Enhancing Performance of Wide Area CIoT SDN by US-ML Based Optimum Controller Placement

Amrita Khera, U. Kurmi
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Abstract

It is a critical area of study for enhancing the effectiveness of wide-area Cellular Internet of Things (CIoT) networks. One solution is to merge Software Defined Networking (SDN) with Internet of Things (IoT) network to boost efficiency. The main challenge is determining the best location for the SDN controller and evaluating SDN clustering. This paper proposed an Un-Supervised Machine-Learning (US-ML) approach based on silhouette distance along with gap statistic for finding the optimum number of controllers for network under consideration. In addition, the Partition Around Medoids (PAM) approach is opted for allocation of controller locations. Apart from SDN, another approach is to create efficient Low-Power Wide Area Networks (LPWAN). As a result, this research contributed to the study of various LPWAN design approaches and offered a method of optimal controller location for IoT-SDN cellular networks in industries. Several outstanding research challenges are noted, and prospective research objectives for LPWAN are offered. For the case study of wide area networks (WAN), a graphical representation of the SDN controller positioning method is presented. It is determined that effective placement can improve SDN performance in worst-case network scenarios.
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基于US-ML优化控制器配置增强广域CIoT SDN性能
提高广域蜂窝物联网(CIoT)网络的有效性是一个关键的研究领域。一种解决方案是将软件定义网络(SDN)与物联网(IoT)网络合并,以提高效率。主要的挑战是确定SDN控制器的最佳位置和评估SDN集群。本文提出了一种基于轮廓距离和间隙统计的无监督机器学习(US-ML)方法,用于寻找所考虑网络的最优控制器数量。此外,还选择了围绕介质的分区(PAM)方法来分配控制器位置。除了SDN,另一种方法是创建高效的低功耗广域网(LPWAN)。因此,本研究有助于研究各种LPWAN设计方法,并为工业中IoT-SDN蜂窝网络的最优控制器位置提供了一种方法。指出了几个突出的研究挑战,并提出了LPWAN的未来研究目标。以广域网(WAN)为例,给出了SDN控制器定位方法的图示。在最坏的网络场景下,有效的放置可以提高SDN的性能。
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