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Demonstrating model-based reinforcement learning for energy efficiency and demand response using hot water vessels in net-zero energy buildings

机译:演示基于模型的强化学习,在零净能耗建筑中使用热水容器提高能效和需求响应

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In this paper, we present a reinforcement learning framework to improve energy efficiency of domestic hot water provision using air source heat pumps. Simulations carried out using data from 40 houses shows 10-15% energy reduction, depending on occupant behavior. In absolute terms, this accounts to an energy reduction of about 150 kWh/a per house. The framework is extended to real world control, with energy savings of 27% demonstrated in a house over more than three months. We also explore the potential of using the same framework to provide demand response to the electric grid and find it to be asymmetric, i.e. positive flexibility (or upward regulation) is much higher than negative flexibility.
机译:在本文中,我们提出了一个强化学习框架,以使用空气源热泵提高生活热水供应的能源效率。使用来自40个房屋的数据进行的模拟显示,根据乘员的行为,能源消耗可减少10-15%。绝对而言,这意味着每所房屋每年可减少约150 kWh / a的能源。该框架已扩展到现实世界的控制中,在三个多月的时间里,一所房屋的节能量达到了27%。我们还探索了使用相同框架为电网提供需求响应的潜力,并发现它是不对称的,即正柔性(或向上调节)远高于负柔性。

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