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A COMPARATIVE ASSESSMENT ON STATIC AND DYNAMIC PCA FOR FAULT DETECTION IN NATURAL GAS TRANSMISSION SYSTEMS

机译:天然气传输系统中静态和动态PCA故障检测的比较评估

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摘要

Sustainability of natural gas transmission infrastructure is highly related to the system's ability to decrease emissions due to ruptures or leaks. Although traditionally such detection relies in alarm management system and operator's expertise, given the system's nature as large-scale, complex, and with vast amount of information available, such alarm generation is better suited for a fault detection system based on data-driven techniques. This would allow operators and engineers to have a better framework to address the online data being gathered. This paper presents an assessment on multiple fault-case scenarios in critical infrastructure using two different data-driven based fault detection algorithms: Principal component analysis (PCA) and its dynamic variation (DPCA). Both strategies are assessed under fault scenarios related to natural gas transmission systems including pipeline leakage due to structural failure and flow interruption due to emergency valve shut down. Performance evaluation of fault detection algorithms is carried out based on false alarm rate, detection time and misdetection rate. The development of modern alarm management frameworks would have a significant contribution in natural gas transmission systems' safety, reliability and sustainability.
机译:天然气传输基础设施的可持续性与系统减少由于破裂或泄漏引起的排放的能力高度相关。尽管传统上,此类检测依赖于警报管理系统和操作员的专业知识,但鉴于该系统具有大规模,复杂且具有大量可用信息的性质,因此此类警报生成更适合基于数据驱动技术的故障检测系统。这将使操作员和工程师拥有一个更好的框架来处理正在收集的在线数据。本文使用两种不同的基于数据驱动的故障检测算法,对关键基础设施中的多个故障案例进行了评估:主成分分析(PCA)及其动态变化(DPCA)。两种策略都是在与天然气传输系统相关的故障场景下进行评估的,包括由于结构故障造成的管道泄漏和由于紧急阀门关闭而造成的流量中断。故障检测算法的性能评估是基于误报率,检测时间和误检率进行的。现代警报管理框架的发展将对天然气传输系统的安全性,可靠性和可持续性做出重大贡献。

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