Towards deep probabilistic graph neural network for natural gas leak detection and localization without labeled anomaly data

Journal Article (2023)
Author(s)

Xinqi Zhang (China University of Petroleum (East China))

Jihao Shi (The Hong Kong Polytechnic University, China University of Petroleum (East China))

Xinyan Huang (The Hong Kong Polytechnic University)

Fu Xiao (The Hong Kong Polytechnic University)

M. Yang (TU Delft - Safety and Security Science)

Jiawei Huang (China University of Petroleum (East China))

Xinjian Yin (The Hong Kong Polytechnic University)

Asif Sohail Usmani (The Hong Kong Polytechnic University)

Guoming Chen (China University of Petroleum (East China))

Safety and Security Science
Copyright
© 2023 Xinqi Zhang, Jihao Shi, Xinyan Huang, Fu Xiao, M. Yang, Jiawei Huang, Xiaokang Yin, Asif Sohail Usmani, Guoming Chen
DOI related publication
https://doi.org/10.1016/j.eswa.2023.120542
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 Xinqi Zhang, Jihao Shi, Xinyan Huang, Fu Xiao, M. Yang, Jiawei Huang, Xiaokang Yin, Asif Sohail Usmani, Guoming Chen
Safety and Security Science
Volume number
231
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Abstract

Deep learning has been widely applied to automated leakage detection and location of natural gas pipe networks. Prevalent deep learning approaches do not consider the spatial dependency of sensors, which limits leakage detection performance. Graph deep learning is a promising alternative to prevailing approaches as it can model spatial dependency. However, the challenge of collecting real-world anomaly data for training limits the accuracy and robustness of currently used graph deep learning approaches. This study proposes a deep probabilistic graph neural network in which attention-based graph neural network is built to model spatial sensor dependency. Variational Bayesian inference is integrated to model the posterior distribution of sensor dependency so that the leakage can be localized. An urban natural gas pipe network experiment is employed to construct the benchmark dataset, in which normal time-series data is applied to develop our proposed model while anomaly leakage data is used for performance comparison between our model and other state-of-the-art models. The results demonstrate that our model exhibits competitive detection accuracy (AUC) = 0.9484, while the additional uncertainty interval provides more comprehensive leakage detection information compared to state-of-the-art deep learning models. In addition, our model's posterior distribution enhances the leakage localization with the accuracy of positioning (PAc) = 0.8, which is higher than that of other state-of-the-art graph deep learning models. This study provides a comprehensive and robust alternative for subsequent decision-making to mitigate natural gas leakage from pipe networks.

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