An Application of Singular Spectrum Analysis for Internal Valve Leakage Signals Denoising in a Natural Gas Pipeline

Shen-Bin Zhu, Zhenlin Li, Shimin Zhang, Ying Yu
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Abstract

Internal valve leakage in a natural gas pipeline not only brings huge economic losses to the petroleum enterprises, but also causes immeasurable environmental pollution. Therefore, the diagnosis of internal valve leakage and the prediction of leakage rates are the basis to ensure the safe operation of natural gas pipeline. In this paper, based on acoustic emission detection system, the internal valve leakage signals were collected, which were analyzed and processed to diagnose the internal valve leakage and predict the leakage rates. Due to the complex work environment and serious noise interference, the collected acoustic emission signals contain a large amount of environmental noise. Therefore, singular spectrum analysis was proposed to reduce the environmental noise in acoustic emission signals. Radial basis function neural network was used to predict the leakage rates. Experimental results demonstrate that pure internal leakage source signals can be obtained via singular spectrum analysis. The prediction accuracy of leakage rates based on the characteristic parameters of pure AE signals is better than the accuracy without signals denoising. Therefore, singular spectrum analysis is an effective denoising method for acoustic emission signals, which can improve the prediction accuracy of internal valve leakage rate.
奇异谱分析在天然气管道内阀泄漏信号去噪中的应用
天然气管道阀内泄漏不仅给石油企业带来巨大的经济损失,而且造成不可估量的环境污染。因此,阀内泄漏的诊断和泄漏率的预测是保证天然气管道安全运行的基础。本文基于声发射检测系统,采集阀内泄漏信号,对信号进行分析处理,诊断阀内泄漏并预测泄漏率。由于工作环境复杂,噪声干扰严重,采集到的声发射信号中含有大量的环境噪声。因此,提出了奇异谱分析方法来降低声发射信号中的环境噪声。采用径向基函数神经网络预测泄漏率。实验结果表明,通过奇异谱分析可以获得纯内漏源信号。基于纯声发射信号特征参数的泄漏率预测精度优于不去噪的预测精度。因此,奇异谱分析是一种有效的声发射信号去噪方法,可以提高阀内泄漏率的预测精度。
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