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Current map-matching algorithms for transport applications: State-of-the art and future research directions

机译:当前交通运输应用中的地图匹配算法:最新技术和未来研究方向

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Map-matching algorithms integrate positioning data with spatial road network data (roadway centrelines) to identify the correct link on which a vehicle is travelling and to determine the location of a vehicle on a link. A map-matching algorithm could be used as a key component to improve the performance of systems that support the navigation function of intelligent transport systems (ITS). The required horizontal positioning accuracy of such ITS applications is in the range of 1 m to 40 m (95%) with relatively stringent requirements placed on integrity (quality), continuity and system availability. A number of map-matching algorithms have been developed by researchers around the world using different techniques such as topological analysis of spatial road network data, probabilistic theory, Kalman filter, fuzzy logic, and belief theory. The performances of these algorithms have improved over the years due to the application of advanced techniques in the map matching processes and improvements in the quality of both positioning and spatial road network data. However, these algorithms are not always capable of supporting ITS applications with high required navigation performance, especially in difficult and complex environments such as dense urban areas. This suggests that research should be directed at identifying any constraints and limitations of existing map matching algorithms as a prerequisite for the formulation of algorithm improvements. The objectives of this paper are thus to uncover the constraints and limitations by an in-depth literature review and to recommend ideas to address them. This paper also highlights the potential impacts of the forthcoming European Galileo system and the European Geostationary Overlay Service (EGNOS) on the performance of map matching algorithms. Although not addressed in detail, the paper also presents some ideas for monitoring the integrity of map-matching algorithms. The map-matching algorithms considered in this paper are generic and do not assume knowledge of'future' information (i.e. based on either cost or time). Clearly, such data would result in relatively simple map-matching algorithms.
机译:地图匹配算法将定位数据与空间道路网络数据(道路中心线)集成在一起,以识别车辆正在行驶的正确路段并确定路段上车辆的位置。可以将地图匹配算法用作提高支持智能运输系统(ITS)导航功能的系统性能的关键组件。此类ITS应用程序所需的水平定位精度在1 m至40 m(95%)的范围内,对完整性(质量),连续性和系统可用性提出了相对严格的要求。世界各地的研究人员已经使用不同的技术开发了许多地图匹配算法,例如空间路网数据的拓扑分析,概率论,卡尔曼滤波器,模糊逻辑和置信论。这些年来,由于先进的技术在地图匹配过程中的应用以及定位和空间路网数据质量的提高,这些算法的性能得到了改善。但是,这些算法并不总是能够支持具有较高导航性能的ITS应用程序,尤其是在困难而复杂的环境中,例如密集的市区。这表明研究应针对确定现有地图匹配算法的任何约束和限制,作为制定算法改进的前提。因此,本文的目的是通过深入的文献综述来发现这些限制和局限,并提出解决这些问题的建议。本文还重点介绍了即将面世的欧洲伽利略系统和欧洲地球静止叠加服务(EGNOS)对地图匹配算法性能的潜在影响。尽管未详细介绍,但本文还提出了一些用于监视地图匹配算法完整性的想法。本文考虑的地图匹配算法是通用的,并且不假设了解``未来''信息(即基于成本或时间)。显然,这样的数据将导致相对简单的地图匹配算法。

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