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Optimal trade-off planning for wind-solar power day-ahead scheduling under uncertainties

机译:不确定条件下风光发电提前调度的最优权衡规划

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This paper proposes a bi-probability-interval optimization (BPIO) model for wind-solar power day-ahead scheduling (WSP-DAS) under uncertainties, which aims to obtain the optimal trade-off planning by balancing profit and risk brought by uncertain wind power and solar power penetration. First, the confidence intervals of wind power and solar power are formulated under given confidence levels of wind speed and solar radiation, respectively. Then, the distribution probabilities of each wind power and solar power are obtained accordingly based on the cumulative distribution function (CDF) of wind speed and solar radiation, respectively. Finally, the framework of BPIO based WSP-DAS is developed to balance the profit and risk, considering a conditional expectation based optimization objective. Comparative experiments are conducted on two day-ahead scheduling systems under the dynamic uncertain wind and solar power penetration. The empirical results fully demonstrate that the proposed BPIO can significantly improve the reliability and effectiveness of evaluating WSP-DAS, in terms of obtaining a trade-off planning between profit and risk against the integration of uncertain wind-solar power. (C) 2017 Elsevier Ltd. All rights reserved.
机译:针对不确定性因素,提出了一种双概率区间优化(BPIO)模型用于风电日提前调度(WSP-DAS)模型,旨在通过平衡风电带来的收益和风险来获得最优的权衡方案。功率和太阳能渗透率。首先,分别在给定的风速和太阳辐射的置信度下制定风能和太阳能的置信区间。然后,分别基于风速和太阳辐射的累积分布函数(CDF)分别获得每个风能和太阳能的分布概率。最后,考虑到基于条件期望的优化目标,开发了基于BPIO的WSP-DAS框架来平衡利润和风险。在动态不确定的风能和太阳能渗透率下,在两个提前一天的调度系统上进行了对比实验。实证结果充分证明,提出的BPIO可以显着提高评估WSP-DAS的可靠性和有效性,从而获得在收益和风险之间权衡不平衡风电一体化的计划。 (C)2017 Elsevier Ltd.保留所有权利。

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