Combined optimization strategy: CUBW for load balancing in software defined network

IF 0.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Web Intelligence Pub Date : 2024-01-05 DOI:10.3233/web-230263
Sonam Sharma, Dambarudhar Seth, Manoj Kapil
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Abstract

Software Defined Network (SDN) facilitates a centralized control management of devices in network, which solves many issues in the old network. However, as the modern era generates a vast amount of data, the controller in an SDN could become overloaded. Numerous investigators have offered their opinions on how to address the issue of controller overloading in order to resolve it. Mostly the traditional models consider two or three parameters to evenly distribute the load in SDN, which is not sufficient for precise load balancing strategy. Hence, an effective load balancing model is in need that considers different parameters. Considering this aspect, this paper presents a new load balancing model in SDN is introduced by following three major phases: (a) work load prediction, (b) optimal load balancing, and (c) switch migration. Initially, work load prediction is done via improved Deep Maxout Network. COA and BWO are conceptually combined in the proposed hybrid optimization technique known as Coati Updated Black Widow (CUBW). Then, the optimal load balancing is done via hybrid optimization named Coati Updated Black Widow (CUBW) Optimization Algorithm. The optimal load balancing is done by considering migration time, migration cost, distance and load balancing parameters like server load, response time and turnaround time. Finally, switch migration is carried out by considering the constraints like migration time, migration cost, and distance. The migration time of the proposed method achieves lower value, which is 27.3%, 40.8%, 24.40%, 41.8%, 42.8%, 42.2%, 40.0%, and 41.6% higher than the previous models like BMO, BES, AOA, TDO, CSO, GLSOM, HDD-PLB, BWO and COA respectively. Finally, the performance of proposed work is validated over the conventional methods in terms of different analysis.
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组合优化策略:用于软件定义网络负载平衡的 CUBW
软件定义网络(SDN)有利于集中控制管理网络中的设备,解决了旧网络中的许多问题。然而,由于现代社会产生了大量数据,SDN 中的控制器可能会超载。如何解决控制器过载问题,众多研究者提出了自己的看法。传统模型大多考虑两个或三个参数来平均分配 SDN 中的负载,但这不足以实现精确的负载平衡策略。因此,需要一种考虑不同参数的有效负载平衡模型。考虑到这一点,本文通过以下三个主要阶段介绍了一种新的 SDN 负载平衡模型:(a)工作负载预测;(b)优化负载平衡;(c)交换机迁移。最初,工作负载预测是通过改进的深度 Maxout 网络完成的。COA 和 BWO 在概念上被结合到所提出的混合优化技术中,即 Coati Updated Black Widow (CUBW)。然后,通过名为 Coati Updated Black Widow (CUBW) 优化算法的混合优化技术实现最佳负载平衡。最佳负载平衡是通过考虑迁移时间、迁移成本、距离以及服务器负载、响应时间和周转时间等负载平衡参数来实现的。最后,通过考虑迁移时间、迁移成本和迁移距离等约束条件,进行交换机迁移。与 BMO、BES、AOA、TDO、CSO、GLSOM、HDD-PLB、BWO 和 COA 等先前的模型相比,提议方法的迁移时间达到了较低的值,分别为 27.3%、40.8%、24.40%、41.8%、42.8%、42.2%、40.0% 和 41.6%。最后,从不同的分析角度验证了所提方法优于传统方法的性能。
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来源期刊
Web Intelligence
Web Intelligence COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
0.90
自引率
0.00%
发文量
35
期刊介绍: Web Intelligence (WI) is an official journal of the Web Intelligence Consortium (WIC), an international organization dedicated to promoting collaborative scientific research and industrial development in the era of Web intelligence. WI seeks to collaborate with major societies and international conferences in the field. WI is a peer-reviewed journal, which publishes four issues a year, in both online and print form. WI aims to achieve a multi-disciplinary balance between research advances in theories and methods usually associated with Collective Intelligence, Data Science, Human-Centric Computing, Knowledge Management, and Network Science. It is committed to publishing research that both deepen the understanding of computational, logical, cognitive, physical, and social foundations of the future Web, and enable the development and application of technologies based on Web intelligence. The journal features high-quality, original research papers (including state-of-the-art reviews), brief papers, and letters in all theoretical and technology areas that make up the field of WI. The papers should clearly focus on some of the following areas of interest: a. Collective Intelligence[...] b. Data Science[...] c. Human-Centric Computing[...] d. Knowledge Management[...] e. Network Science[...]
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