无线传感器网络中基于预测方法和簇结构的基站节点目标跟踪

Farzad Kiani, Hamidreza Tahmasebirad
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引用次数: 0

摘要

无线传感器网络中最重要和最具挑战性的问题之一是移动目标的跟踪。网络连续向基站报告指定时间段内运动物体的空间信息。本文介绍了一种新的协议,该协议有两个版本,其中一个版本是基于动态聚类的,重点是基站,另一个版本是基于预测系统的,以提高目标运动的跟踪精度,同时降低能耗。在本文中,集群的任务包括确定集群头、集群成员的数量、集群成员的选择以及管理由基站完成的节点激活。另一方面,考虑到基站在无线传感器网络领域之外,并且连接到无限电源。该协议的第二版本基于一种预测算法,该算法是通过预测方法从第一版本的基站节点角色中得到启发的。本文引入了三种启发式模型来选择预测模型中的速度和方向。它们是即时、平均和指数平均模型。这些模型可以更准确地跟踪相关目标,减少丢失目标的数量。模拟是在定制开发的工具中在不同的场景中完成的。仿真结果表明,它们在网络生存期和目标跟踪应用中具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TARGET TRACKING BASED ON BASE STATION NODE USING PREDICTION METHOD AND CLUSTER STRUCTURE IN WIRELESS SENSOR NETWORKS
One of the most important and major challenging issues of wireless sensor networks is the tracking of mobile targets. The network continuously reports the spatial information of moving objects during specified periods to the base station. In this paper, by introducing new a protocol with two versions, of which, one of them is based on dynamic clustering with a focus on the base station, and the other is based on a predictive system for increasing the tracking accuracy of the objects movement and decreasing the energy consumption as well. In this paper, the task of clustering involves in determining the cluster heads, the number of cluster members, the selection of cluster members, and managing the activation of the nodes that is done by the base station. On the other hand, given that the base station is outside the field of wireless sensor networks and is connected to an unlimited power source. The second version of the proposed protocol is based on a predictive algorithm that it was inspired from the first proposed version in the role of the base station node by a prediction method. In this paper, three heuristic models are introduced to select the speed and direction in prediction models. They are instant, average and exponential-average models. These models can track the relevant targets more accurately and reduce the number of missing targets. The simulations are done in different scenarios in a custom developed tool. The results of simulation show a good performance of them in the network lifetime and target tracking applications.
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