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A Stochastic Dual Dynamic Programming Approach for Optimal Operation of DER Aggregators

机译:一种用于Der Aggregators的最佳操作的随机双动力编程方法

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The operation of aggregators of distributed energy resources (DER) is a highly complex task that is affected by numerous factors of uncertainty such as renewables injections, load levels and market conditions. However, traditional stochastic programming approaches neglect information around temporal dependency of the uncertain variables due to computational tractability limitations. This paper proposes a novel stochastic dual dynamic programming (SDDP) approach for the optimal operation of a DER aggregator. The traditional SDDP framework is extended to capture temporal dependency of the uncertain wind power output, through the integration of an n-order autoregressive (AR) model. This method is demonstrated to achieve a better trade-off between solution efficiency and computational time requirements compared to traditional stochastic programming approaches based on the use of scenario trees.
机译:分布式能源(DER)的聚合器的操作是一种高度复杂的任务,受到许多不确定性的因素的影响,例如可再生能源注入,负载水平和市场条件。然而,由于计算途径限制,传统的随机编程接近忽略不确定变量的时间依赖性的信息。本文提出了一种新型随机双动脉编程(SDDP)方法,用于DER聚合器的最佳操作。传统的SDDP框架延长以捕获不确定风电输出的时间依赖,通过集成N级自回归(AR)模型。与传统随机编程方法相比,通过基于场景树的传统随机编程方法相比,该方法证明了在解决方案效率和计算时间要求之间实现更好的权衡。

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