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Robust modeling of probabilistic uncertainty in smart Grids: Data ambiguous Chance Constrained Optimum Power Flow

机译:智能电网中概率不确定性的鲁棒建模:数据歧义机会约束最佳功率流

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Future Grids will integrate time-intermittent renewables and demand response whose fluctuating outputs will create perturbations requiring probabilistic measures of resilience. When smart but uncontrollable resources fluctuate, Optimum Power Flow (OPF), routinely used by the electric power industry to dispatch controllable generation over control areas of transmission networks, can result in higher risks. Our Chance Constrained (CC) OPF corrects the problem and mitigates dangerous fluctuations with minimal changes in the current operational procedure. Assuming availability of a reliable forecast parameterizing the distribution function of the uncertain resources, our CC-OPF satisfies all the constraints with high probability while simultaneously minimizing the cost of economic dispatch. For linear (DC) modeling of power flows, and parametrization of the uncertainty through Gaussian distribution functions the CC-OPF turns into convex (conic) optimization, which allows efficient and scalable cutting-plane implementation. When estimates of the Gaussian parameters are imprecise we robustify CC-OPF deriving its data ambiguous and still scalable implementation.
机译:未来电网将整合时间间歇性可再生能源和需求响应,其波动的输出将产生扰动,需要概率性的弹性措施。当智能但不可控制的资源波动时,电力行业通常使用的最优潮流(OPF)在传输网络的控制区域上调度可控发电量,会导致更高的风险。我们的机会约束(CC)OPF可以通过在当前操作程序中进行最小程度的更改来纠正问题并缓解危险的波动。假设可靠的预测参数化了不确定资源的分配函数,我们的CC-OPF便可以极高地满足所有约束,同时将经济调度的成本降至最低。对于功率流的线性(DC)建模,以及通过高斯分布函数对不确定性进行参数化,CC-OPF变为凸形(圆锥形)优化,从而可以高效,可扩展地实施切割平面。当对高斯参数的估计不精确时,我们将CC-OPF推导得出其数据不明确且仍可扩展的实现,从而对其进行鲁棒处理。

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