一种面向自组织移动云的随机工作负载分配方法

Tram Truong Huu, C. Tham, D. Niyato
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引用次数: 29

摘要

像智能手机这样的移动设备已经成为许多用户的首选计算设备,预示着移动计算时代的到来。许多应用程序都是为了在移动设备上运行而开发的。然而,尽管移动设备的处理速度和无线网络速度有所提高,但它们的资源在处理能力和电池寿命方面仍然有限。有些应用程序,特别是计算密集型的应用程序,如多媒体处理,通常需要的资源超出移动设备的承受能力。为了克服这一障碍,我们提出了一种移动自组织云,在这种云中,移动设备可以访问来自其他来源的资源,例如附近的移动设备,以共享工作负载。这个概念带来的困难是附近设备的移动性,即相邻设备可能在将其结果传回源节点之前移动到范围之外。在本文中,我们提出了一种考虑到协作设备之间连接时间随机性的工作负载分配方案。为了应对这种随机性,我们采用了一种多阶段随机规划方法,该方法能够采取后验追索行动来补偿不准确的预测。通过数值研究和仿真对该方案的性能进行了评价。结果表明,随机规划方法优于单纯方案和仅考虑平均连接时间的基线方案。
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A Stochastic Workload Distribution Approach for an Ad Hoc Mobile Cloud
Mobile devices like smartphones have become the computing device of choice for many users, heralding the era of mobile computing. Many applications have been developed to run on mobile devices. However, despite the increased processing and wireless network speeds of mobile devices, their resources are still limited in terms of processing capacity and battery lifetime. Some applications, in particular computationally intensive ones such as multimedia processing, often require more resources than a mobile device can afford. To overcome this hurdle, we propose a mobile ad-hoc cloud in which a mobile device can access resources from other sources, such as nearby mobile devices, to share the workload. The difficulty that arises with this concept is the mobility of nearby devices, i.e. A neighbouring device may move out of range before it can communicate its results back to the source node. In this paper, we propose a workload distribution scheme among these nearby mobile devices that takes into account the randomness of the connection time between cooperating devices. In order to cope with this randomness, we adopt a multi-stage stochastic programming approach which is able to take posterior recourse actions to compensate for inaccurate predictions. Numerical studies and simulations were carried out to evaluate the performance of this scheme. The results show that the stochastic programming approach outperforms a naive scheme and a baseline scheme that only considers the average connection time.
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