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Probabilistic multiple model neural network based leak detection system: Experimental study

机译:基于概率多模型神经网络的泄漏检测系统:实验研究

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This paper presents an effective decision making system for leak detection based on multiple generalized linear models and clustering techniques. The training data for the proposed decision system is obtained by setting up an experimental pipeline fully operational distribution system. The system is also equipped with data logging for three variables; namely, inlet pressure, outlet pressure, and outlet flow. The experimental setup is designed such that multi-operational conditions of the distribution system, including multi pressure and multi flow can be obtained. We then statistically tested and showed that pressure and flow variables can be used as signature of leak under the designed multi-operational conditions. It is then shown that the detection of leakages based on the training and testing of the proposed multi model decision system with pre data clustering, under multi operational conditions produces better recognition rates in comparison to the training based on the single model approach. This decision system is then equipped with the estimation of confidence limits and a method is proposed for using these confidence limits for obtaining more robust leakage recognition results. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于多重广义线性模型和聚类技术的有效的泄漏检测决策系统。建议的决策系统的训练数据是通过建立实验管道完全可操作的分配系统获得的。该系统还配备了三个变量的数据记录功能。即入口压力,出口压力和出口流量。设计实验装置,以便可以获得配电系统的多种运行条件,包括多种压力和多种流量。然后,我们进行了统计测试,结果表明,在设计的多工况下,压力和流量变量可以用作泄漏的特征。然后表明,与基于单模型方法的训练相比,在多操作条件下基于对带有预数据聚类的拟议多模型决策系统的训练和测试进行的泄漏检测产生了更好的识别率。然后,该决策系统配备有置信度限制的估计,并提出了一种使用这些置信度限制以获得更鲁棒的泄漏识别结果的方法。 (C)2015 Elsevier Ltd.保留所有权利。

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