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Economical Energy Storage Systems Scheduling Based on Load Forecasting Using Deep Learning

机译:基于深度学习的负荷预测的经济型储能系统调度

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Energy storage system is a key device for load-leveling which can shift the load from on-peak time to offpeak time in time-of-use. Customers of the behind-the-meter energy storage system can schedule charging/discharging of energy storage system for electricity cost saving at peak-load. In order to maximize the reduction of electricity cost, smart charging and discharging algorithms based on accurate load forecasting are needed. This paper proposes an energy storage system scheduling algorithm based on water filling optimization followed by short-term load forecasting by using long short-term memory neural network. The proposed method is expected to reduce electricity cost for customers in behind-the-meter by scheduling charging and discharging of an energy storage system. For practical implementation, the satisfaction index of the optimization and the daily electricity cost are compared according to the change of scheduling intervals. Finally, case studies are conducted to confirm the effectiveness of the proposed method.
机译:能量存储系统是负载调平的关键装置,可以将负载从峰值时间转换到脱落时间以便在使用时间内。估计仪储能系统的客户可以安排能量存储系统的充电/放电,以便在峰值负载下节省电力成本。为了最大限度地提高电力成本的降低,需要基于精确负载预测的智能充电和放电算法。本文提出了一种基于水填充优化的能量存储系统调度算法,然后通过使用长短期内存神经网络进行短期负荷预测。通过调度能量存储系统的充电和放电,建议的方法预计将降低仪表后面的客户的电力成本。为了实际实施,根据调度间隔的变化进行比较优化的满意度和日常电力成本。最后,进行案例研究以确认提出的方法的有效性。

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