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Analytical reformulation of security constrained optimal power flow with probabilistic constraints

机译:具有概率约束的安全约束最优潮流的解析重构

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In this paper, uncertainties from wind power in-feed are taken into account in a DC security-constrained optimal power flow (SCOPF) by formulating probabilistic constraints. The deviations from the wind power forecast are represented as Gaussian random variables and an analytical reformulation of the constraints is proposed, which is exact for the Gaussian distribution. The resulting formulation has the same computational complexity as the deterministic problem. Furthermore, a valuation framework to assess the cost of securing the system against fluctuations in wind power in-feed is proposed. The applicability of the method and the valuation framework is demonstrated on the IEEE RTS96 system. We show that the probabilistic formulation leads to lower probability of thermal overloads, and that it is less costly to secure the system against uncertain in-feed than to secure the system against failures in most cases.
机译:在本文中,通过公式化概率约束,在直流安全受限的最佳潮流(SCOPF)中考虑了风力发电的不确定性。与风电功率预测的偏差用高斯随机变量表示,并提出了约束条件的解析式,这对于高斯分布是精确的。所得公式与确定性问题的计算复杂度相同。此外,提出了一种评估框架,用以评估防止风电馈入波动而保护系统的成本。该方法和评估框架的适用性在IEEE RTS96系统上得到了证明。我们表明,概率公式化导致热过载的可能性降低,并且在大多数情况下,确保系统免受不确定的馈电的开销要比确保系统免受故障的开销低。

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