多居民智能家居中移动感知资源管理的合作学习框架

Nirmalya Roy, A. Roy, Sajal K. Das, K. Basu
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引用次数: 21

摘要

普适(无处不在)计算的本质在于创建充满计算和通信功能的智能环境,同时与人类用户优雅地集成在一起。“上下文感知”可能是这种智能计算范式最重要的特征。在任何时候,居民的流动性和活动在形成环境方面都起着重要作用。为了提取智能计算环境的最佳性能和效率,需要一个跨多个用户的技术独立的上下文感知平台。在本文中,我们开发了一个基于动态合作强化学习技术的多居民智能家居中移动感知资源(特别是能源消耗)管理框架。居民的流动性给他的位置和活动带来了不确定性。利用提出的基于合作博弈论的框架,目前在房子里的所有居民都试图以与他们相关的效用函数的形式最小化这种整体不确定性。效用函数的联合优化对应于向纳什均衡的收敛,有助于准确预测居民未来的位置和活动。这导致了自动设备和房屋温度的自适应控制,从而为居民提供了一个友好的环境和足够的舒适度。仿真结果表明,该框架能够自适应控制智能环境,同时降低能耗,提高舒适性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A cooperative learning framework for mobility-aware resource management in multi-inhabitant smart homes
The essence of pervasive (ubiquitous) computing lies in the creation of smart environments saturated with computing and communication capabilities, yet gracefully integrated with human users. 'Context Awareness' is perhaps the most important feature of such an intelligent computing paradigm. The mobility and activity of the inhabitants play significant roles in forming the context at any instance of time. In order to extract the best performance and efficacy of smart computing environments, one needs a technology-independent, context-aware platform spanning over multiple inhabitants. In this paper, we have developed a framework for mobility-aware resource (in particular, energy consumption) management in a multi-inhabitant smart home, based on a dynamic, cooperative reinforcement learning technique. The inhabitants' mobility creates uncertainty of his location and activity. Using the proposed cooperative game-theory based framework, all the inhabitants currently present in the house attempt to minimize this overall uncertainty in the form of utility functions associated with them. Joint optimization of the utility function corresponds to the convergence to Nash equilibrium and helps in accurate prediction of inhabitants' future locations and activities. This results in adaptive control of automated devices and temperature of the house, thus providing an amicable environment and sufficient comfort to the inhabitants. Simulation results point out that our framework can adaptively control the smart environment, while reducing the energy consumption and enhancing the comfort.
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