Faculty of Information and Communication Engineering, Anna University, Chennai, India.
Department of ECE, Rathinam Technical Campus, Coimbatore, India.
Contrast Media Mol Imaging. 2022 Jan 30;2022:2538115. doi: 10.1155/2022/2538115. eCollection 2022.
Using energy efficiency to increase the life and sustainability of wireless sensor networks (WSNs) for biomedical applications is still a challenge. Clustering has boosted energy productivity by allowing cluster heads to be categorized, but its implementation is still a challenge. Existing cluster head selection criteria start with determining acceptable cluster head locations. The cluster heads are picked from the nodes that are most closely connected with these places. This location-based paradigm incorporates challenges such as faster processing, less precise selection, and redundant node selection. The development of the sampling-based smart spider monkey optimization (SSMO) approach is addressed in this paper. If the sample population's nodes are varied, network nodes are picked from among them. The problems with distributed nodes and cluster heads are no longer a concern. This article shows how to use an SSMO and smart CH selection to increase the lifetime and stability of WSNs. The goal of this study is to look at how cluster heads are chosen using standard SMO and sampling-based SMO for biomed applications. Low-energy adaptive clustering hierarchy centralized (LEACH-C), particle swarm optimization clustering protocol (PSO-C), and SSMO improved routing protocol measurements are compared to those obtained in homogeneous and heterogeneous settings using equivalent methodologies. In these implementations, SSMO boosts network longevity and stability periods by an estimated 12.22%, 6.92%, 32.652%, and 1.22%.
利用能效来提高生物医学应用中无线传感器网络(WSN)的寿命和可持续性仍然是一个挑战。聚类通过允许将簇头分类来提高能量效率,但它的实现仍然是一个挑战。现有的簇头选择标准首先从确定可接受的簇头位置开始。簇头从与这些位置最接近的节点中选择。这种基于位置的范例包含了更快的处理、不太精确的选择和冗余节点选择等挑战。本文提出了一种基于采样的智能蜘蛛猴优化(SSMO)方法。如果样本群体的节点发生变化,则从其中选择网络节点。分布式节点和簇头的问题不再是一个问题。本文展示了如何使用 SSMO 和智能 CH 选择来提高 WSN 的寿命和稳定性。本研究的目的是研究如何使用标准 SMO 和基于采样的 SMO 为生物医学应用选择簇头。低能自适应聚类层次结构集中(LEACH-C)、粒子群优化聚类协议(PSO-C)和 SSMO 改进的路由协议测量结果与使用等效方法在同构和异构环境中获得的结果进行了比较。在这些实现中,SSMO 通过估计提高了网络寿命和稳定期 12.22%、6.92%、32.652%和 1.22%。