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GreenPlanner: Planning personalized fuel-efficient driving routes using multi-sourced urban data

机译:GreenPlanner:使用多源城市数据规划个性化省油驾驶路线

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Greenhouse gas emission by the increasing number of vehicles have become a significant problem in modern cities. To save energy and protect environment, recommending fuel-efficient routes to drivers becomes a promising way to alleviate this issue. To this end, in this paper, we present a novel fuel-efficient path-planning framework called GreenPlanner, which contains two phases. In the first phase, we build a personalized fuel consumption model (PFCM) for each driver, based on the individual driving behaviors and the physical features (e.g., traffic lights, stop signs, road network topology) along the routes. In the second phase, with the real-time traffic information collected via the mobile crowdsensing manner, we are able to estimate and compare the cost fuel among different routes for a given driver, and recommend him/her with the most fuel-efficient one. We evaluate the two-phase framework using the real-world datasets, consisting of road network, POI, the GPS trajectory data and the OBD-II data generated by 559 taxis in one day in the city of Beijing, China. Experimental results demonstrate that, compared to the baseline models, the proposed model achieves the best accuracy, with a mean fuel consumption error of less 7% for paths longer than 10 km. Moreover, users could save about 20% fuel consumption on average if driving along our suggested routes in our case studies.
机译:越来越多的车辆排放温室气体已经成为现代城市中的重要问题。为了节省能源和保护环境,向驾驶员推荐省油的路线已成为缓解该问题的一种有前途的方法。为此,在本文中,我们提出了一个名为GreenPlanner的新型节油路径规划框架,该框架包含两个阶段。在第一阶段,我们根据路线上的个人驾驶行为和物理特征(例如,交通信号灯,停车标志,道路网络拓扑),为每个驾驶员建立个性化的油耗模型(PFCM)。在第二阶段中,通过移动人群感知方式收集的实时路况信息,我们能够估算和比较给定驾驶员在不同路线之间的成本燃油,并向其推荐燃油效率最高的驾驶员。我们使用现实世界的数据集(包括道路网络,POI,GPS轨迹数据和一天之内由559辆出租车在中国北京市产生的OBD-II数据)评估了两阶段框架。实验结果表明,与基线模型相比,所提出的模型达到了最佳精度,对于超过10 km的路径,平均油耗误差小于7%。此外,如果按照我们的案例研究中建议的路线行驶,用户平均可节省约20%的燃油消耗。

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