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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Raccoon optimization algorithm-based accurate positioning scheme for reliable emergency data dissemination under NLOS situations in VANETs
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Raccoon optimization algorithm-based accurate positioning scheme for reliable emergency data dissemination under NLOS situations in VANETs

机译:基于浣熊优化算法的无可行紧急数据传播基于VANET中的可靠紧急数据传播的准确定位方案

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摘要

In emergency situations, cooperative positioning of vehicular nodes is essential for facilitating precise and stable information for achieving reliable data dissemination in Vehicular Ad hoc NETworks (VANETs). However, the existence of Non-Line-Of-Sight (NLOS) nodes degrades the accuracy in estimating ranging measurements introduced by the blockages from tall vehicles and buildings. In this paper, Raccoon Optimization Algorithm-based Accurate Positioning Scheme (ROA-APS) is proposed for improving the accuracy in the estimation of ranging measurements in order to determine the exact position of NLOS nodes. It is proposed for ensuring maximized reliability and reduced latency in the event of warning message exchange. It inherits the food rummaging style of real raccoons for speeding and strengthening the local and global search process involved in the estimation of NLOS node positions. It utilizes maximum probability of acquiring higher adaptability through active learning to attain better localization of NLOS nodes. It inherits the distance information for calculating the position accuracy associated with vehicle trajectory, distance information error and the number of vehicles. It also uses the method of weighted average to enforce more confidence to the distance information provided by neighboring nodes. The simulation experiments of the proposed ROA-APS using EstiNet simulators are conducted to determine its significance with respect to positioning accuracy, emergency message dissemination rate, positioning error, neighbor vehicles awareness rate and positioning time. The results confirm an increased mean emergency message dissemination rate, positioning accuracy and neighbor vehicles awareness rate by 16.21%, 14.38% and 15.16% when compared to the benchmarked schemes.
机译:在紧急情况下,车辆节点的协同定位对于促进精确和稳定的信息来实现用于在车辆临时网络(VANET)中可靠的数据传播的精确和稳定信息是必不可少的。然而,存在非视线(NLO)节点的存在降低了估计由高大车辆和建筑物堵塞引入的测量测量的准确性。在本文中,提出了基于浣熊优化算法的准确定位方案(ROA-AP),以提高测距测量估计中的准确性,以便确定NLOS节点的确切位置。建议在警告消息交换的情况下确保最大化的可靠性和降低的延迟。它继承了真正的浣熊的食物翻新风格,用于加速和加强估计NLOS节点位置的本地和全球搜索过程。它利用通过主动学习获得更高适应性的最大概率来实现NLOS节点的更好定位。它继承了计算与车辆轨迹,距离信息误差和车辆数量相关联的位置精度的距离信息。它还使用加权平均方法来强制对由相邻节点提供的距离信息的更有信心。使用ESTINET模拟器的建议ROA-AP的模拟实验,以确定其对定位精度,紧急消息传播速率,定位误差,邻居车辆意识率和定位时间的重要性。结果证实了与基准计划相比,将均匀的紧急消息传播速率,定位精度和邻居车辆意识提高16.21%,14.38%和15.16%。

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