网络移动设备上复杂物理系统的数值分析

Christoph Dibak, Frank Dürr, K. Rothermel
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引用次数: 6

摘要

最近,一类新的移动应用程序出现了,它考虑了物理现象的行为。这类应用的突出例子包括增强现实应用,在移动设备或移动网络物理系统(如自动驾驶汽车或机器人)上可视化物理过程。通常,这些应用程序需要求解偏微分方程(PDE)来模拟物理系统的行为。数值求解这些PDE有两种基本策略:(1)将所有计算卸载到远程服务器上;(2)在资源受限的移动设备上求解PDE。然而,这两种策略都有严重的缺点。如果移动设备断开连接,卸载将失败,并且资源限制要求降低解决方案的质量。因此,我们提出了一种使用混合策略的移动模拟新方法,该策略对通信故障具有鲁棒性,并且仍然可以从强大的服务器资源中受益。该方法的基本思想是基于使用马尔可夫链对无线链路可用性的预测,动态地决定PDE求解器的位置。我们基于真实蜂窝网络和真实移动设备的测量测试表明,与纯卸载方法相比,该方法能够在超过61%的情况下保持最后期限限制,同时与简化方法相比节省高达74%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。
Numerical Analysis of Complex Physical Systems on Networked Mobile Devices
Recently, a new class of mobile applications has appeared that takes into account the behavior of physical phenomenon. Prominent examples of such applications include augmented reality applications visualizing physical processes on a mobile device or mobile cyber-physical systems like autonomous vehicles or robots. Typically, these applications need to solve partial differential equations (PDE) to simulate the behavior of a physical system. There are two basic strategies to numerically solve these PDEs: (1) offload all computations to a remote server, (2) solve the PDE on the resource-constrained mobile device. However, both strategies have severe drawbacks. Offloading will fail if the mobile device is disconnected, and resource constraints require to reduce the quality of the solution. Therefore, we propose a new approach for mobile simulations using a hybrid strategy that is robust to communication failures and can still benefit from powerful server resources. The basic idea of this approach is to dynamically decide on the placement of the PDE solver based on a prediction of the wireless link availability using Markov Chains. Our tests based on measurement in real cellular networks and real mobile devices show that this approach is able to keep deadline constraints in more than 61 % of the cases compared to a pure offloading approach, while saving up to 74 % of energy compared to a simplified approach.
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