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Fuzzy-Based Hybrid Location Algorithm for Vehicle Position in VANETs via Fuzzy Kalman Filtering Approach

机译:基于模糊的混合定位算法,通过模糊卡尔曼滤波方法在Vapets中的车辆位置

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Location information is very critical to VANETs such as navigation, routing, network management, and road congestion. In this paper, the vehicle location problem under urban road conditions is investigated by employing the GPS, WiFi, and Cellular Network (CN) positioning systems and by developing neighbor vehicle utilization in VANETs. Since GPS is possibly affected by satellite signal in real urban environment, while WiFi is only suitable for urban and CN is affected by the number of Base Stations (BSs) and signal strength, then a fuzzy-based hybrid location algorithm is developed. The algorithm has some advantages that it can enhance these positioning features by establishing a new fuzzy-weighting location mechanism (FLM) and also can adjust dynamically the measurement noise covariance by making use of a novel fuzzy Kalman filtering method. Finally, experiment results are given to show effectiveness and merit of the proposed approach.
机译:位置信息对Vaket(如导航,路由,网络管理和道路拥塞)非常重要。在本文中,通过使用GPS,WiFi和蜂窝网络(CN)定位系统来研究城市道路状况下的车辆定位问题,并通过在VANET中开发邻居车辆利用。由于GPS可能受到真实城市环境中的卫星信号的影响,而WiFi仅适用于城市,CN受基站(BSS)和信号强度的数量影响,则开发了一种模糊的混合位置算法。该算法具有一些优点,即通过建立新的模糊加权位置机制(FLM)可以通过建立新的模糊加权位置机制(FLM)来增强这些定位特征,并且通过利用新颖的模糊卡尔曼滤波方法可以通过动态地调节测量噪声协方差。最后,给出了实验结果表明所提出的方法的有效性和优点。

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