Stochastic Dual Dynamic Programming to schedule energy storage units providing multiple services

O. Mégel, J. Mathieu, G. Andersson
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引用次数: 18

Abstract

When energy storage units, such as batteries, are installed to support photovoltaics and defer power system upgrades they are inactive or only partially used most of time. Their unused capacities could be used to provide frequency control, allowing them to generate additional revenues. However, the challenge is to decide how much of their energy and power capacities to allocate to either service. Photovoltaic generation profiles are difficult to forecast accurately, and frequency deviation is a highly stochastic process. This paper develops a Stochastic Dual Dynamic Programming (SDDP) approach to generate decision rules for determining how much capacity to assign to each service at each time step, depending on the time of day and the storage energy level. Unlike Stochastic Dynamic Programming (SDP), our approach does not require us to discretize the state and decision spaces. We show that, when storage efficiency is high, SDDP outperforms SDP, but when short computation times are required, SDP may be preferred. We also discuss challenges associated with using SDDP when storage efficiency is lower than unity. Finally, we show that the number of tuning parameters is lower for SDDP than for SDP, and that the relation between tuning parameters and policy quality is more intuitive for SDDP than for SDP.
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随机双动态规划用于调度提供多种服务的储能单元
当安装储能单元(如电池)以支持光伏发电并推迟电力系统升级时,它们大部分时间都处于非活动状态或仅部分使用。它们未使用的能力可以用来提供频率控制,使它们能够产生额外的收入。然而,面临的挑战是决定将多少能源和电力容量分配给这两种服务。光伏发电曲线难以准确预测,且频率偏差是一个高度随机的过程。本文提出了一种随机双动态规划(SDDP)方法来生成决策规则,以确定在每个时间步分配多少容量给每个服务,这取决于一天中的时间和存储能量水平。与随机动态规划(SDP)不同,我们的方法不需要将状态和决策空间离散化。我们表明,当存储效率高时,SDDP优于SDP,但当需要较短的计算时间时,SDP可能是首选。我们还讨论了当存储效率低于统一时使用SDDP所面临的挑战。最后,我们证明了SDDP的调优参数数量比SDP少,并且SDDP的调优参数与策略质量之间的关系比SDP更直观。
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