Anomaly Detection and Factor Estimation by Graph Deep Learning in Storage Batteries

被引:0
|
作者
Yoshikawa, Joji [1 ]
Takimoto, Norihiro [1 ]
Takeishi, Naoya [2 ]
Kawahara, Yoshinobu [2 ]
Funatsu, Yohei [1 ]
机构
[1] Advanced Technology Research Institute, Minatomirai Research Center, KYOCERA Corporation 3-7-1, Minatomirai, Nishi-ku, Kanagawa, Yokohama
[2] Center for Advanced Intelligence Project, RIKEN, 1-4-1, Nihonbashi, Chuo-ku, Tokyo
关键词
anomaly detection; factor estimation; failure sign detection; graph deep learning; storage battery;
D O I
10.1541/ieejeiss.144.997
中图分类号
学科分类号
摘要
Predictive maintenance is a technique to perform maintenance before failures happen by finding their Indications in advance and is a key to streamlining Maintenance operations and reducing the downtime. Methods for predictive maintenance based on anomaly detection using deep learning have been actively studied, but the identification of anomalous sensors remains a challenging task. As sensors corresponding to the cause of anomaly do not necessarily indicate large anomaly scores, it is important to watch how a model computes the scores. In this work, we use a graph neural network for anomaly detection and isolation. The vertices of the graph that appears in the network correspond to the sensors, so we can interpret the relevant weights as the relationship between the sensors. We specifically used a sparse variant of graph attention network for anomaly detection and isolation. We applied it to real-world storage battery data and confirmed the effectiveness of the method. © 2024 The Institute of Electrical Engineers of Japan.
引用
收藏
页码:997 / 1004
页数:7
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