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Outage predictions of electric power systems under Hurricane winds by Bayesian networks

机译:贝叶斯网络在飓风中电力系统的停运预测

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The stability and reliability of electric power grids are essential to the continuous operation of modern cities as well as for the mitigation, preparedness, response and recovery in disaster management. Power systems must be assessed in order to identify and address component and system-level weaknesses while supporting their rapid restoration. This paper proposes a Bayesian Network (BN)-based framework to predict outages in an electric power grid that is exposed to a hurricane event. The inherent capabilities of BNs, including its intuitive and graphical representation of probabilistic information, and its ability to allow information updating with ease, make it an effective tool for this application. The framework is coupled with a DC-flow model that captures the physics of the electrical system and also reduces the computational complexity of building conditional probability tables needed in the BN model. The framework relies on component fragilities and topology of the grid, and predicts outages at substations and distribution points within the electric power system. Its application is demonstrated using Harris County's electric power system under the 2008 Hurricane Ike winds that battered the Gulf Coast of the United States. The model captured well the field system response, where low outage probabilities are observed in the transmission system while the outage risks at distribution load points are significantly higher. The developed BN framework can seamlessly integrate transmission and distribution systems, inform disaster management, and suggest restoration strategies, while supporting decision-making for pre- or post-event intervention actions.
机译:电网的稳定性和可靠性对于现代城市的持续运行以及灾难管理中的缓解,备灾,响应和恢复至关重要。必须对电源系统进行评估,以识别和解决组件和系统级的弱点,同时支持其快速恢复。本文提出了一种基于贝叶斯网络(BN)的框架来预测暴露于飓风事件的电网中断。 BN的固有功能,包括其概率信息的直观和图形表示,以及轻松进行信息更新的能力,使其成为此应用程序的有效工具。该框架与DC流量模型耦合,该DC流量模型捕获了电气系统的物理特性,并且还降低了BN模型中所需的构建条件概率表的计算复杂性。该框架依赖于组件脆弱性和电网拓扑结构,并预测电力系统内变电站和配电点的停电情况。哈里斯县的电力系统在2008年袭击美国墨西哥湾沿岸的艾克飓风下,证明了其应用。该模型很好地反映了现场系统的响应,在传输系统中观察到了低的停机概率,而配电负载点的停机风险明显更高。已开发的BN框架可以无缝集成传输和分发系统,为灾难管理提供信息,并提出恢复策略,同时支持事前或事后干预措施的决策。

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