基于深森林的天然气管道水合物与管道泄漏小样本非经验识别技术

IF 1.7 4区 物理与天体物理
Hongping Gao, Xiaocen Wang, Yang An, Zhigang Qu
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引用次数: 0

摘要

水合物堵塞和管道泄漏是威胁天然气管道安全的两个常见因素。然而,目前的大多数研究都集中在非侵入性的、被动的技术上,这些技术只能检测到这些异常事件中的一种,偶尔也会关注识别技术。本文介绍了一种利用侵入式传感器同时检测水合物堵塞和管道泄漏的主动方法,并进一步提出了一种基于深度森林的两类异常事件分类方法,旨在避免传统深度学习的分类依赖于大量难以获取的样本的问题。此外,深度学习中的网络结构和参数会影响分类性能,而深度森林正是解决这一问题的较好方法。深度森林的参数调优实验结果表明,无论在训练还是测试中,其分类准确率都基本达到100%,说明不同的参数设置对分类准确率影响不大。测试了该分类方法的稳定性和可移植性,验证了该分类方法易于实现,具有较强的通用性,有望应用于其他类型的天然气管道事件分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Small Sample Size and Experience-Independent Hydrate and Pipeline Leakage Identification Technique for Natural Gas Pipelines Based on Deep Forest

Small Sample Size and Experience-Independent Hydrate and Pipeline Leakage Identification Technique for Natural Gas Pipelines Based on Deep Forest

Hydrate blockage and pipeline leakage are two common factors that threaten the safety of natural gas pipelines. However, most of the current research focuses on nonintrusive, passive-like techniques that can only detect one of these abnormal events, with occasional attention to identification technique. This paper introduces an active method to simultaneously detect hydrate blockage and pipeline leakage using intrusive sensors, and further presents a deep forest-based classification method for two types of abnormal events, which aims to avoid the problem that the classification of traditional deep learning depends on huge number of hard-to-acquire samples. Besides, network structure and parameters in deep learning affect the classification performance, and deep forest is just a better solution to this problem. The parameter tuning experiments results of deep forest show that the classification accuracies are mostly 100% whatever in training and testing, proving that different parameter settings have little effect on the classification accuracy. The stability and portability of the classification method are tested, and it is verified that this classification method is easy to implement and has strong universality, which is expected to be applied to other types of natural gas pipeline event classification.

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来源期刊
Acoustics Australia
Acoustics Australia ACOUSTICS-
自引率
5.90%
发文量
24
期刊介绍: Acoustics Australia, the journal of the Australian Acoustical Society, has been publishing high quality research and technical papers in all areas of acoustics since commencement in 1972. The target audience for the journal includes both researchers and practitioners. It aims to publish papers and technical notes that are relevant to current acoustics and of interest to members of the Society. These include but are not limited to: Architectural and Building Acoustics, Environmental Noise, Underwater Acoustics, Engineering Noise and Vibration Control, Occupational Noise Management, Hearing, Musical Acoustics.
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