Reinforcement Learning Based Routing Protocol for Wireless Body Sensor Networks

Farzad Kiani
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引用次数: 21

Abstract

Patients must be continuous and consistent way links to their doctors to control continuous health status. Wireless Body Sensor Network (WBSN) plays an important role in communicating the patient's vital information to any remote healthcare center. These networks consist of individual nodes to collect the patient's physiological parameters and communicate with the destination if the sensed parameter value is beyond normal range. Therefore, they can monitor patient's health continuously. The nodes deployed with the patient form a WBSN and so the network send data from source node to the remote sink or base station by efficient links. It is necessary to extend the life of the system by selecting optimized paths. This paper presents a cluster-based routing protocol by new Q-learning approach (QL-CLUSTER) to find best routes between individual nodes and remote healthcare station. Simulations are made with a set of mobile biomedical wireless sensor nodes with an area of 1000 meters x 1000 meters flat space operating for 600 seconds of simulation time. Results show that the QL-CLUSTER based approach requires less time to route the packet from the source node to the destination remote station compared with other algorithms.
基于强化学习的无线身体传感器网络路由协议
患者必须以持续和一致的方式联系医生,以控制他们的持续健康状况。无线身体传感器网络(WBSN)在将患者的重要信息传输到任何远程医疗中心方面发挥着重要作用。这些网络由单个节点组成,用于收集患者的生理参数,当感知到的参数值超出正常范围时,与目的地进行通信。因此,他们可以持续监测患者的健康状况。与患者一起部署的节点形成WBSN,因此网络通过有效的链路将数据从源节点发送到远程接收器或基站。有必要通过选择优化的路径来延长系统的寿命。本文提出了一种基于集群的路由协议,利用新的q -学习方法(QL-CLUSTER)来寻找单个节点与远程医疗站之间的最佳路由。采用一组面积为1000米× 1000米平面空间的移动生物医学无线传感器节点进行仿真,仿真时间为600秒。结果表明,与其他算法相比,基于QL-CLUSTER的方法将数据包从源节点路由到目的远程站所需的时间更少。
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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