HT-WSO: A hybrid meta-heuristic approach-aided multi-objective constraints for energy efficient routing in WBANs

Pub Date : 2023-09-11 DOI:10.3233/idt-220295
Bhagya Lakshmi A, Sasirekha K, Nagendiran S, Ani Minisha R, Mary Shiba C, Varun C.M, Sajitha L.P, Vimala Josphine C
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Abstract

Generally, Wireless Body Area Networks (WBANs) are regarded as the collection of small sensor devices that are effectively implanted or embedded into the human body. Moreover, the nodes included in the WBAN have large resource constraints. Hence, reliable and energy-efficient data transmission plays a significant role in the implementation and in constructing of most of the merging applications. Regarded to complicated channel environment, limited power supply, as well as varying link connectivity has made the construction of WBANs routing protocol become difficult. In order to provide the routing protocol in a high energy-efficient manner, a new approach is suggested using hybrid meta-heuristic development. Initially, all the sensor nodes in WBAN are considered for experimentation. In general, the WBAN is comprised of mobile nodes as well as fixed sensor nodes. Since the existing models are ineffective to achieve high energy efficiency, the new routing protocol is developed by proposing the Hybrid Tunicate-Whale Swarm Optimization (HT-WSO) algorithm. Subsequently, the proposed work considers the multiple constraints for deriving the objective function. The network efficiency is analyzed using the objective function that is formulated by distance, hop count, energy, path loss, and load and packet loss ratio. To attain the optimum value, the HT-WSO derived from Tunicate Swarm Algorithm (TSA) and Whale Optimization Algorithm (WOA) is employed. In the end, the ability of the working model is estimated by diverse parameters and compared with existing traditional approaches. The simulation outcome of the designed method achieves 13.3%, 23.5%, 25.7%, and 27.7% improved performance than DHOA, Jaya, TSA, and WOA. Thus, the results illustrate that the recommended protocol attains better energy efficiency over WBANs.
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HT-WSO:一种混合元启发式方法辅助多目标约束的wban节能路由
一般来说,无线体域网络(wban)被认为是有效植入或嵌入人体的小型传感器设备的集合。此外,无线宽带网络所包含的节点具有较大的资源约束。因此,可靠和节能的数据传输在大多数合并应用的实现和构建中起着重要的作用。由于信道环境复杂,供电有限,链路连通性多变,使得wban路由协议的构建变得困难。为了高效节能地提供路由协议,提出了一种混合元启发式开发方法。首先,考虑WBAN中所有传感器节点进行实验。一般来说,无线宽带网络由移动节点和固定传感器节点组成。针对现有模型无法实现高能效的问题,提出了一种新的路由协议,即混合被毛鲸群优化算法(HT-WSO)。随后,提出的工作考虑了多个约束来推导目标函数。使用目标函数分析网络效率,目标函数由距离、跳数、能量、路径损耗、负载和丢包率组成。为了获得最优值,采用了由被囊虫群算法(TSA)和鲸鱼优化算法(WOA)衍生的HT-WSO。最后,用不同的参数对工作模型的能力进行了估计,并与现有的传统方法进行了比较。仿真结果表明,该方法的性能比DHOA、Jaya、TSA和WOA分别提高了13.3%、23.5%、25.7%和27.7%。因此,结果表明所推荐的协议比wban具有更好的能源效率。
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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