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Stochastic dynamic programming approach to managing power system uncertainty with distributed storage

机译:分布式存储管理电力系统不确定性的随机动态规划方法

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摘要

Wind integration in power grids is challenging because of the uncertain nature of wind speed. Forecasting errors may have costly consequences. Indeed, power might be purchased at highest prices to meet the load, and in case of surplus, power may be wasted. Energy storage may provide some recourse against the uncertainty of wind generation. Because of their sequential nature, in theory, power scheduling problems may be solved via stochastic dynamic programming. However, this scheme is limited to small networks by the so-called curse of dimensionality. This paper analyzes the management of a network composed of conventional power units and wind turbines through approximate dynamic programming, more precisely stochastic dual dynamic programming. A general power network model with ramping constraints on the conventional generators is considered. The approximate method is tested on several networks of different sizes. The numerical experiments also include comparisons with classical dynamic programming on a small network. The results show that the combination of approximation techniques enables to solve the problem in reasonable time.
机译:由于风速的不确定性,电网中的风能集成具有挑战性。预测错误可能会造成重大损失。实际上,可以以最高的价格购买电力来满足负荷,并且在有剩余的情况下,可能会浪费电力。储能可以为风力发电的不确定性提供某种资源。由于其顺序性质,理论上,可以通过随机动态规划解决功率调度问题。但是,由于所谓的维度诅咒,该方案仅限于小型网络。本文通过近似动态规划,更准确地说是随机双重动态规划,分析了由常规动力装置和风力涡轮机组成的网络的管理。考虑了常规发电机上具有斜坡约束的通用电网模型。在几种不同大小的网络上测试了近似方法。数值实验还包括在小型网络上与经典动态编程的比较。结果表明,近似技术的组合能够在合理的时间内解决问题。

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