Sensor Failure Identification in Industrial Big Data

被引:0
作者
Li, Zhe [1 ,2 ]
Dahling, Cornelius Grieg [2 ]
Li, Jingyue [2 ]
Xu, Wei [1 ]
机构
[1] Shanghai Elect Grp Co Ltd, Cent Acad, Shanghai 200070, Peoples R China
[2] Norwegian Univ Sci & Technol, Dept Comp Sci, NO-7491 Trondheim, Norway
来源
PROCEEDINGS OF 2021 7TH INTERNATIONAL CONFERENCE ON CONDITION MONITORING OF MACHINERY IN NON-STATIONARY OPERATIONS (CMMNO) | 2021年
关键词
sensor failure identification; industrial big data; random forest regression; long short-term memory neural network;
D O I
10.1109/CMMNO53328.2021.9467520
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
With the rise of information and sensor technologies, sensors play an increasingly significant role in modern production systems. The reliability, safety, and productivity of a production system may largely depend on sensor performance. However, there has been a lack of unsupervised methods for sensor anomaly identification under the environment of industrial big data. This paper proposed an approach to detect sensor failure for industrial big data in an unsupervised manner with the help of random forest and long short-term memory neural networks. The data used in this research are time-series data collected from a gas turbine with 107 sensors. The dataset includes sensor data with 700,000 timestamps in recent years. In this research, random forest regression was first applied to identify the relationship among those sensor values. Afterward, a long short-term memory network is established to predict the values of the target sensor at the current time step. Then, sensor failures can be identified according to the difference between the predicted and actual sensor values. The conducted experiments show promising results that the approach successfully identifies the sensor failure in a completely unsupervised manner.
引用
收藏
页码:176 / 179
页数:4
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