利用流动诱导声学分析进行数据驱动的管道在线泄漏检测

Saravanabalaji M, Shakthi Raagavi S, Yogesh K, S. S, Hariharasudhan P
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引用次数: 0

摘要

输液和输水管网对现代社会至关重要。然而,这些系统很容易发生泄漏,从而导致大量水流失、基础设施损坏和环境污染。所提出的解决方案利用放置在管道离散位置的声发射传感器来测量流体流动在管道中产生的声音。计算模型用于根据传感器提供的输入推断位置。如果发生泄漏,则通过交叉相关和 TDOA 方法确定泄漏位置。该解决方案尤其适用于输水管道。关键词: 声学数据分析、数据驱动模型、交叉相关、到达时间差 (TDOA)
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Data-Driven Inline Leak Detection for Pipelines Using Flow-Induced Acoustics Analysis
Fluid and water distribution networks are essential to the modern world. However, these systems are prone to leaks, which can lead to significant water loss, damage to infrastructure, and environmental pollution. The proposed solution makes use of Acoustic Emission sensors placed in discrete locations in the pipeline which measures the sound in the pipeline caused by the flow of fluids. Computation models are used to deduce the location from the input provided by the sensors. In case of leak, the leak is localized through cross correlation and TDOA methods. This solution is particularly developed for water distribution pipelines. Keyword: Acoustic data analysis, Data-driven models, Cross-Correlation, Time Difference of Arrival (TDOA)
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