Dynamic Energy Scheduling Algorithm for an End-user with Energy Storage Device to Save Total Costs

Quanjing Zhang, Didi Liu, Hongbin Chen, Junxiu Liu, Cong Hu
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Abstract

Energy storage can save end user costs in local energy markets that have time-varying pricing. However, energy storage device incur fixed acquisition costs which depend on their capacity. End user is faced with sophisticated energy scheduling tradeoffs in the local energy markets to account for these costs. In this paper, we consider a typical energy usage scenario where the end user draws energy from multiple types of energy supplies: the local power provider, the external power grid, and the user’s own energy storage device. Our objective is to minimize the user’s total costs (the total of purchased energy and storage) while meeting their energy demand in each time slot. Furthermore, the end user’s energy demand, the local power supplier’s prices, and the external power grid prices all vary over time. To deal with this variability, we formulated the energy scheduling problem as a stochastic optimization. We propose a dynamic algorithm based on Lyapunov optimization, and it is theoretically proved that the proposed algorithm can make the optimization target infinitely close to optimum. Finally, the effectiveness of the proposed algorithm is verified by simulation comparison. The algorithm provides a tool for end user energy scheduling where the user is equipped with energy storage device.
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具有储能设备的终端用户节省总成本的动态能量调度算法
能源存储可以在具有时变定价的当地能源市场中节省最终用户的成本。然而,储能设备的收购成本是固定的,这取决于它们的容量。最终用户在当地能源市场面临复杂的能源调度权衡,以考虑这些成本。在本文中,我们考虑了一个典型的能源使用场景,其中最终用户从多种类型的能源供应中获取能源:本地电力供应商、外部电网和用户自己的储能设备。我们的目标是最小化用户的总成本(购买的能源和存储的总成本),同时满足他们在每个时间段的能源需求。此外,终端用户的能源需求、当地电力供应商的价格和外部电网的价格都随着时间的推移而变化。为了处理这种可变性,我们将能量调度问题表述为随机优化问题。提出了一种基于Lyapunov优化的动态算法,并从理论上证明了该算法可以使优化目标无限接近最优。最后,通过仿真对比验证了所提算法的有效性。该算法为终端用户配备储能装置的能量调度提供了工具。
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