy R., 2019, DEEP LEARNING ANOMAL, P1
  • [7] Health indicator construction of machinery based on end-to-end trainable convolution recurrent neural networks
    Chen, Longting
    Xu, Guanghua
    Zhang, Sicong
    Yan, Wenqiang
    Wu, Qingqiang
    [J]. JOURNAL OF MANUFACTURING SYSTEMS, 2020, 54 (54) : 1 - 11
  • [8] Cho K., 2014, P C EMP METH NAT LAN, P1724
  • [9] DeVor R., 2007, Statistical Quality Design and Control, V2nd
  • [10] Goodfellow I, 2016, DEEP LEARNING, DOI [10.1017/CBO9781107415324.004, DOI 10.1017/CBO9781107415324.004]