MCC环境下能量和延迟感知的计算卸载方案

Farhan Sufyan, Mohd Sameen Chishti, Amit Banerjee
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摘要

计算卸载是一种利用云资源来维护在资源受限的智能设备上执行的计算密集型应用程序的QoS的技术。研究人员提出了各种基于分析的卸载框架,以最大限度地减少执行延迟并延长sd的电池寿命。大多数这些卸载策略依赖于无限云资源的可用性来旋转独立的vm来分析sd,这可能不是处理sd不断增长的应用程序需求的有效方法。为了解决这个问题,我们研究了一个通用的移动云计算(MCC)计算卸载框架,用于处理大量sd产生的计算需求。该框架利用合适的排队模型对SDs产生的流量进行模拟,并制定非线性多目标优化问题,以最小化SDs的能耗和执行延迟。最后,我们提出了一种随机梯度下降(SGD)方法,该方法联合优化卸载概率和传输功率,以找到卸载目标之间的最优权衡。仿真结果表明,该系统能够有效地处理越来越多的SDs。
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Energy and Delay Aware Computation Offloading Scheme in MCC Environment
Computation Offloading is a technique that utilizes cloud resources to maintain the QoS of computation-intensive applications executed on resource-constrained smart devices (SDs). Researchers have proposed various profiling-based offloading frameworks to minimize the execution delay and extend the battery lifetime of the SDs. Most of these offloading strategies rely on the availability of infinite cloud resources to spun independent VMs for profiling the SDs, which may not be an efficient method to handle the increasing application demands of the SDs. To address this, we investigate a generic mobile cloud computing (MCC) computation offloading framework for handling the computational demands generated by a large number of SDs. The framework utilizes appropriate queuing models to simulate the traffic generated by the SDs and formulate a non-linear multi-objective optimization problem to minimize the energy consumption and execution delay of the SDs. Finally, we propose a Stochastic Gradient descent (SGD) solution that jointly optimizes offloading probability and transmission power to find the optimal trade-off between the offloading objectives. Simulation results show the proposed system's effectiveness and efficiency for an increasing number of SDs.
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