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首页> 外文期刊>Journal of Water Resources Planning and Management >Objective Functions for Transient-Based Pipeline Leakage Detection in a Noisy Environment: Least Square and Matched-Filter
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Objective Functions for Transient-Based Pipeline Leakage Detection in a Noisy Environment: Least Square and Matched-Filter

机译:嘈杂环境中基于瞬态的管道泄漏检测的目标函数:最小二乘和匹配滤波器

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摘要

This paper addresses leak detection in the presence of measurement noise using the inverse transient method (ITM). The unknown leak parameters are determined by optimizing a merit function, which fits the numerically modeled pressures to measurements. Traditionally, the fitting is accomplished by a least-square (LS) objective function that minimizes the L2 distance between the model and data. However, in practical problems where the environment is noisy, the minimum L2 distance may result in some fictitious leaks. This paper proposes an alternative objective function, known as matched-filter (MF) in the literature, which is expected to produce a more robust localization in a noisy environment because it maximizes the signal-to-noise ratio (SNR). This function is then compared with the conventional LS approach by assessment of leak-detection accuracy. It was proved that the MF estimator has smaller mean square error of leak localization than LS when signals have high noise level (SNR <= 3 dB). For a low noise level, the two estimators converge to the same results. The conclusions were supported by numerical and experimental case studies.
机译:本文介绍了使用逆瞬态方法(ITM)在存在测量噪声的情况下进行泄漏检测。未知泄漏参数是通过优化优值函数确定的,该函数将数值模拟的压力拟合到测量值。传统上,拟合是通过最小二乘(LS)目标函数完成的,该函数最小化模型和数据之间的L2距离。但是,在环境嘈杂的实际问题中,最小L2距离可能会导致一些虚拟泄漏。本文提出了另一种目标函数,在文献中被称为匹配滤波器(MF),由于它最大化了信噪比(SNR),因此有望在嘈杂的环境中产生更鲁棒的定位。然后通过评估泄漏检测的准确性将该功能与常规LS方法进行比较。事实证明,当信号具有高噪声水平(SNR <= 3 dB)时,MF估计器的泄漏定位均方误差比LS小。对于低噪声水平,两个估计器收敛到相同的结果。结论得到了数值和实验案例研究的支持。

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