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A Near-Optimal Model-Based Control Algorithm for Households Equipped With Residential Photovoltaic Power Generation and Energy Storage Systems

机译:配备住宅光伏发电和储能系统的家庭的基于最优模型的控制算法

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摘要

Integrating residential photovoltaic (PV) power generation and energy storage systems into the Smart Grid is an effective way of reducing fossil fuel consumptions. This has become a particularly interesting problem with the introduction of dynamic electricity energy pricing, since consumers can use their PV-based energy generation and controllable energy storage devices for peak shaving on their power demand profile, thereby minimizing their electricity bill. A realistic electricity pricing function is considered with billing period of a month, comprising both an energy price component and a demand price component. Due to the characteristics of electricity price function and energy storage capacity limitation, the residential storage control algorithm should 1)utilize PV power generation and load power consumption predictions and 2)account for various energy loss components during system operation, including energy loss components due to rate capacity effect in the storage system and power dissipation of the power conversion circuitry. A near-optimal storage control algorithm is proposed accounting for these aspects. The near-optimal algorithm, which controls the charging/discharging of the storage system, is effectively implemented by solving a convex optimization problem at the beginning of each day with polynomial time complexity. For further improvement, the reinforcement learning technique is adopted to adaptively determine the residual energy in the storage system at the end of each day in a billing period.
机译:将住宅光伏(PV)发电和能量存储系统集成到智能电网中是减少化石燃料消耗的有效方法。由于引入了动态电能定价,这已经成为一个特别有趣的问题,因为消费者可以使用基于PV的能量产生和可控储能设备对他们的电力需求状况进行调峰,从而将电费降至最低。考虑一个现实的电价函数,其计费周期为一个月,包括能源价格部分和需求价格部分。由于电价函数和储能容量限制的特性,住宅存储控制算法应:1)利用光伏发电量和负荷用电量预测; 2)考虑系统运行过程中的各种能量损失成分,包括由于速率影响存储系统中的容量以及功率转换电路的功耗。考虑到这些方面,提出了一种接近最佳的存储控制算法。通过在每天开始时以多项式时间复杂度解决凸优化问题,可以有效地实现控制存储系统充电/放电的近似最佳算法。为了进一步改进,采用强化学习技术,在计费周期的每天结束时自适应确定存储系统中的剩余能量。

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