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LIQUID PIPELINE RUPTURE DETECTION USING MULTIPLE ARTIFICIAL INTELLIGENCE CLASSIFIERS DURING STEADY-STATE AND TRANSIENT OPERATIONS

机译:在稳态和瞬态操作期间使用多个人工智能分类器使用多种人工智能分类的液体管道破裂检测

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There are several challenges associated with existing rupture detection systems such as their inability to accurately detect during transient (such as pump dynamics) conditions, delayed responses and their inability to transfer models to different pipeline configurations easily. To address these challenges, we employ multiple Artificial Intelligence (AI) classifiers that rely on pattern recognitions instead of traditional operator-set thresholds. AI techniques, consisting of two-dimensional (2D) Convolutional Neural Networks (CNN) and Adaptive Neuro Fuzzy Interface Systems (ANFIS), are used to mimic processes performed by operators during a rupture event. This includes both visualization (using CNN) and rule-based decision making (using ANFIS). The system provides a level of reasoning to an operator through the use of the rule-based AI system. Pump station sensor data is non-dime nsionalized prior to AI processing, enabling application to pipeline configurations outside of the training data set. AI algorithms undergo testing and training using two data sets: laboratory-collected data that mimics transient pump-station operations and real operator data that includes Real Time Transient Model (RTTM) simulated ruptures. The use of non-dimensional sensor data enables the system to detect ruptures from pipeline data not used in the training process.
机译:存在诸如它们不能瞬时(如泵动态)条件下,延迟的响应和它们不能传递模型来容易地在不同流水线配置中精确地检测与现有的断裂检测系统相关联的一些挑战。为了应对这些挑战,我们采用的是依靠模式识别取代传统的运营商设置的阈值多的人工智能(AI)分类。人工智能技术,包括二维(2D)卷积神经网络(CNN)和自适应神经模糊接口系统(ANFIS)的,用于模拟处理的破裂事件期间由操作员执行。这既包括可视化(使用CNN)和基于规则的决策(使用ANFIS)。该系统提供了通过使用基于规则的AI系统的推理操作者的水平。泵站传感器数据是非硬币nsionalized AI处理之前,使应用到训练数据集之外的流水线配置。 AI算法经过测试和使用两个数据集训练:实验室所收集的数据模拟瞬态泵工位操作和实际运营数据,包括实时暂态模型(RTTM)模拟破裂。使用非维传感器数据的使系统能检测从在训练过程中不使用数据管道破裂。

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