Multi-objective Reinforcement Learning based approach for User-Centric Power Optimization in Smart Home Environments

Saurabh Gupta, Siddhant Bhambri, Karanveer Dhingra, Arun Balaji Buduru, P. Kumaraguru
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引用次数: 3

Abstract

Smart homes require every device inside them to be connected with each other at all times, which leads to a lot of power wastage on a daily basis. As the devices inside a smart home increase, it becomes difficult for the user to control or operate every individual device optimally. Therefore, users generally rely on power management systems for such optimization but often are not satisfied with the results. In this paper, we present a novel multi-objective reinforcement learning framework with two-fold objectives of minimizing power consumption and maximizing user satisfaction. The framework explores the trade-off between the two objectives and converges to a better power management policy when both objectives are considered while finding an optimal policy. We experiment on real-world smart home data, and show that the multi-objective approaches: i) establish trade-off between the two objectives, ii) achieve better combined user satisfaction and power consumption than single-objective approaches. We also show that the devices that are used regularly and have several fluctuations in device modes at regular intervals should be targeted for optimization, and the experiments on data from other smart homes fetch similar results, hence ensuring transfer-ability of the proposed framework.
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基于多目标强化学习的智能家居环境中以用户为中心的电源优化方法
智能家居要求其内部的每个设备始终相互连接,这导致了每天大量的电力浪费。随着智能家居中设备的增加,用户很难以最佳方式控制或操作每个单独的设备。因此,用户通常依靠电源管理系统进行这种优化,但往往对结果不满意。在本文中,我们提出了一种新的多目标强化学习框架,该框架具有最小化功耗和最大化用户满意度的双重目标。该框架探索两个目标之间的权衡,并在寻找最佳策略时同时考虑两个目标,从而收敛到更好的电源管理策略。我们对现实世界的智能家居数据进行了实验,并表明多目标方法:i)在两个目标之间建立权衡,ii)比单目标方法获得更好的用户满意度和功耗组合。我们还表明,定期使用的设备和设备模式定期波动的设备应该作为优化的目标,并且对来自其他智能家居的数据进行的实验获得了类似的结果,从而确保了所提出框架的可移植性。
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