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Data-driven decision making in power systems with probabilistic guarantees: Theory and applications of chance-constrained optimization

机译:具有概率保证的电力系统的数据驱动决策:机会约束优化的理论和应用

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Uncertainties from deepening penetration of renewable energy resources have posed critical challenges to the secure and reliable operations of future electric grids. Among various approaches for decision making in uncertain environments, this paper focuses on chance-constrained optimization, which provides explicit probabilistic guarantees on the feasibility of optimal solutions. Although quite a few methods have been proposed to solve chance-constrained optimization problems, there is a lack of comprehensive review and comparative analysis of the proposed methods. We first review three categories of existing methods to chance-constrained optimization: (1) scenario approach; (2) sample average approximation; and (3) robust optimization based methods. Data-driven methods, which are not constrained by any particular distributions of the underlying uncertainties, are of particular interest. Key results of the analytical reformulation approach for specific distributions are briefly discussed. We then provide a comprehensive review on the applications of chance-constrained optimization in power systems. Finally, this paper provides a critical comparison of existing methods based on numerical simulations, which are conducted on standard power system test cases. (C) 2019 Published by Elsevier Ltd.
机译:加强可再生能源资源渗透的不确定性对未来电网的安全可靠运营构成了关键挑战。在不确定环境中决策的各种方法中,本文重点介绍了机会约束优化,这为最佳解决方案的可行性提供了明确的概率保证。虽然已经提出了相当几种方法来解决机会受限的优化问题,但缺乏对提出的方法的综合审查和比较分析。我们首先审查三类现有方法来实现机会约束优化:(1)情景方法; (2)样本平均近似; (3)基于鲁棒优化的方法。数据驱动方法,其不受潜在的不确定性的任何特定分布的限制,特别感兴趣。简要讨论了特定分布的分析重构方法的关键结果。然后,我们对电力系统中的机会受限优化的应用进行了全面的审查。最后,本文提供了基于数值模拟的现有方法的关键比较,这些方法在标准电力系统测试用例上进行。 (c)2019年由elestvier有限公司发布

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