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Risk-Based Security Assessment with Big Data Driven Probabilistic Modeling for WET Snow Extreme Events

机译:针对WET雪极端事件的基于风险的安全评估和大数据驱动概率建模

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Security analyses in modern power systems require to analyse the vulnerabilities to natural threats which affect the power system in the future 24-72 hours, potentially causing multiple, dependent contingencies. These events often lead to high impact on the system, so that decision-making aimed to enhance security may become difficult. An effective risk-based contingency analysis and contingency ranking can be performed by considering uncertainty of incumbent threats, system state and response. To this purpose, threat and vulnerability analyses can benefit from the latest developments in big data applications. The paper presents the integration of accurate forecasts, coming from advanced numerical weather prediction systems and related to the specific hazard of wet snows, with a risk-based security assessment tool. Simulation results are compared against public information about outages recorded during a recent extreme wet snow event in the North of Italy, confirming the importance of data-driven hazard analyses integrated in security assessment applications.
机译:现代电力系统中的安全性分析需要分析针对自然威胁的脆弱性,这些脆弱性会在未来24-72小时内影响电力系统,并可能导致多种相关的突发事件。这些事件通常会对系统造成重大影响,因此旨在增强安全性的决策可能会变得困难。考虑到现有威胁,系统状态和响应的不确定性,可以进行基于风险的有效偶发分析和偶发排名。为此,威胁和漏洞分析可受益于大数据应用程序的最新发展。本文介绍了基于风险的安全评估工具,该工具将来自先进的数值天气预报系统且与湿雪的特定危害相关的准确预测集成在一起。将模拟结果与有关意大利北部最近一次极端湿雪事件期间记录的停机的公共信息进行了比较,证实了集成在安全评估应用程序中的数据驱动型危害分析的重要性。

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