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PIPELINE LEAKAGE RECOGNITION BASED ON THE PROJECTION SINGULAR VALUE FEATURES AND SUPPORT VECTOR MACHINE

机译:基于投影奇异值特征和支持向量机的管道泄漏识别

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Identification of negative pressure waveform is the key of pipeline leakage detection. The feature extraction and the choice of the classifier are two main contents to solve the recognition problem. In this paper, a new feature extraction method based on the Projection Singular Value is presented. First of all, the two orthogonal singular value decomposition matrixes of the typical leakage waveform are extracted as the standard bases. Then the projection singular value features of the other pressure wave matrixes are extracted by being projected to the two standard bases. As the pipeline leakage is a small probability event, it is difficult to obtain the leakage samples. A multi-classification Support Vector Machine, which has the advantage of small sample learning, is constructed to classify these features in this paper. The field experiments indicate that the leakage detection based on this feature extraction and recognition model has a higher accuracy of leakage recognition.
机译:负压波形的识别是管道泄漏检测的关键。特征提取和分类器的选择是解决识别问题的两个主要内容。提出了一种基于投影奇异值的特征提取方法。首先,提取典型泄漏波形的两个正交奇异值分解矩阵作为标准库。然后,将其他压力波矩阵的投影奇异值特征投影到两个标准基准上,以将它们提取出来。由于管道泄漏是小概率事件,因此很难获得泄漏样本。本文构建了一个具有小样本学习优势的多分类支持向量机来对这些特征进行分类。现场实验表明,基于该特征提取与识别模型的泄漏检测具有较高的泄漏识别精度。

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