边缘云框架下物联网应用的元启发式计算卸载策略

Xuezhen Huang, Yang Yang, Xinglu Wu
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引用次数: 9

摘要

边缘云计算为实时或安全敏感的物联网应用提供了性能保证。边缘云服务的新布局利用了云数据中心(CDC)和网络边缘的资源。计算任务可以分成子任务并卸载到不同的边缘/云服务器上,这些服务器作为卸载目的地被捐赠。边缘数据中心(EDC)和边缘数据中心(CDC)的卸载目标异构性和不同的体系结构给计算卸载带来了挑战。边缘云计算的一个关键问题是计算卸载过程中的能耗。现有的计算卸载策略要么忽略了能耗,要么忽略了延迟和/或安全约束。元启发式策略被广泛用于设计启发式资源分配算法。本文旨在探索元启发式节能计算卸载(EE-CO)方法,以满足延迟和安全约束,同时最小化能耗。为了实现这一目标,研究了结合混合整数规划(MIP)的蚁群优化(ACO)策略的性能。本文提出了一种基于蚁群算法的计算卸载策略,该策略包括EA-OMIP和EA-RMIP两种算法。它们之间唯一的区别是整数规划模型的构造方法。通过仿真对两种算法的性能进行了评价。从子任务接受率、云服务提供商(CSP)收入、资源利用率等方面对实验结果进行了分析。
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A Meta-Heuristic Computation Offloading Strategy for IoT Applications in an Edge-Cloud Framework
Edge-cloud computing provides performance guarantees for IoT applications which are real-time or security sensitive. The new placement of edge-cloud services leverages resources both in Cloud Data Centers (CDC) and at the edge of the network. A computation task can be divided into subtasks and offloaded to different edge/cloud servers, which are donated as offloading destinations. Offloading destination heterogeneity and different architecture of Edge Data Center (EDC) and CDC bring challenges to computation offloading. One critical issue in edge-cloud computing is energy consumption in computation offloading. The existing computation offloading strategies either ignored energy consumption or ignored delay and/or security constraints. Meta-heuristic strategies have been used widely to design heuristic resource allocation algorithms in CDC. This paper aims to explore meta-heuristic energy-efficient computation offloading (EE-CO) approaches with the objective to meet the delay and security constraints, while minimizing energy consumption. To achieve the goal, we investigated the performance of the Ant-Colony-Optimization (ACO) strategies combining with mixed integer programming (MIP). We propose an ACO-based computation offloading strategy, which including two algorithms, called EA-OMIP and EA-RMIP, respectively. The only difference of them is the construction method of integer programming models. Simulations are carried out to value the performance of proposed two algorithms. We also give an analysis of the experimental results in terms of the subtask acceptance ratio, revenue of the cloud service provider (CSP), and the resource utilization.
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