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Efficient selection of time domain features for leakage detection in pipes carrying liquid commodities

机译:有效选择携带液体商品管道泄漏检测的时域特征

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In this paper, a classification approach is proposed for the leakage detection in pipes carrying liquid commodities in the pipeline network of an oil refinery. Leak detection is treated as a binary classification task. Time domain features are computed from acoustic signal measurements using accelerometers mounted on the surface of the pipes. An efficient feature selection procedure is applied, combining correlation feature analysis and feature ranking. The root mean squared power and the zero crossing rate of the signals are shown to be the most discriminative among a set of candidate time domain features, which are subsequently used by a k-th nearest neighbor classifier, allowing for successful leakage detection at an affordable computational cost. The performance of the proposed scheme is evaluated using real measurements from oil refinery pipeline systems.
机译:在本文中,提出了一种分类方法,用于炼油厂管道管网中携带液体商品的管道泄漏检测。 泄漏检测被视为二进制分类任务。 使用安装在管道表面上的加速度计从声学信号测量计算时域特征。 应用有效的特征选择过程,组合相关特征分析和特征排序。 信号的根均方向功率和零交叉速率被示出为一组候选时域特征中的最判别,随后由千邻最近的邻分类器使用,允许以实惠的价格成功泄漏检测 计算成本。 使用来自炼油流水线系统的实际测量来评估所提出的方案的性能。

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