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Valuing Knowledge, Information and Agency in Multi-agent Reinforcement Learning: A Case Study in Smart Buildings

机译:在多智能经纪增强学习中重视知识,信息和机构:智能建筑的案例研究

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Increasing energy efficiency in buildings can reduce costs and emissions substantially. Historically, this has been treated as a singleagent optimization problem. However, many buildings utilize the same types of thermal equipment e.g. electric heaters and hot water vessels. During operation, occupants in these buildings interact with the equipment differently thereby accelerating state-space exploration. Reinforcement learning agents learn from these interactions, recorded as sensor data, to optimize the overall energy efficiency. However, if these agents operate at a household level, they can not exploit the replicated structure in the problem. In this paper, we demonstrate that multi-agent collaboration can improve control by exploring the state-space better. We also investigate trade-offs between integrating human knowledge and additional sensors. Results show that savings of over 40% are possible with collaborative multi-agent systems making use of either expert knowledge or additional sensors with no loss of occupant comfort. We find that such multi-agent systems outperform comparable single agent systems.
机译:增加建筑物的能效可以大大降低成本和排放。从历史上看,这被视为一个单一的优化问题。然而,许多建筑利用相同类型的热设备。电加热器和热水容器。在操作期间,这些建筑物中的乘员与设备相互作用,从而加速了国家空间探索。强化学习代理从这些交互中学习,记录为传感器数据,以优化整体能源效率。但是,如果这些代理商在家庭级别运行,则无法利用问题的复制结构。在本文中,我们证明,多代理协作可以通过更好地探索状态空间来改善控制。我们还调查整合人类知识和其他传感器之间的权衡。结果表明,采用专业知识或其他传感器的协作多助手系统,可以节省超过40%的节省,这是没有乘员舒适性的额外传感器。我们发现这种多功能系统优于相当的单个代理系统。

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