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A Hybrid Fuzzy-Genetic Algorithm for Performance Optimization of Cyber Physical Wireless Body Area Networks

机译:网络物理无线人体局域网性能优化的混合模糊遗传算法

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The use of fuzzy decision-making in datapath selection extends the sensor network lifetime with a uniform distribution of routing load among network nodes. Fuzzy-logic based routing protocols are mostly designed for general wireless sensor networks (WSN). However, such protocols are not compatible with a Wireless Body Area Network (WBAN) comprised of biosensor nodes. WBAN nodes carry inferior computational, communication and energy resources as compared to general WSN nodes. A WBAN routing protocol needs to be designed as per IEEE 802.15.6 WBAN standards to meet high-end QoS requirements of medical applications. This paper presents a fuzzy-logic-based clustering protocol for data routing in WBANs. Nodes are grouped into clusters and cluster head nodes are selected through a Fuzzy-Genetic Algorithm termed as EB-f_g-MADM. EB-f_g-MADM makes an assessment of dual attributes of each cluster node in terms of node residual energy and CH selection cost. CH selection cost of a node is the forecasted value of network energy consumption if the node acts as a cluster head. EB-f_g-MADM utilizes a fuzzy-TOPSIS function which makes a quantitative comparison of cluster nodes and selects the cluster head node possessing the aforementioned attributes closest to their ideally desired values. A Genetic Algorithm-based optimization process adapts the attribute weights for cluster head selection. EB-f_g-MADM provides enhanced network lifetime with a uniform distribution of routing load. Protocol performance is obtained in terms of network lifetime, throughput and latency. Results are compared with existing WBAN routing protocols and are found to be better.
机译:在数据路径选择中使用模糊决策可通过在网络节点之间均匀分配路由负载来延长传感器网络的寿命。基于模糊逻辑的路由协议主要是为通用无线传感器网络(WSN)设计的。但是,这样的协议与由生物传感器节点组成的无线体域网(WBAN)不兼容。与一般的WSN节点相比,WBAN节点的计算,通信和能源资源较低。需要根据IEEE 802.15.6 WBAN标准设计WBAN路由协议,以满足医疗应用的高端QoS要求。本文提出了一种基于模糊逻辑的聚类协议,用于WBAN中的数据路由。将节点分组为群集,并通过称为EB-f_g-MADM的模糊遗传算法选择群集头节点。 EB-f_g-MADM根据节点剩余能量和CH选择成本对每个群集节点的双重属性进行评估。如果节点充当群集头,则节点的CH选择成本是网络能耗的预测值。 EB-f_g-MADM利用Fuzzy-TOPSIS函数对群集节点进行定量比较,并选择具有最接近其理想值的上述属性的群集头节点。基于遗传算法的优化过程将属性权重调整为簇头选择。 EB-f_g-MADM通过均匀分布的路由负载来延长网络寿命。协议性能是根据网络寿命,吞吐量和延迟获得的。将结果与现有WBAN路由协议进行比较,发现效果更好。

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