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Intelligent-Routing Algorithm for wireless body area networks (I-RAW)

机译:无线体积网络智能路由算法(I-RAW)

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摘要

The progressive strides in the exploration of sensing technology and the potential use of electrical devices have rendered a promising technology, termed as Wireless Body Area Networks (WBANs). This technology has rendered competency to reform healthcare and making available ubiquitous health care support to remotely located patients. However, the sensor nodes which are embedded on or underneath the body of the patients to measure multifaceted physiological parameters are suffered from the limited battery constraints. In this paper, to address this issue, we propose Intelligent-Routing Algorithm for WBANs (I-RAW) to elongate life period of these sensor nodes. The two sinks are located on the front and back side of the patient's body that collects data from the sensor nodes which form clusters and forward the data through the cluster head (CH). We apply Tunicate Swarm Algorithm (TSA) for selection of CH which considers the essential parameters namely, residual energy, network's average energy, distance of node from the sink, path loss model, and energy consumption rate. The use of two sinks in WBAN mitigate hot-spot problem in the network by avoiding the multi-hop communication. The simulation results show that I-RAW improves stability period and network operational period by 37.7% and 42.7%, respectively, as compared to Dual Sink approach using Clustering in Body area network (DSCB) protocol, respectively. Further, I-RAW also shows supreme performance for various performance metrics as compared to other state-of-the-art protocols.
机译:传感技术探索的渐进进步和电气设备的潜在使用已经呈现出一种有希望的技术,称为无线体积网络(WBANS)。该技术使得改革医疗保健的能力和可用的普遍存在医疗保健支持对远程定位的患者。然而,嵌入患者体内或患者身体下方的传感器节点遭受有限的电池限制。在本文中,为了解决这个问题,我们提出了WBANS(I-RAW)的智能路由算法,以伸长这些传感器节点的延长寿命周期。两个水槽位于患者身体的正面和背面,从传感器节点收集数据,该节点形成群集并通过簇头(CH)转发数据。我们应用统一的群算法(TSA),以选择CH,即将基本参数,即剩余能量,网络的平均能量,来自水槽,路径损耗模型和能耗率的节点距离。通过避免多跳通信,在WBAN中使用两个汇在网络中的热点问题。仿真结果表明,与使用体积区域网络(DSCB)协议的聚类分别相比,I-RAW分别将稳定性期和网络运行时间提高37.7%和42.7%。此外,与其他最先进的协议相比,I-RAW还显示出各种性能度量的至尊性能。

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