...
首页> 外文期刊>Sensors >Modeling Battery Behavior on Sensory Operations for Context-Aware Smartphone Sensing
【24h】

Modeling Battery Behavior on Sensory Operations for Context-Aware Smartphone Sensing

机译:为情景感知的智能手机感应在感觉操作上模拟电池行为

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Energy consumption is a major concern in context-aware smartphone sensing. This paper first studies mobile device-based battery modeling, which adopts the kinetic battery model (KiBaM), under the scope of battery non-linearities with respect to variant loads. Second, this paper models the energy consumption behavior of accelerometers analytically and then provides extensive simulation results and a smartphone application to examine the proposed sensor model. Third, a Markov reward process is integrated to create energy consumption profiles, linking with sensory operations and their effects on battery non-linearity. Energy consumption profiles consist of different pairs of duty cycles and sampling frequencies during sensory operations. Furthermore, the total energy cost by each profile is represented by an accumulated reward in this process. Finally, three different methods are proposed on the evolution of the reward process, to present the linkage between different usage patterns on the accelerometer sensor through a smartphone application and the battery behavior. By doing this, this paper aims at achieving a fine efficiency in power consumption caused by sensory operations, while maintaining the accuracy of smartphone applications based on sensor usages. More importantly, this study intends that modeling the battery non-linearities together with investigating the effects of different usage patterns in sensory operations in terms of the power consumption and the battery discharge may lead to discovering optimal energy reduction strategies to extend the battery lifetime and help a continual improvement in context-aware mobile services.
机译:能耗是情境感知型智能手机感知中的主要问题。本文首先研究了基于移动设备的电池建模,该模型在不同负载的电池非线性范围内采用了动态电池模型(KiBaM)。其次,本文分析了加速度计的能耗行为,然后提供了广泛的仿真结果,并提供了智能手机应用程序来检验所提出的传感器模型。第三,集成了一个马尔可夫奖赏过程以创建能耗曲线,并将其与感官操作及其对电池非线性的影响联系在一起。能耗曲线由感官操作期间的不同占空比和采样频率对组成。此外,在此过程中,每个配置文件的总能源成本由累积奖励表示。最后,针对奖励过程的发展提出了三种不同的方法,以通过智能手机应用程序来表示加速度传感器上不同使用模式与电池行为之间的联系。通过这样做,本文旨在实现由感官操作引起的功耗的优良效率,同时保持基于传感器使用情况的智能手机应用程序的准确性。更重要的是,这项研究旨在对电池非线性建模,并研究不同操作模式在感觉操作中的功耗和电池放电方面的影响,可能会导致发现最佳的节能策略,从而延长电池寿命并有助于上下文感知移动服务的持续改进。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号