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Gigawatt-hour scale savings on a budget of zero: Deep reinforcement learning based optimal control of hot water systems

机译:以零预算节省千兆瓦时规模:基于深度强化学习的热水系统最佳控制

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摘要

Energy consumption for hot water production is a major draw in high efficiency buildings. Optimizing this has typically been approached from a thermodynamics perspective, decoupled from occupant influence. Furthermore, optimization usually presupposes existence of a detailed dynamics model for the hot water system. These assumptions lead to suboptimal energy efficiency in the real world. In this paper, we present a novel reinforcement learning based methodology which optimizes hot water production. The proposed methodology is completely generalizable, and does not require an offline step or human domain knowledge to build a model for the hot water vessel or the heating element. Occupant preferences too are learnt on the fly. The proposed system is applied to a set of 32 houses in the Netherlands where it reduces energy consumption for hot water production by roughly 20% with no loss of occupant comfort. Extrapolating, this translates to absolute savings of roughly 200 kWh for a single household on an annual basis. This performance can be replicated to any domestic hot water system and optimization objective, given that the fairly minimal requirements on sensor data are met. With millions of hot water systems operational worldwide, the proposed framework has the potential to reduce energy consumption in existing and new systems on a multi Gigawatt-hour scale in the years to come. (C) 2017 Elsevier Ltd. All rights reserved.
机译:热水生产的能源消耗是高效建筑的一大吸引力。从热力学的角度出发,通常是从乘员的影响中分离出来进行优化的。此外,优化通常以热水系统的详细动力学模型为前提。这些假设导致现实世界中的次优能源效率。在本文中,我们提出了一种基于强化学习的新颖方法,可以优化热水生产。所提出的方法是完全可推广的,不需要离线步骤或人工知识就可以为热水容器或加热元件建立模型。乘员的喜好也可以随时获得。拟议的系统应用于荷兰的32栋房屋,可将热水生产的能耗降低20%左右,而不会降低乘员的舒适度。推断,这意味着单个家庭每年可以绝对节省约200 kWh。只要满足对传感器数据的最低要求,这种性能就可以复制到任何家用热水系统和优化目标中。在全球范围内有数百万个热水系统在运行的情况下,拟议的框架有潜力在未来几年内以数十亿千瓦时的规模减少现有系统和新系统的能耗。 (C)2017 Elsevier Ltd.保留所有权利。

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