Xianming Lang, Yongqiang Zhu, Lin Zhang, Zefeng Cai
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引用次数: 0
摘要
为了准确识别管道泄漏,本文提出了改进的互补经验模态分解(CEEMD)去噪方法和基于深度双支持向量机(DTWSVM)的管道泄漏检测方法。该方法首先将信号分解为内禀模态函数(IMF),然后通过互信息值和多尺度置换熵(MPE)选择泄漏信息较多的内禀模态函数进行信号重构。得到的信号噪声小,拐点清晰。DTWSVM是一种将深度神经网络与TWSVM相结合的网络模型。将隐藏层中的几个原始Twin Support Vector Machine (TWSVM)数据映射到n维空间,并利用输入和输出层来判断管道的工作状态。实验结果表明,DTWSVM能准确判断管道泄漏。
In order to accurately identify pipeline leaks, this paper proposes an improved complementary empirical mode decomposition (CEEMD) denoising method and a pipeline leak detection method based on Deep Twin Support Vector Machine (DTWSVM). The signal is first decomposed into intrinsic modal functions (IMF) by CEEMD, and then the IMFs with more leakage information are selected for signal reconstruction through mutual information value and multi-scale permutation entropy (MPE). The obtained signal contains less noise and clear inflection points. DTWSVM is a network model combining deep neural network and TWSVM. Several original Twin Support Vector Machine (TWSVM) data in the hidden layer are mapped to the n-dimensional space, and the input and output layers are used to judge the pipeline working conditions. The experimental results show that DTWSVM can accurately judge pipeline leakage.