同济大学学报(自然科学版)2024,Vol.52Issue(12) :1947-1954.DOI:10.11908/j.issn.0253-374x.23122

基于光纤测温和小波降噪的污水管道检测方法

A Sewer Detection Method Based on Fiber-Optic Distributed Temperature Sensing and Wavelet Based Denoising

尹海龙 吴玟萱 胡意扬 魏卿 祁海玥
同济大学学报(自然科学版)2024,Vol.52Issue(12) :1947-1954.DOI:10.11908/j.issn.0253-374x.23122

基于光纤测温和小波降噪的污水管道检测方法

A Sewer Detection Method Based on Fiber-Optic Distributed Temperature Sensing and Wavelet Based Denoising

尹海龙 1吴玟萱 1胡意扬 1魏卿 1祁海玥1
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作者信息

  • 1. 同济大学 环境科学与工程学院,上海 200092
  • 折叠

摘要

建立了基于小波降噪的光纤感温数据背景噪声值识别和污水管网入流无干扰检测方法,并结合实际污水管道识别的动态入流入渗事件进行了验证.结果表明:不同降噪算法得到的背景噪声阈值范围较大,对照实际污水与雨水入流事件,阈值取约±0.3℃左右时的识别效果最佳;阈值调节方法为算法选择的主导因素,多级阈值调节相比不调节和单级调节具有明显优势.据此给出了小波函数、阈值估计方法和阈值调节方法的优化参数,以实现可靠的污水管道检测效果.

Abstract

This paper proposed a method to determine background noise of fiber temperature sensing data based on wavelet denoising,and then detected in-sewer inflow events without disturbing sewer flow conveyance.This method proposed was validated using detected dynamic inflow events in an actual sewer system.It was found that different wavelet denoising algorithms provide background noises that span a wide range,and a noise threshold of about±0.3℃corresponds to the best identification of actual sewer and stormwater inflow events.Threshold rescaling is the dominant factor for algorithm employment,where the multi-level rescaling method is obviously superior to the non-rescaling and single-level rescaling method.Accordingly,optimized parameters for the wavelet denoising algorithm including wavelet function,threshold selection rules and threshold rescaling were proposed,to enhance the reliability of sewer detection.

关键词

污水管道/管道入流/光纤分布式测温/小波分析/管道检测

Key words

sewer pipe/pipe inflow/fiber-optic distributed temperature sensing/wavelet analysis/pipe detection

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出版年

2024
同济大学学报(自然科学版)
同济大学

同济大学学报(自然科学版)

CSTPCD北大核心
影响因子:0.88
ISSN:0253-374X
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