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A High Accuracy Fuzzy Logic Based Map Matching Algorithm for Road Transport

机译:基于高精度模糊逻辑的道路运输地图匹配算法

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Recent research on map matching algorithms for land vehicle navigation has been based on either a conventional topological analysis or a probabilistic approach. The input to these algorithms normally comes from the global positioning system (GPS) and digital map data. Although the performance of some of these algorithms is good in relatively sparse road networks, they are not always reliable for complex roundabouts, merging or diverging sections of motorways, and complex urban road networks. In high road density areas where the average distance between mads is less than 100 m, there may be many mad patterns matching the trajectory of the vehicle reported by the positioning system at any given moment. Consequently, it may be difficult to precisely identify the road on which the vehicle is travelling. Therefore, techniques for dealing with qualitative terms such as likeliness are essential for map matching algorithms to identify a correct link. Fuzzy logic is one technique that is an effective way to deal with qualitative terms, linguistic vagueness, and human intervention. This article develops a map matching algorithm based on fuzzy logic theory. The inputs to the proposed algorithm are from GPS augmented with data from deduced reckoning sensors to provide continuous navigation. The algorithm is tested on different road networks of varying complexity. The validation of this algorithm is carried out using high precision positioning data obtained from GPS carrier phase observables. The performance of the developed map matching algorithm is evaluated against the performance of several well-accepted existing map matching algorithms. The results show that the fuzzy logic-based map matching algorithm provides a significant improvement over existing map matching algorithms both in terms of identifying correct links and estimating the vehicle position on the links.
机译:用于陆地车辆导航的地图匹配算法的最新研究已经基于常规拓扑分析或概率方法。这些算法的输入通常来自全球定位系统(GPS)和数字地图数据。尽管这些算法中的某些算法在相对稀疏的道路网络中表现良好,但对于复杂的环岛,合并或分叉的高速公路路段以及复杂的城市道路网络,它们并不总是可靠的。在狂人之间的平均距离小于100 m的高道路密度区域中,在任何给定时刻,可能存在许多与定位系统报告的车辆轨迹相匹配的狂人模式。因此,可能难以精确地识别车辆正在行驶的道路。因此,用于处理诸如相似性之类的定性术语的技术对于地图匹配算法识别正确的链接至关重要。模糊逻辑是一种有效的方法来处理定性术语,语言模糊性和人为干预。本文开发了一种基于模糊逻辑理论的地图匹配算法。所提出算法的输入来自GPS,并补充了推算出的推算传感器的数据,以提供连续导航。在不同复杂程度的不同道路网络上对该算法进行了测试。使用从GPS载波相位可观测值获得的高精度定位数据进行此算法的验证。针对几种公认的现有地图匹配算法的性能,评估了开发的地图匹配算法的性能。结果表明,基于模糊逻辑的地图匹配算法在识别正确的链接和估计链接上的车辆位置方面都比现有的地图匹配算法有了显着的改进。

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