基于强化学习的光伏与电池并网微电网能量管理系统

R. Kosuru, Shichao Liu, H. Chaoui
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引用次数: 2

摘要

由于可再生能源是间歇性的,会导致配电变压器过载,因此设计一个独立的可再生能源系统来满足负荷需求总是很复杂的。然而,在设计中加入电池系统将有助于提高效率,减轻电压波动和线路负载的问题。本文以能源分配管理和满足负荷需求为目标,设计了光伏电池并网系统。在不需要知道先验系统动力学的情况下,基于负载需求和光伏发电系统产生的电量,采用Q-learning算法控制电池充放电特性(充电状态)。为了有效地利用能源和提高电池的寿命周期,提出了一种分配方案。因此,所提出的策略不仅保持了存储单元的充电状态,而且分配了光伏电源的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Reinforcement Learning based Energy Management System for a PV and Battery Connected Microgrid System
Design of a standalone renewable system to meet the load demand is always complex, as renewable sources are intermittent in nature, which causes overloading on the distribution transformer. However, incorporating a battery system in the design would help in improving the efficiency and mitigate the problem of fluctuating voltages and line loadings. In this paper, a grid-connected PV and battery systems are designed with an objective to manage the energy distribution and meet the load demand. Without the need to know the priori system dynamics, a Q-learning algorithm is used for controlling the battery charge and discharge characteristics (state of charge) based on the load demand and power generated from the PV system. An allocation scheme is developed for the effective usage of the energy sources as well as to increase the life cycle of the battery. Thus, the proposed strategy not only maintains the state of charge of the storage unit but also allocates the usage of the PV source.
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