Gas anomaly data detection based on hybrid neural network

Konferenz: ICETIS 2022 - 7th International Conference on Electronic Technology and Information Science
21.01.2022 - 23.01.2022 in Harbin, China

Tagungsband: ICETIS 2022

Seiten: 5Sprache: EnglischTyp: PDF

Autoren:
Li, Xiaolong; Xu, Junwu; Li, Fang (School of Computer Science and Engineering, Wuhan Institute of Technology, Wuhan, China)
Liao, Jiayin (Product Development Department, Shanghai Academy of Spaceflight Technology, Shanghai, China)
Wang, Chaoqun (Gas Intelligent Application Technology R&D Center, Shanghai Aerospace Energy Co., Ltd, Shanghai, China)
Chen, Xiaohui (Gas Intelligent Application Technology R&D Center, Shanghai Aerospace Energy Co., Ltd, Wuhan, China)

Inhalt:
The accurate measurement of gas flow is directly related to the economic benefits and social interests of gas enterprises. Moreover, as a kind of time-series data, there is a serious imbalance in the distribution of positive and negative samples in the data, which leads to low accuracy and difficulty in detecting gas anomaly data. To address these problems, a cost-sensitive hybrid network model is proposed in this paper. The model combines the stronger local feature learning ability of CNN network and the better sequence feature learning ability of GRU network, and then introduces a cost-sensitive loss function to solve the problem of inaccurate classification accuracy due to skewed data distribution. The experimental results show that using this model can find the outliers in the measurement data more accurately, which has some reference significance for the accurate measurement of traffic.