开发节能移动嵌入式系统的时空和设备环境

Brad K. Donohoo, Chris Ohlsen, S. Pasricha, Charles W. Anderson
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引用次数: 19

摘要

在过去的十年中,移动计算已经演变成人类通信、商业和社会互动的主要形式。不幸的是,新的环境智能和移动设备上的协作技术的能源需求大大超过了现代能源存储能力。本文提出了几种利用时空和设备上下文来预测可以优化移动嵌入式系统能耗的设备接口配置的新技术。这些技术包括线性判别分析、线性逻辑回归、神经网络非线性逻辑回归和k近邻的变体,并在现实世界使用研究的合成和用户痕迹上进行了探索和比较。实验结果表明,神经网络和k近邻算法的预测成功率高达90%,比先前工作的预测策略提高了约50%。此外,与之前最先进的节能位置传感技术相比,平均节省了24%的能源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting spatiotemporal and device contexts for energy-efficient mobile embedded systems
Within the past decade, mobile computing has morphed into a principal form of human communication, business, and social interaction. Unfortunately, the energy demands of newer ambient intelligence and collaborative technologies on mobile devices have greatly overwhelmed modern energy storage abilities. This paper proposes several novel techniques that exploit spatiotemporal and device context to predict device interface configurations that can optimize energy consumption in mobile embedded systems. These techniques, which include variants of linear discriminant analysis, linear logistic regression, non-linear logistic regression with neural networks, and k-nearest neighbor are explored and compared on synthetic and user traces from real-world usage studies. The experimental results show that up to 90% successful prediction is possible with neural networks and k-nearest neighbor algorithms, improving upon prediction strategies in prior work by approximately 50%. Further, an average improvement of 24% energy savings is achieved compared to state-of-the-art prior work on energy-efficient location-sensing.
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