混合云架构下汽车系统能量优化弹性应用分布

Philipp Weber, Philipp Weiss, Dominik Reinhardt, S. Steinhorst
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引用次数: 3

摘要

用于流媒体、游戏或自动驾驶的现代车辆中资源密集型应用的增加导致其先进计算和连接硬件的能耗不断上升。特别是在电动汽车中,这会导致更高的硬件成本和更小的行驶里程。现代高档汽车使用分布式异构硬件,主要通过api与大型云后端进行通信。目前减少机载能耗的方法部分地卸载了应用程序,并利用了有限的网络连接假设到它们的后端。在本文中,我们提出了一种混合的电动和电子架构,通过使用云计算框架来管理车辆硬件。我们的混合云架构是本地车辆云和大型数据中心社区云的连接。我们提出了一种在线优化算法,将应用程序从车载ecu转移到数据中心服务器,反之亦然。优化算法在满足数据速率限制、应用策略和资源限制等预测动态约束的同时,使局部能耗最小化。我们的方法比非预测方法平均高出16%,在最好的情况下高出21%,在最坏的情况下,两者的表现都一样好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-Optimized Elastic Application Distribution for Automotive Systems in Hybrid Cloud Architectures
The increase of resource-intensive applications in modern vehicles used for streaming, gaming or autonomous driving results in rising energy-consumption of its advanced computing and connectivity hardware. Especially in electric vehicles, this leads to much higher hardware costs and a decreased vehicle range. Modern premium cars use distributed heterogeneous hardware and mostly communicate via APIs to large cloud backends. Current approaches to reduce on-board energy consumption offload applications partly and make use of limited network connectivity assumptions to their backends. In this paper, we propose a hybrid electric and electronic architecture that manages vehicle hardware by using cloud computing frameworks. Our hybrid cloud architecture is a connection of the local vehicle cloud and a large data centre community cloud. We propose an online optimization algorithm that shifts applications from on-board ECUs to data centre servers and vice-versa. The optimization algorithm minimizes the local energy-consumption while satisfying predicatively dynamic constraints like data rate limitations, application policies and resource limitations. Our approach outperforms the non-predictive approach in average by 16%, in the best case by 21% and in the worst case both behave equally well.
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