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A FRAMEWORK FOR UNDERGROUND GAS STORAGE SYSTEM RELIABILITY ASSESSMENT CONSIDERING FUNCTIONAL FAILURE OF REPAIRABLE COMPONENTS

机译:考虑可修复组件功能故障的地下气体存储系统可靠性评估框架

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As one of the most important means of nature gas peak shaving and energy strategic reserving, the reliability assessment of underground gas storage (UGS) system is necessary. Although many methods have been proposed for system reliability assessment, the functional heterogeneity of components and the influence of hydrothermal parameters on system reliability are neglected. To overcome these problems, we propose and apply a framework to assess UGS system reliability. Combining two-layer Monte Carlo simulation (MCS) technique with hydrothermal calculation, the framework integrates dynamic functional reliability of components into system reliability evaluation. To reflect the state transition process of repairable components and their impact on system reliability, the Markov model is introduced at system level. In order to improve the calculation speed, artificial neural network model based on off-line MCS is established to replace the on-line MCS at components level. The proposed framework is applied to the reliability assessment and operation optimization of an UGS under different operation conditions. Compared with the traditional single-layer MCS method, the proposed method can not only reflect the variation of UGS reliability with hydrothermal parameters and operation time, but also can improve evaluation efficiency significantly.
机译:作为天然气调峰和能源战略储备的最重要手段之一,地下储气库(UGS)系统的可靠性评估是必要的。尽管已经提出了许多方法来评估系统可靠性,但忽略了组件的功能异质性以及水热参数对系统可靠性的影响。为了克服这些问题,我们提出并应用了一种框架来评估UGS系统的可靠性。该框架将两层蒙特卡罗模拟(MCS)技术与水热计算相结合,将组件的动态功能可靠性集成到系统可靠性评估中。为了反映可修复组件的状态转换过程及其对系统可靠性的影响,在系统级别引入了马尔可夫模型。为了提高计算速度,建立了基于离线MCS的人工神经网络模型来代替组件级的在线MCS。所提出的框架适用于UGS在不同运行条件下的可靠性评估和运行优化。与传统的单层MCS方法相比,该方法不仅可以反映UGS可靠性随水热参数和运行时间的变化,而且可以显着提高评估效率。

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