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Modeling of gas pipeline in order to implement a leakage detection system using artificial neural networks based on instrumentation

机译:基于仪器的人工神经网络实现燃气管道的建模,实现泄漏检测系统

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摘要

In this paper, by using of gas flow pattern, a novel neural network-based fault detection method is presented to detect the leakage in the gas pipeline. The pipe is divided into four segments, and each segment is modeled by using input/output pressure of the gas flow. For this purpose, the acquired practical data from the real life gas pipeline are gathered and utilized for training a neural network to model the process. Some of the data are used for training set to adjust the neural network weights, and others are used to evaluate the performance of the neural network-based fault detection system. Gathered practical data from a real life pipeline made sure that the proposed method is prominent and applicable for practical implementations. The model was verified with the data obtained from the test in the actual pipeline and compared with leakage mode.
机译:本文通过使用气体流动模式,提出了一种新的基于神经网络的故障检测方法来检测气体管道的泄漏。管道分为四个段,通过使用气流的输入/输出压力来建模每个段。为此目的,收集来自现实寿命气体管道的获取的实际数据,并用于训练神经网络以建模过程。一些数据用于培训集以调整神经网络权重,其他数据用于评估基于神经网络的故障检测系统的性能。从真正的生命管道收集了实用数据,确保了所提出的方法是突出的,适用于实际实现。使用从实际管道中的测试中获得的数据进行验证该模型,并与泄漏模式进行比较。

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