Litcius/Paper detail

Insufficient Data Generative Model for Pipeline Network Leak Detection Using Generative Adversarial Networks

Huaguang Zhang, Xuguang Hu, Dazhong Ma, Rui Wang, Xiangpeng Xie

2020IEEE Transactions on Cybernetics71 citationsDOI

Abstract

In terms of pipeline leak detection, the unavoidable fact is that existing data could not provide enough effective leak data to train a high accuracy model. To address this issue, this article proposes mixed generative adversarial networks (mixed-GANs) as a practical way to provide additional data, ensuring data reliability. First, multitype generative networks with heterogeneous parameter-updating mechanisms are designed to explore a variety of different solutions and eliminate the potential risks of instable training and scenario collapse. Then, based on expert experience, two data constraints are proposed to describe leak characteristics and further evaluate the quality of generated leak data in the training process. Through integrating the particle swarm optimization algorithm into generative model training, mixed-GAN has better generation performance than the conventional gradient descent algorithm. Based on the above-mentioned contents, the proposed model is able to provide satisfactory leak data with different scenarios, contributing to data quantity expansion, data credibility enhancement, and data variety enrichment. Finally, extensive experiments are given to illustrate the effectiveness of the proposed generative model for pipeline network leak detection.

Topics & Concepts

Computer sciencePipeline (software)LeakGenerative grammarVariety (cybernetics)Data miningReliability (semiconductor)CredibilityGenerative adversarial networkMachine learningArtificial intelligenceParticle swarm optimizationGradient descentGenerative modelProcess (computing)Artificial neural networkDeep learningEngineeringPower (physics)Environmental engineeringQuantum mechanicsPolitical scienceLawPhysicsProgramming languageOperating systemWater Systems and OptimizationInfrastructure Maintenance and MonitoringAnomaly Detection Techniques and Applications