基于声谱LPCC和HMM的管道损伤与泄漏检测

C. Ai, Honghua Zhao, R. Ma, Xueren Dong
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引用次数: 28

摘要

为了保护管道运输,防止人为破坏或自然因素造成的泄漏事故,开展主动保护和精确定位等研究是十分重要的。基于线性预测倒谱系数(LPCC)的计算,利用隐马尔可夫模型(HMM)识别损伤声信号,设计了管道预防监测检漏系统。在分析声信号特性的基础上,将连续非稳态时变过程分框描述为一系列短稳定序列。选取准确表征每个短时声信号的LPCC作为声信号特征参数,采用Durbin算法进行有效提取;采用状态转移概率和观察时间序列特征参数的Baum-Welch重估算法,建立HMM识别损伤类型;利用维特比译码算法实现了最佳传输路径的搜索,并得到了相应的输出概率。结果表明,基于声谱LPCC和HMM的单声识别识别率可达到97%
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Pipeline Damage and Leak Detection Based on Sound Spectrum LPCC and HMM
In order to protect pipeline transportation and prevent from leakage incident for manmade damage or natural factors, it is very important to carry out such researches as active protecting and accurate positioning. Designed the pipeline prevention monitoring and leak detecting system based on calculating LPCC (linear prediction cepstrum coefficient) and using HMM (hidden Markov models) to recognise damage acoustic signals. The continuous non-steady time-variety process was sub-framed and described with a series of short steady sequences on the basis of acoustic signal characteristic analysed. LPCC which represents accurately each short-time acoustic signal was selected as the acoustic signal characteristic parameters and extracted effectively using Durbin algorithm; HMM was established to recognise damage types by Baum-Welch revaluation algorithm with the state-transfer probability and observing time sequences characteristic parameters; using Viterbi decoding algorithm realized the search of best transfer route and achieved the corresponding export probability. The results show that the acoustic singles recognition rate is improved effectively based on sound spectrum LPCC and HMM,and can be up to 97%
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