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LEAK DETECTION METHOD BASED ON SUPPORT VECTOR MACHINE

机译:基于支持向量机的泄漏检测方法

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Assumptive and uncertain factors, few leak samples, complex non-linear pipeline systems are the problems often involved in the process of pipeline leak detection. Furthermore, the pressure wave changes of leakage are similar to these of valve regulation and pump closure. Thus it is difficult to establish a reliable model and to distinguish the leak signal pattern from others in pipeline leak detection. The veracity of leak detection system is limited. This paper presents a novel technique based on the statistical learning theory, support vector machine (SVM) for pipeline leak detection. Support Vector Machine (SVM) is learning system that uses a hypothesis space of linear functions in a high dimensional feature space, trained with a learning algorithm from optimization theory that implements a learning bias derived from statistical learning theory. SVM is based on the principle of structure risk minimization as opposed to the principle of empirical risk minimization in conventional techniques. Thus, SVM has good performance for classification over small sample set. In this paper, an overview of the limitations of traditional statistics and the advantage of statistical learning theory will be introduced. In this paper, an SVM classifier is used to classify the signal pattern with few samples. Firstly, the algorithm of the SVM classifier and steps of using the model to identify leakage signals are studied. Secondly, the classification results of the experiment show that SVM classifier has high recognition accuracy. In addition, SVM is compared with neural network method. Then the paper concludes that in terms of classification ability and generalization performance, SVM has clearly advantages than neural network method over small sample set, so SVM is more applicable to pipeline leak detection.
机译:假设和不确定因素,少量泄漏样品,复杂的非线性管道系统是流水线泄漏检测过程中经常涉及的问题。此外,泄漏的压力波变化类似于阀门调节和泵封闭。因此,难以建立可靠的模型,并将泄漏信号模式与管道泄漏检测中的其他方式区分开。泄漏检测系统的真实性有限。本文提出了一种基于统计学习理论的新技术,支持向量机(SVM)用于管道泄漏检测。支持向量机(SVM)是学习系统,它使用高维特征空间中的线性函数的假设空间,从优化理论中使用学习算法培训,其实现统计学习理论的学习偏差。 SVM基于结构风险最小化原则,而不是以常规技术的经验风险最小化的原则。因此,SVM对小样本集具有良好的分类性能。本文将介绍传统统计数据的局限性及统计学习理论的优势。在本文中,SVM分类器用于对具有少量样本进行分类的信号模式。首先,研究了SVM分类器的算法和使用模型来识别泄漏信号的步骤。其次,实验的分类结果表明,SVM分类器具有高识别精度。此外,将SVM与神经网络方法进行比较。然后本文得出结论,就分类能力和泛化性能而言,SVM在小型样品集中的神经网络方法方面具有明显的优势,因此SVM更适用于管道泄漏检测。

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