Towards Very Low-Power Mobile Terminals through Optimized Computational Offloading

Hergys Rexha, S. Lafond, G. Rigazzi, Jani-Pekka Kainulainen
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Abstract

Energy consumption is a major issue for modern embedded mobile computing platforms, and with new technological developments, such as IoT and Edge/Fog computing, the number of connected embedded mobile computing systems is rapidly increasing. Heterogeneous multi-core CPUs seek to improve the performance of these platforms, with a particular focus on energy efficiency. By using different techniques like DVFS, core mapping, and multi-threading, a substantial improvement in the achievable CPU energy efficiency level for Multi-processor system-on-chip(MPSoC) can be observed. However, controlling only the CPU power dissipation has a limited effect on the overall platform energy consumption. Other components of the platform, including memory, disk, and other peripherals, play an important role in the energy efficiency of the platform and need to be taken into account. The availability of different sleep strategies at various levels of the platform makes the energy efficiency issue even more complex. In this paper, we set the view of energy efficiency at the entire platform level and discuss computation offloading as a mechanism to help in reaching the optimal platform energy-efficient state. As an application, we consider object detection performed on several types of images to define when offloading is beneficial to the platform energy efficiency. We survey the energy efficiency of different neural network algorithms in an embedded environment, with the possibility to perform computation offloading, and discuss the obtained results concerning the level of object recognition accuracy provided by different neural networks.
通过优化计算卸载实现极低功耗移动终端
能源消耗是现代嵌入式移动计算平台的一个主要问题,随着物联网和边缘/雾计算等新技术的发展,连接的嵌入式移动计算系统的数量正在迅速增加。异构多核cpu寻求提高这些平台的性能,特别关注能源效率。通过使用不同的技术,如DVFS、核心映射和多线程,可以观察到多处理器片上系统(MPSoC)可实现的CPU能效水平的实质性改进。但是,仅控制CPU功耗对整个平台能耗的影响有限。平台的其他组件,包括内存、磁盘和其他外围设备,在平台的能源效率中起着重要作用,需要加以考虑。在平台的不同层次上,不同的睡眠策略的可用性使得能源效率问题变得更加复杂。在本文中,我们将能源效率的观点放在整个平台层面,并讨论了计算卸载作为一种机制,以帮助达到最佳的平台能源效率状态。作为一个应用,我们考虑在几种类型的图像上执行目标检测,以确定何时卸载有利于平台的能源效率。我们考察了不同的神经网络算法在嵌入式环境下的能量效率,以及执行计算卸载的可能性,并讨论了不同神经网络提供的目标识别精度水平的结果。
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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