Online estimation of the remaining energy capacity in mobile systems considering system-wide power consumption and battery characteristics

Donghwa Shin, Kitae Kim, N. Chang, Woojoo Lee, Yanzhi Wang, Q. Xie, Massoud Pedram
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引用次数: 31

Abstract

Emerging mobile systems integrate a lot of functionality into a small form factor with a small energy source in the form of rechargeable battery. This situation necessitates accurate estimation of the remaining energy in the battery such that user applications can be judicious on how they consume this scarce and precious resource. This paper thus focuses on estimating the remaining battery energy in Android OS-based mobile systems. This paper proposes to instrument the Android kernel in order to collect and report accurate subsystem activity values based on real-time profiling of the running applications. The activity information along with offline-constructed, regression-based power macro models for major subsystems in the smartphone yield the power dissipation estimate for the whole system. Next, while accounting for the rate-capacity effect in batteries, the total power dissipation data is translated into the battery's energy depletion rate, and subsequently, used to compute the battery's remaining lifetime based on its current state of charge information. Finally, this paper describes a novel application design framework, which considers the batterys state-of-charge (SOC), batterys energy depletion rate, and service quality of the target application. The benefits of the design framework are illustrated by examining an archetypical case, involving the design space exploration and optimization of a GPS-based application in an Android OS.
考虑全系统功耗和电池特性的移动系统剩余能量容量在线估计
新兴的移动系统集成了许多功能到一个小的形状因素与一个小的能源形式的可充电电池。这种情况需要准确估计电池中的剩余能量,以便用户应用程序可以明智地使用这种稀缺而宝贵的资源。因此,本文的重点是估算基于Android os的移动系统的剩余电池能量。本文提出对Android内核进行检测,以便在实时分析运行中的应用程序的基础上收集和报告准确的子系统活动值。智能手机中主要子系统的活动信息以及离线构建的、基于回归的功率宏观模型产生了整个系统的功耗估计。接下来,在考虑电池的倍率-容量效应的同时,将总功耗数据转换为电池的能量消耗率,然后根据电池当前的充电状态信息计算电池的剩余寿命。最后,本文描述了一种新的应用设计框架,该框架考虑了目标应用的电池荷电状态(SOC)、电池能量消耗率和服务质量。设计框架的好处是通过检查一个典型案例来说明的,该案例涉及Android操作系统中基于gps的应用程序的设计空间探索和优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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