自适应移动应用的网络预测

Ramya Sri Kalyanaraman, Yu Xiao, Antti Ylä-Jääski
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引用次数: 1

摘要

对无线网络条件的预测使移动应用程序能够在不同的网络环境中重新配置,从而可能获得更多的能源节约和更好的服务质量。在本文中,我们重点研究了网络信号强度的预测及其在基于网络的电力自适应中提高节能的潜力。基于从不同的现实网络环境中收集的数据集,我们评估了三种预测算法的性能,即ARIMA,线性回归和NFI。随后,我们将网络预测算法应用于自适应文件下载,并比较了它们在节能方面的有效性。结果表明,与无预测的适应相比,利用预测的适应可节省14.7%的能量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Prediction for Adaptive Mobile Applications
Prediction of wireless network conditions enables the reconfiguration of mobile applications in a varying network environment, which in turn might gain more energy savings and better quality of service. In this paper, we focus on the prediction of network signal strength and its potential of improving energy saving in network-based power adaptations. We evaluate the performance of three prediction algorithms, namely, ARIMA, Linear regression and NFI, based on the data sets collected from diverse real-life network environments. Later, we apply the network prediction algorithms to adaptive file download, and compare their effectiveness in terms of energy savings. The results show that the adaptations using prediction could save up to 14.7% more energy when compared to prediction-less adaptation.
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