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Assessment of power grid vulnerabilities accounting for stochastic loads and model imprecision

机译:电网漏洞评估随机负荷和模型不精确算法

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摘要

© 2017 Elsevier Ltd Vulnerability and robustness are major concerns for future power grids. Malicious attacks and extreme weather conditions have the potential to trigger multiple components outages, cascading failures and large blackouts. Robust contingency identification procedures are necessary to improve power grids resilience and identify critical scenarios. This paper proposes a framework for advanced uncertainty quantification and vulnerability assessment of power grids. The framework allows critical failure scenarios to be identified and overcomes the limitations of current approaches by explicitly considering aleatory and epistemic sources of uncertainty modelled using probability boxes. The different effects of stochastic fluctuation of the power demand, imprecision in power grid parameters and uncertainty in the selection of the vulnerability model have been quantified. Spectral graph metrics for vulnerability are computed using different weights and are compared to power-flow-based cascading indices in ranking N-1 line failures and random N-k lines attacks. A rank correlation test is proposed for further comparison of the vulnerability metrics. The IEEE 24 nodes reliability test power network is selected as a representative case study and a detailed discussion of the results and findings is presented.
机译:©2017 elsevier Ltd漏洞和鲁棒性是未来电网的主要问题。恶意攻击和极端天气条件有可能触发多个部件中断,级联故障和大型停电。强大的应急情况识别程序是为了改善电网弹性并确定临界情景所必需的。本文提出了一种用于电网的高级不确定性量化和脆弱性评估的框架。该框架允许识别临界失败情景,并通过明确考虑使用概率框建模的不确定性的蜕皮和认知来源来克服当前方法的局限性。量化了电网参数的随机波动的不同效果以及在漏洞模型中选择的漏洞模型中的不确定性。使用不同权重计算漏洞的频谱图度量,并与排名N-1行失败和随机N-K线攻击进行比较的级联级联指标。提出了秩相关测试,以进一步比较漏洞指标。 IEEE 24节点可靠性测试电力网络被选择为代表性案例研究,并提出了对结果和结果的详细讨论。

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