Ahnn Jong Hoon, Potkonjak Miodrag
Department of Computer Science,UCLA and Cloud Research Lab, Samsung Information Systems America, Los Angeles, CA, 90034-4205, USA,
J Med Syst. 2013 Oct;37(5):9957. doi: 10.1007/s10916-013-9957-0. Epub 2013 Jul 30.
Although mobile health monitoring where mobile sensors continuously gather, process, and update sensor readings (e.g. vital signals) from patient's sensors is emerging, little effort has been investigated in an energy-efficient management of sensor information gathering and processing. Mobile health monitoring with the focus of energy consumption may instead be holistically analyzed and systematically designed as a global solution to optimization subproblems. This paper presents an attempt to decompose the very complex mobile health monitoring system whose layer in the system corresponds to decomposed subproblems, and interfaces between them are quantified as functions of the optimization variables in order to orchestrate the subproblems. We propose a distributed and energy-saving mobile health platform, called mHealthMon where mobile users publish/access sensor data via a cloud computing-based distributed P2P overlay network. The key objective is to satisfy the mobile health monitoring application's quality of service requirements by modeling each subsystem: mobile clients with medical sensors, wireless network medium, and distributed cloud services. By simulations based on experimental data, we present the proposed system can achieve up to 10.1 times more energy-efficient and 20.2 times faster compared to a standalone mobile health monitoring application, in various mobile health monitoring scenarios applying a realistic mobility model.
尽管移动健康监测(即移动传感器持续收集、处理并更新来自患者传感器的读数,如生命体征信号)正在兴起,但在传感器信息收集与处理的节能管理方面,相关研究仍较少。相反,以能耗为重点的移动健康监测可作为优化子问题的全局解决方案进行整体分析和系统设计。本文尝试分解非常复杂的移动健康监测系统,该系统中的层对应于分解后的子问题,并且它们之间的接口被量化为优化变量的函数,以便协调这些子问题。我们提出了一个分布式节能移动健康平台,称为mHealthMon,移动用户可通过基于云计算的分布式P2P覆盖网络发布/访问传感器数据。关键目标是通过对每个子系统进行建模来满足移动健康监测应用的服务质量要求:配备医疗传感器的移动客户端、无线网络介质和分布式云服务。通过基于实验数据的模拟,我们展示了在应用实际移动模型的各种移动健康监测场景中,与独立的移动健康监测应用相比,所提出的系统可实现高达10.1倍的节能效果以及快20.2倍的速度。