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Optimal scheduling of energy consumptions for air conditioners in a smart community with renewables

机译:具有可再生能源的智能社区中空调的能耗优化调度

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This paper investigates optimal day-ahead energy consumptions of air conditioners in a smart community with wind-turbine and photovoltaic power generations. The smart community energy management system tends to minimize the purchased power and maximize the sold power from/to the utility grid with different time-of-use tariffs day-ahead. The community consists of inelastic loads and elastic loads. This paper considers the air conditioners as the elastic loads, which can be adjusted according to the time-of-use tariffs, day-ahead outdoor temperatures, wind power and photovoltaic powers. Because the day-ahead wind and photovoltaic power generations as well as outdoor temperatures and inelastic loads are forecasted, they are modeled by appropriate probability density functions. Monte Carlo simulation incorporating with the interior point algorithm was employed to gain the optimal hourly settings of indoor temperatures, which are within the comfort zone. Simulation results using typical days in summer and winter verify the applicability of the proposed method.
机译:本文调查了具有风力涡轮机和光伏电力的智能社区中空调的最佳消耗。智能社区能源管理系统倾向于最大限度地减少购买的电力,并通过不同的使用时间推迟,最大化从型电网的销售电力最大化。社区由无弹性负载和弹性负载组成。本文认为空调作为弹性载荷,可根据使用时间关税,日前户外温度,风力和光伏电量进行调整。由于预测了一天的风和光伏电力以及室外温度和非弹性负载,因此通过适当的概率密度函数建模。使用与内部点算法的蒙特卡罗模拟采用与内部点算法一起获得室内温度的最佳每小时环境,这在舒适区内。夏季和冬季使用典型天的仿真结果验证了该方法的适用性。

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