A dual-channel signals-based method for pipeline leak detection by signal reconstruction and deep feature fusion

IF 6.9 2区 环境科学与生态学 Q1 ENGINEERING, CHEMICAL Process Safety and Environmental Protection Pub Date : 2025-02-09 DOI:10.1016/j.psep.2025.106881
Zheyi Zhang , Weihua Cao , Wenkai Hu , Min Wu
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引用次数: 0

Abstract

Accurate detection of pipeline leaks is crucial for the stable operation of urban natural gas pipelines. Pipelines are typically situated in complex environments, and most leak detection methods rely solely on data from a single type of sensor. Due to the impact of environmental noise and the inability of a single type of sensor to comprehensively describe the operational state of pipelines, these methods often have high false detection rates. Accordingly, this paper proposes a dual-channel signals-based method for pipeline leak detection by signal reconstruction and deep feature fusion. The contributions are two fold: First, a Variational Mode Decomposition with Dual Signals Dynamic Time Warping (VMD-DSDTW) method is designed for signal reconstruction and noise removal of the dual-channel signals. Second, an AutoEncoder based Feature Fusion Convolutional Neural Network (AE-FFCNN) method is devised for dual-channel signals information fusion and pipeline leak detection. The proposed method was tested based on data extracted from an experimental platform, and the results demonstrated the superior performance of the proposed method by comparison with other state-of-the-art methods.
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来源期刊
Process Safety and Environmental Protection
Process Safety and Environmental Protection 环境科学-工程:化工
CiteScore
11.40
自引率
15.40%
发文量
929
审稿时长
8.0 months
期刊介绍: The Process Safety and Environmental Protection (PSEP) journal is a leading international publication that focuses on the publication of high-quality, original research papers in the field of engineering, specifically those related to the safety of industrial processes and environmental protection. The journal encourages submissions that present new developments in safety and environmental aspects, particularly those that show how research findings can be applied in process engineering design and practice. PSEP is particularly interested in research that brings fresh perspectives to established engineering principles, identifies unsolved problems, or suggests directions for future research. The journal also values contributions that push the boundaries of traditional engineering and welcomes multidisciplinary papers. PSEP's articles are abstracted and indexed by a range of databases and services, which helps to ensure that the journal's research is accessible and recognized in the academic and professional communities. These databases include ANTE, Chemical Abstracts, Chemical Hazards in Industry, Current Contents, Elsevier Engineering Information database, Pascal Francis, Web of Science, Scopus, Engineering Information Database EnCompass LIT (Elsevier), and INSPEC. This wide coverage facilitates the dissemination of the journal's content to a global audience interested in process safety and environmental engineering.
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