Presenting a meta-heuristic solution for optimal resource allocation in fog computing

X. Ding, Huaibao Ding, Fei Zhou
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Abstract

Given that cloud computing is a relatively new field of study, there is an urgent need for comprehensive approaches to resource provisioning and the allocation of Internet of Things (IoT) services across cloud infrastructure. Other challenging aspects of cloud computing include IoT resource virtualization and disseminating IoT services among available cloud resources. To meet deadlines, optimize application execution times, efficiently use cloud resources, and identify the optimal service location, service placement plays a crucial role in installing services on existing virtual resources within a cloud-based environment. To achieve load balance in the fog computing infrastructure and ensure optimal resource allocation, this work proposes a meta-heuristic approach based on the cat swarm optimization method. For more clarity in the difference between the work presented in this research and other similar works, we named the proposed technique MH-CSO. The algorithm incorporates a resource check parameter to determine the accessibility and suitability of resources in different situations. This conclusion was drawn after evaluating the proposed solution in the ifogsim environment and comparing it with particle swarm and ant colony optimization techniques. The findings demonstrate that the proposed solution successfully optimizes key parameters, including runtime and energy usage.
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提出雾计算资源优化分配的元启发式解决方案
鉴于云计算是一个相对较新的研究领域,因此迫切需要采用全面的方法在云基础设施上进行资源调配和物联网(IoT)服务分配。云计算的其他挑战还包括物联网资源虚拟化和在可用云资源中传播物联网服务。为了满足截止日期要求、优化应用程序执行时间、有效利用云资源并确定最佳服务位置,服务分配在基于云的环境中将服务安装到现有虚拟资源上时发挥着至关重要的作用。为了在雾计算基础设施中实现负载平衡并确保最优资源分配,本研究提出了一种基于猫群优化方法的元启发式方法。为了更清楚地说明本研究中提出的工作与其他类似工作的区别,我们将提出的技术命名为 MH-CSO。该算法包含一个资源检查参数,用于确定不同情况下资源的可获取性和适用性。这一结论是在 ifogsim 环境中对所提出的解决方案进行评估,并与粒子群和蚁群优化技术进行比较后得出的。结果表明,提出的解决方案成功优化了运行时间和能源使用等关键参数。
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