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Battery Optimization in Microgrids using Markov Decision Process Integrated with Load and Solar forecasting

机译:结合负荷和太阳预报的马尔可夫决策过程在微电网中优化电池

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Rising climatic concerns call for unconventiona/renewable energy sources which reduce the carbon footprint. Microgrids with battery systems that integrate a variety of renewable energy resources play a key role in utilizing these energies in a more efficient and environmentally friendly manner. This paper presents a framework based on Markov Decision Process (MDP) integrated with load and solar forecasting to derive an optimal charging/discharging action of battery with rolling horizon implementation. The load forecasting is implemented using time series model and PV output forecasting is implemented using regression model. The control algorithm is developed to reduce the monthly billing cost by reducing the peak load demand while also maintaining the state of charge of the battery. The presented work simulates the control algorithm for one month based on historic load and solar data. A simulation covering one month yielded results showing that a microgrid with battery bank controlled by the MDP algorithm reduces the maximum load demand by 23.3%, leading to a cost saving of 33.1%.
机译:日益上升的气候问题要求采用非常规/可再生能源,以减少碳足迹。带有集成了各种可再生能源的电池系统的微电网在以更有效和环保的方式利用这些能源方面发挥着关键作用。本文提出了一个基于马尔可夫决策过程(MDP)的框架,该框架结合了负荷和太阳能预测,可以通过滚动实现来得出最佳的电池充放电行为。使用时间序列模型实施负荷预测,并使用回归模型实施光伏发电预测。开发该控制算法的目的是通过降低峰值负载需求,同时保持电池的充电状态,从而降低每月的计费成本。提出的工作基于历史负荷和太阳能数据模拟了一个月的控制算法。历时一个月的模拟结果表明,由MDP算法控制的带有电池组的微电网将最大负载需求降低了23.3%,从而节省了33.1%的成本。

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