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Optimizing daily operation of battery energy storage systems under real-time pricing schemes

机译:在实时定价方案下优化电池储能系统的日常运行

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Modernization of electricity networks is currently being carried out using the concept of the smart grid; hence, the active participation of end-user consumers and distributed generators will be allowed in order to increase system efficiency and renewable power accommodation. In this context, this paper proposes a comprehensive methodology to optimally control lead-acid batteries operating under dynamic pricing schemes in both independent and aggregated ways, taking into account the effects of the charge controller operation, the variable efficiency of the power converter, and the maximum capacity of the electricity network. A genetic algorithm is used to solve the optimization problem in which the daily net cost is minimized. The effectiveness and computational efficiency of the proposed methodology is illustrated using real data from the Spanish electricity market during 2014 and 2015 in order to evaluate the effects of forecasting error of energy prices, observing an important reduction in the estimated benefit as a result of both factors: 1) forecasting error and 2) power system limitations.
机译:当前正在使用智能电网的概念进行电网现代化。因此,将允许最终用户消费者和分布式发电机的积极参与,以提高系统效率和可再生电力供应。在此背景下,本文提出了一种全面的方法,以考虑到充电控制器操作,功率转换器的可变效率以及电池充电效率的影响,以独立和汇总方式最优控制动态定价方案下运行的铅酸电池。电网的最大容量。遗传算法用于解决每日净成本最小化的优化问题。为了评估能源价格的预测误差的影响,使用了西班牙电力市场在2014年和2015年期间的真实数据,说明了所提出方法的有效性和计算效率,同时观察到由于这两个因素造成的估计收益的显着降低:1)预测误差和2)电力系统局限性。

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