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Joint Computation Offloading and Radio Resource Allocations in Small-Cell Wireless Cellular Networks

机译:小单元无线蜂窝网络中的联合计算卸载和无线电资源分配

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摘要

Mobile computation offloading (MCO) is a technique that can help reduce energy consumption of mobile devices (MDs) by offloading their tasks to more powerful devices for execution. In MCO, the offloading decision for a task depends on availability of both communication and computation resource. In small cell cellular networks, cloudlet servers are usually co-located with the small base stations (SBSs). As a result, offloading decisions of the MDs are coupled with SBS associations, while strong overlapping coverage between the SBSs can result in complicated interference conditions in wireless transmissions that affect the offloading performance. In this paper, offloading decisions and SBS associations are jointly optimized with transmission power and channel assignments in a small cell cellular network. The objective is to minimize the total energy consumption of all MDs, subject to task’s latency constraints. The problem is first formulated as a mixed binary nonlinear programming problem, then transformed and solved using the general bender decomposition (GBD). A heuristic solution is proposed that recursively allows more MDs to make offloading decisions based on the current transmission conditions. Compared to using GBD, this solution results in much lower worst-case complexity, while achieving good energy performance for a wide range of system parameters.
机译:移动计算卸载(MCO)是一种技术,可以通过将其任务卸载到更强大的设备来帮助减少移动设备(MDS)的能耗。在MCO中,任务的卸载决策取决于通信和计算资源的可用性。在小型电池蜂窝网络中,Cloudlet服务器通常与小型基站(SBSS)共同定位。结果,MD的卸载决策与SBS关联耦合,而SBS之间的强重叠覆盖可能会导致影响卸载性能的无线传输中的复杂干扰条件。在本文中,卸载决策和SBS关联在小型电池蜂窝网络中与传输功率和信道分配联合优化。目标是最大限度地减少所有MDS的总能耗,受任务的延迟约束。首先将该问题制定为混合二进制非线性编程问题,然后使用普通弯剂分解(GBD)转换和解决。提出了一种启发式解决方案,其递归地允许更多MDS基于当前传输条件进行卸载决策。与使用GBD相比,该解决方案导致更低的最坏情况复杂性,同时为各种系统参数实现良好的能量性能。

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