Optimized Multi-User Dependent Tasks Offloading in Edge-Cloud Computing Using Refined Whale Optimization Algorithm

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Khalid M. Hosny;Ahmed I. Awad;Marwa M. Khashaba;Mostafa M. Fouda;Mohsen Guizani;Ehab R. Mohamed
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Abstract

Despite the extensive use of IoT and mobile devices in the different applications, their computing power, memory, and battery life are still limited. Multi-Access Edge Computing (MEC) has recently emerged to address the drawbacks of these limitations. With MEC on the network's edge, mobile and IoT devices can offload their computing operations to adjacent edge servers or remote cloud servers. However, task offloading is still a challenging research issue, and it is necessary to improve the overall Quality of Service (QoS) and attain optimized performance and resource utilization. Another crucial issue that is usually overlooked while handling this matter is offloading an application that consists of dependent tasks. In this study, we suggest a Refined Whale Optimization Algorithm (RWOA) for solving the multiuser dependent tasks offloading problem in the Edge-Cloud computing environment with three objectives: 1- minimizing the application execution latency, 2- minimizing the energy consumption of end devices, and 3- the charging cost for used resources. We also avoid the traditional binary planning mechanisms by allowing each task to be partially processed simultaneously at three processing locations (local device, MEC, cloud). We compare RWOA with other Optimizers, and the results demonstrate that the RWOA has optimized the fitness by 52.7% relative to the second best comparison optimizer.
使用改进的鲸鱼优化算法优化边缘云计算中的多用户依赖任务卸载
尽管物联网和移动设备在不同的应用中得到广泛使用,但其计算能力、内存和电池寿命仍然有限。最近出现的多接入边缘计算(MEC)可以解决这些限制带来的弊端。通过网络边缘的 MEC,移动和物联网设备可以将其计算操作卸载到相邻的边缘服务器或远程云服务器上。然而,任务卸载仍然是一个具有挑战性的研究课题,必须提高整体服务质量(QoS),实现性能和资源利用率的优化。在处理这一问题时,另一个通常被忽视的关键问题是如何卸载由依赖任务组成的应用程序。在本研究中,我们提出了一种精炼鲸优化算法(RWOA),用于解决边缘云计算环境中的多用户依赖任务卸载问题,该算法有三个目标:1- 应用程序执行延迟最小化;2- 终端设备能耗最小化;3- 已用资源收费成本最小化。我们还避免了传统的二进制规划机制,允许每个任务在三个处理位置(本地设备、MEC、云)同时进行部分处理。我们将 RWOA 与其他优化器进行了比较,结果表明,相对于排名第二的优化器,RWOA 优化了 52.7% 的适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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