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Genetic based reinforcement learning load control for smart grids

机译:基于遗传的智能电网强化学习负荷控制

摘要

As the improvement of smart grids, the customer participation has reinvigorated interest in demand-side features such as load control for domestic users. A genetic based reinforcement learning (RL) load controller is proposed. The genetic is used to adjust the parameters of the controller. The RL algorithm, which is independent of the mathematic model, shows the particular superiority in load control. By means of learning procedures, the proposed controller can learn to take the best actions to regulate the energy usage for equipments with the features of high comfortable for energy usage and low electric charge meanwhile. Simulation results show that the proposed load controller can promote the performance energy usage in smart grids.
机译:随着智能电网的改进,客户的参与重新激发了对需求方功能(如家庭用户的负载控制)的兴趣。提出了一种基于遗传的强化学习(RL)负荷控制器。遗传用于调整控制器的参数。与数学模型无关的RL算法显示了负载控制方面的特殊优势。通过学习程序,所提出的控制器可以学习采取最佳措施来调节设备的能耗,同时具有能耗舒适度高和电量低的特点。仿真结果表明,所提出的负荷控制器可以提高智能电网的性能能耗。

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