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Optimal Power Flow with Multiple Data Uncertainties

机译:具有多个数据不确定性的最优潮流

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摘要

Optimal Power Flow (OPF) is an important tool in system planning and operation. Usually, the data required for such a study, is rarely available with complete certainty. The nature of uncertainty in generators' cost characteristics, network parameters, load model coefficients, and limits on voltages, flows and generations, is generally of non-probabilistic type. Boundary value representation has been useful in such situations. These represent extreme bounds of a variable, in the fuzzy set. This paper, thus attempts to find boundary OPF solution(s) of critical variables and functions, corresponding to multiple input data uncertainties. Such solutions could be of immense value to planners and market players. The proposed approach is based on the Primal-Dual Interior Point method (PDIPM). Results for two IEEE test systems, demonstrate the potential of proposed algorithm. The results have been verified by Monte Carlo Simulations.
机译:最佳潮流(OPF)是系统规划和运行中的重要工具。通常,此类研究所需的数据很少能完全确定。发电机成本特性,网络参数,负荷模型系数以及对电压,流量和发电的限制的不确定性通常是非概率类型的。在这种情况下,边界值表示非常有用。这些代表模糊集中变量的极限。因此,本文试图找到与多个输入数据不确定性相对应的关键变量和函数的边界OPF解。这样的解决方案对计划者和市场参与者可能具有巨大的价值。所提出的方法是基于原始-双内点法(PDIPM)。两个IEEE测试系统的结果证明了该算法的潜力。结果已由Monte Carlo Simulations验证。

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