A Cloud and Fog based Architecture for Energy Management of Smart City by using Meta-heuristic Techniques

A. Butt, Sajjad Khan, Tehreem Ashfaq, Sakeena Javaid, Norin Abdul Sattar, N. Javaid
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引用次数: 15

Abstract

Cloud servers provide services over the internet by using Virtual Machines (VMs). The power consumption of Physical Machines (PMs) needs to be considered, as VMs are running on physical machines. When a consumer sends request to the cloud, it takes time to respond because of distant location of cloud. Due to which delay and latency issue arises. Fog is introduced to overcome the peculiarities of cloud. In fog computing environment, the operational challenges for the research community are: reducing the energy consumption and load balancing. The energy consumption of the fog resources depends on the requests that are allocated to the set of VMs. This is a challenging task. In this paper, three layered architecture cloud, fog and consumer layer are proposed. The cloud and fog provide VMs to run the consumers’ application quickly. The meta-heuristic algorithm that is: Genetic Algorithm (GA) is proposed and Binary Particle Swarm Optimization (BPSO) is implemented to balance the set of requests on VMs of cloud and fog. The proposed and implemented algorithm is compared with existing PSO and BAT algorithms to measure efficiency. The Closest Data Center (CDC), Optimize Response Time (ORT), Reconfigure Dynamically with Load (RDL) is implemented to optimize the Response Time (RT) and Processing Time (PT). These policies also decide which requests are allocated to which Data Center (DC). The proposed GA and implemented BPSO are use to minimize the computational cost and also decrease the RT and PT of DCs.
基于元启发式技术的云雾智慧城市能源管理体系结构
云服务器通过虚拟机(vm)在互联网上提供服务。虚拟机运行在物理机上,需要考虑物理机的功耗。当使用者向云发送请求时,由于云的位置较远,需要花费一些时间来响应。因此出现了延迟和延迟问题。引入雾是为了克服云的特性。在雾计算环境下,研究人员面临的操作挑战是:降低能耗和平衡负载。雾资源的能耗取决于分配给这组虚拟机的请求。这是一项具有挑战性的任务。本文提出了云层、雾层和消费者层三层架构。云和雾提供vm来快速运行用户的应用程序。提出了一种元启发式算法,即遗传算法(GA)和二进制粒子群优化算法(BPSO)来平衡云雾虚拟机上的请求集。将所提出和实现的算法与现有的PSO和BAT算法进行了比较,以衡量效率。实现了最近的数据中心(CDC)、优化响应时间(ORT)和负载重新配置(RDL),以优化响应时间(RT)和处理时间(PT)。这些策略还决定将哪些请求分配给哪个数据中心(DC)。提出的遗传算法和实现的BPSO能够最大限度地减少计算成本,同时也降低了DCs的RT和PT。
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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