Vibration-Based Discriminant Analysis for Pipeline Leaks Detection

B. Kamiel, Indra Rukmana
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Abstract

Pipelines are useful for transporting liquids from one place to another. The main problem that often occurs in pipelines is leakage which results in production and financial losses. The importance of detecting pipeline leaks makes the industries look for effective detection methods to avoid bigger losses. Several previous studies have proven that the vibration-based method is successful in detecting leaks in pipelines. However, the vibration-based method used in the previous study is relatively complicated and requires specialists to interpret the results. This study proposes a machine learning-based detection method that can classify pipe conditions directly without the help of a specialist. The proposed method is vibration-based discriminant analysis; a machine learning algorithm that recognizes pipeline conditions from their vibration pattern instead of spectrum. The proposed method was tested on a test rig consisting of a closed-loop pipeline equipped with a leak-pipe test segment. The vibration signal is taken using an accelerometer placed on the leak-pipe test segment. Time domain vibration data is extracted using several statistical parameters which aims to reveal information related to pipe conditions. The vibration data collected is divided into two groups, namely training-data and testing-data. The discriminant analysis model is trained to recognize the vibration pattern of the pipeline using training-data and then tested using testing-data. There are four leak sizes introduced in this study, small, medium, and large. Meanwhile, normal condition (no leaks) is used as benchmarking. The study shows that the proposed method is effective in classifying four pipe conditions with the accuracy up to 95%.
基于振动的管道泄漏检测判别分析
管道在将液体从一地输送到另一地时很有用。管道中经常发生的主要问题是泄漏,造成生产和经济损失。管道泄漏检测的重要性促使行业寻找有效的检测方法,以避免更大的损失。先前的一些研究已经证明,基于振动的方法在检测管道泄漏方面是成功的。但是,先前研究中使用的基于振动的方法相对复杂,需要专家对结果进行解释。本研究提出了一种基于机器学习的检测方法,可以在没有专家帮助的情况下直接对管道状况进行分类。提出的方法是基于振动的判别分析;一种机器学习算法,通过振动模式而不是频谱来识别管道状况。在配有泄漏管道测试段的闭环管道测试台上对该方法进行了测试。振动信号是通过放置在泄漏管道测试段上的加速度计来获取的。利用几个统计参数提取时域振动数据,旨在揭示与管道状况相关的信息。采集的振动数据分为两组,即训练数据和测试数据。利用训练数据训练判别分析模型识别管道的振动模式,然后利用测试数据对其进行测试。在本研究中介绍了四种泄漏尺寸:小、中、大。同时以正常状态(无泄漏)作为基准。研究表明,该方法可以有效地对四种管道状态进行分类,准确率高达95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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