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Modelling wind power spatial-temporal correlation in multi-interval optimal power flow: A sparse correlation matrix approach

机译:多间隔最优潮流中风电时空相关性的建模:一种稀疏相关矩阵法

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The significantly increasing deployment of wind power necessitates that system operation considers the spatial temporal correlation of power forecast from different wind power plants. How to model this spatial-temporal correlation in the actual system dispatch is challenging. In this paper, a sparse correlation matrix is utilized to efficiently model the spatial-temporal correlation of wind power forecast in the generation dispatch model. A novel, adjustable, and distributionally-robust chance-constrained multi-interval optimal power flow (ADRCC-MIOPF) model is proposed to obtain reliable economic dispatch (ED) solutions. The spatial-temporal correlation of wind power plants power forecasts is represented by the sparse correlation covariance matrix obtained from historical, time series wind power forecast error data. The chance constraints in the ADRCC-MIOPF model are transformed into a set of second-order-cone (SOC) constraints in which an adjustable coefficient in the chance constraints controls the robustness of the ADRCC-MIOPF model to the wind power forecast errors distribution. Case studies performed on the PJM 5-bus system and IEEE 118-bus system verify the proposed method to improve the system security and reduce the cost especially under the high wind penetration levels. All the cases can be solved within several minutes for both the small and large cases which validates the efficiency of the proposed sparse matrix model. In addition, considering the spatial-temporal correlation of wind power forecast and the distributional robustness of wind power forecast error leads to a more reliable economic dispatch with lower system violations.
机译:风能的显着增加使系统运行必须考虑来自不同风力发电厂的功率预测的空间时间相关性。如何在实际系​​统调度中对这种时空相关性进行建模具有挑战性。在本文中,利用稀疏相关矩阵在发电调度模型中有效地建模了风电预测的时空相关性。为了获得可靠的经济调度(ED)解决方案,提出了一种新颖的,可调整的且分布鲁棒的机会约束多间隔最优潮流(ADRCC-MIOPF)模型。风力发电厂功率预测的时空相关性由稀疏相关协方差矩阵表示,该矩阵是从历史时间序列风力发电预测误差数据中获得的。将ADRCC-MIOPF模型中的机会约束转换为一组二阶锥(SOC)约束,其中机会约束中的可调系数控制ADRCC-MIOPF模型对风电预测误差分布的鲁棒性。在PJM 5总线系统和IEEE 118总线系统上进行的案例研究验证了所提出的方法可以提高系统安全性并降低成本,特别是在高风速下。无论大小,都可以在几分钟之内解决所有情况,这验证了所提出的稀疏矩阵模型的效率。此外,考虑到风能预报的时空相关性和风能预报误差的分布鲁棒性,可以在减少系统违规的情况下实现更可靠的经济调度。

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