Model predictive control for energy storage systems in a network with high penetration of renewable energy and limited export capacity

P. Zeng, Zhi Wu, Xiao-Ping Zhang, Caihao Liang, Yantao Zhang
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引用次数: 17

Abstract

This paper considers a novel control strategy for energy storage systems in networks with high penetration of renewable power and limited network capacity based on the combination of model predictive control (MPC) and hierarchical optimization. The objective is to maximize the output, hence the income, from the renewable generation using appropriate charging and discharging control strategy for energy storage systems based on the prediction of renewable power output, demand and network capability in future time horizon. The battery energy storage system can be used to smooth out the variations in renewable energy such as, wind power, and maximize renewable power output whilst meeting the system constraints. Furthermore network interconnection capacity with other systems must be honored. Network interconnection capability depends on many factors including demand and flexible/inflexible generation within the network and also the external systems. In this paper, we show how this problem can be formulated as an optimization problem, leading directly to the design of a model predictive controller. In this scheme, the optimal control for energy storage systems is implemented in a receding time horizon. The method is applied as a case study to the modified IEEE-30 bus test system and northwest power grid of China.
高可再生能源渗透率和有限输出容量电网中储能系统的模型预测控制
本文提出了一种基于模型预测控制和层次优化相结合的可再生能源渗透率高、网络容量有限的储能系统控制策略。目标是根据对未来时间范围内可再生能源的输出、需求和网络能力的预测,采用适当的储能系统充放电控制策略,使可再生能源发电的输出最大化,从而实现收益最大化。电池储能系统可以平滑风能等可再生能源的变化,在满足系统约束的前提下实现可再生能源输出的最大化。此外,必须尊重与其他系统的网络互连能力。网络互连能力取决于许多因素,包括网络内部和外部系统的需求和灵活/不灵活的发电。在本文中,我们展示了如何将该问题表述为优化问题,从而直接导致模型预测控制器的设计。在该方案中,储能系统的最优控制是在一个后退的时间范围内实现的。并以改进后的IEEE-30母线测试系统和西北电网为例进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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