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Energy Efficient Cluster based Mobility Prediction for Wireless Sensor Networks

机译:基于节能集群的无线传感器网络的移动性预测

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Wireless Sensor Networks (WSN) is a collection of wireless sensor nodes forming a temporary network without using any established infrastructure or centralized administration. Sensor nodes are battery operated and may be mobile, critical issues is to reduce the energy conservation and prediction of node mobility to maximize the network lifetime by using limited network resources. In order to overcome these issues, in this paper we propose an Energy Efficient Cluster Based Mobility Prediction Routing Protocol (EECMPR) for WSNs using Kalman Filters. In this technique, the node with high weight is chosen as cluster head based on the parameters such as residual energy and transmission range. The cluster head collects the information from the nodes in its cluster and transmits the information to the sink. The position of each mobile sensor is carried at the respective nodes using Kalman filter which gives the State Update which consists of velocity, acceleration and position. This State Update is sent to the cluster head which will process the information and in turn will send it to sink. Before receiving the information from the cluster head, the sink would do prediction and compare the received results obtained from cluster head and the predicted result. Finally it will send data packets to the nodes after determining the position. By simulation results, we have shown that the proposed technique (EECMPR) minimizes the overhead and improves accuracy in predicting the position of the node.
机译:无线传感器网络(WSN)是无线传感器节点的集合,形成临时网络,而无需使用任何建立的基础架构或集中管理。传感器节点是电池操作,并且可以是移动的,关键问题是减少节点移动性的节能和预测,通过使用有限的网络资源来最大化网络生命周期。为了克服这些问题,在本文中,我们为使用卡尔曼滤波器提出了一种用于WSN的基于节能基于集群的移动预测路由协议(EECMPR)。在该技术中,基于诸如剩余能量和传输范围的参数,选择具有高权重的节点。群集头从其群集中的节点收集信息,并将信息发送到接收器。每个移动传感器的位置使用卡尔曼滤波器在相应的节点处携带,这给出了由速度,加速度和位置组成的状态更新。此状态更新将发送到群集头部,该群集头将处理信息,然后又将其发送到宿。在从群集头接收信息之前,接收器会进行预测,并比较从群集头和预测结果获得的接收结果。最后,在确定位置后它将将数据包发送到节点。通过仿真结果,我们已经表明,所提出的技术(EECMPR)最小化开销并提高预测节点位置的准确性。

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