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Movement prediction models for vehicular networks: an empirical analysis

机译:车载网络的运动预测模型:实证分析

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摘要

In recent years, the role of vehicular networks has become increasingly important for the future of Intelligent Transportation Systems, as they are useful for providing safety, assistance to drivers, and traffic control management. Many vehicular network applications such as routing, mobility management, service discovery, and collision avoidance protocols would benefit from possessing vehicles' prior location information to improve their performance. However, the rapid mobility of vehicles and the degree of error in positioning systems create a challenging problem regarding the accuracy and efficiency of any location prediction-based model for vehicular networks. Therefore, a number of location prediction techniques has been proposed in the literature. In this paper, we study and compare the accuracy and effectiveness of the following location-based movement prediction models: Kalman filter, Extended Kalman filter (EKF), Unscented Kalman filter (UKF), and Particle filter for vehicular networks. We compare the performances of these prediction techniques with respect to different mobility models, and provide some insights on their capabilities and limitations. Our results indicate that Particle filter outperforms all other predictors with respect to location error. In addition, EKF and UKF demonstrated an increase in efficiency of more than 50% when additional measurements input were integrated with the predictors.
机译:近年来,车载网络的作用对于智能交通系统的未来已变得越来越重要,因为它们可用于提供安全性,对驾驶员的辅助以及交通控制管理。拥有车辆的先前位置信息以改善其性能,诸如路由,移动性管理,服务发现和冲突避免协议之类的许多车辆网络应用将受益。然而,车辆的快速机动性和定位系统中的误差程度产生了关于车辆网络的任何基于位置预测的模型的准确性和效率的挑战性问题。因此,在文献中已经提出了许多位置预测技术。在本文中,我们研究并比较了以下基于位置的运动预测模型的准确性和有效性:卡尔曼滤波器,扩展卡尔曼滤波器(EKF),无味卡尔曼滤波器(UKF)和用于车辆网络的粒子滤波器。我们比较了这些预测技术相对于不同移动性模型的性能,并提供了有关其功能和局限性的一些见解。我们的结果表明,就位置误差而言,粒子滤波器优于所有其他预测变量。此外,将其他测量输入与预测变量集成后,EKF和UKF的效率提高了50%以上。

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