基于车联网、智能交通系统和机器学习的交通服务跟踪系统原型

IF 2.6 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC World Electric Vehicle Journal Pub Date : 2023-09-14 DOI:10.3390/wevj14090261
Camilo Andrés Sánchez Díaz, Anderson Stive Díaz Lucio, Ricardo Salazar-Cabrera, Álvaro Pachón de la Cruz, Juan Manuel Madrid Molina
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引用次数: 0

摘要

城市的公共交通服务应该是市民最高效、污染最少、最便捷和可持续的交通工具。但是,主要在发展中国家的中等城市发现了严重的缺点。这些缺点与缺乏用户信息、不安全、服务可用性低以及在不适当和/或未经授权的地方反复停站有关。其中一些缺点导致了高事故率和交通拥堵。开发工具以改善城市交通服务的特点和条件已成为提高市民生活质量和城市可持续性的迫切需要。交通服务跟踪涉及的方面包括向旅客提供在线位置信息,以及运输公司对速度限制、时间表、路线和站点的控制。本研究提出一种基于车联网(IoV)的车辆到路边(V2R)分类的交通车辆跟踪系统。由于跟踪装置的低功耗,所提出的系统非常适合使用电动汽车。该系统采用智能交通系统(ITS)跟踪服务架构、远程(LoRa)通信技术及其LoRa广域网(LoRaWAN)协议。此外,该系统在没有位置数据的情况下提供实时位置预测。车联网跟踪设备集成了GPS-LoRa模块卡和惯性测量单元(IMU)。实现了一种位置预测算法,利用先前从跟踪设备收集的数据训练和存储预测模型。为了评价开发的模型,在Popayán市(哥伦比亚)实施了一项案例研究,使用三条路线进行测试。系统实施结果令人满意,在最后的现场测试中,通过LoRa通信获得了平均60.4%的路由覆盖率。其余39.6%的路线采用位置数据预测,相对于实际位置的平均精度为177 m。考虑到所获得的结果,本文提出的跟踪系统可以用于发展中国家中型城市的交通系统,以提高服务质量和车队控制。
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Prototype of a System for Tracking Transit Service Based on IoV, ITS, and Machine Learning
The transit service in a city should be the most efficient, least polluting, most accessible, and sustainable means of transportation for its citizens. However, serious shortcomings have been detected, mainly in medium-sized cities in developing countries. These shortcomings are related to a lack of user information, insecurity, low service availability, and repeated stops in inappropriate and/or unauthorized places. Some of these shortcomings contribute to high accident rates and traffic congestion. The development of tools to improve the characteristics and conditions of transit service in cities has become an imperative need to improve the quality of life of citizens and city sustainability. Transit service tracking is relevant in aspects such as online location information to travelers and control by transport companies for compliance with speed limits, schedules, routes, and stops. This research proposes a transit vehicle tracking system based on the Internet of Vehicles (IoV) in Vehicle-to-Roadside (V2R) classification. The proposed system is ideal for the use of electric vehicles due to the low power consumption of the tracking device. This system uses Intelligent Transportation Systems (ITS) tracking service architecture, Long Range (LoRa) communication technology, and its LoRa Wide Area Network (LoRaWAN) protocol. Additionally, the system offers real-time location prediction in the absence of position data. The IoV tracking device integrates a GPS-LoRa module card with an Inertial Measurement Unit (IMU). A location prediction algorithm was implemented to train and store a prediction model with previously collected data from tracking devices. To evaluate the developed model, a case study in the city of Popayán (Colombia) was implemented, using three routes for testing. The results of the system implementation were satisfactory, obtaining an average coverage of 60.4% of the routes in the final field tests through LoRa communication. For the remaining 39.6% of the routes, location data prediction was used, with an average accuracy of 177 m with respect to the real location. Considering the obtained results, a tracking system such as the one proposed in this article can be used in the transit systems of medium-sized cities in developing countries to improve service quality and fleet control.
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来源期刊
World Electric Vehicle Journal
World Electric Vehicle Journal Engineering-Automotive Engineering
CiteScore
4.50
自引率
8.70%
发文量
196
审稿时长
8 weeks
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