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Convex Relaxations of Chance Constrained AC Optimal Power Flow

机译:机会约束交流最优功率流的凸松弛

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High penetration of renewable energy sources and the increasing share of stochastic loads require the explicit representation of uncertainty in tools such as the optimal power flow (OPF). Current approaches follow either a linearized approach or an iterative approximation of non-linearities. This paper proposes a semidefinite relaxation of a chance-constrained AC-OPF which is able to provide guarantees regarding global optimality. Using a piecewise affine policy, we can ensure tractability, accurately model large power deviations, and determine suitable corrective control policies for active power, reactive power, and voltage. We state a tractable formulation for two types of uncertainty sets. Using a scenario-based approach and making no prior assumptions about the probability distribution of the forecast errors, we obtain a robust formulation for a rectangular uncertainty set. Alternatively, assuming a Gaussian distribution of the forecast errors, we propose an analytical reformulation of the chance constraints suitable for semidefinite programming. We demonstrate the performance of our approach on the IEEE 9, 24 and 118 bus system using realistic day-ahead forecast data and obtain tight near-global optimality guarantees.
机译:可再生能源的高渗透率和随机负载的份额不断增加,要求在诸如最佳潮流(OPF)之类的工具中明确表示不确定性。当前的方法遵循线性化方法或非线性的迭代近似。本文提出了机会受限的AC-OPF的半确定性松弛,它能够为全局最优性提供保证。使用分段仿射策略,我们可以确保可处理性,准确地对大功率偏差建模并为有功功率,无功功率和电压确定合适的校正控制策略。我们为两种类型的不确定性集陈述了易于处理的表述。使用基于场景的方法,并且没有对预测误差的概率分布进行任何先验假设,我们为矩形不确定性集获得了一个可靠的公式。另外,假设预测误差为高斯分布,我们提出适合半定规划的机会约束的分析式重新表述。我们使用现实的日前预报数据演示了我们的方法在IEEE 9、24和118总线系统上的性能,并获得了紧密的近乎全局的最优性保证。

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