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Driving Big Data: A First Look at Driving Behavior via a Large-Scale Private Car Dataset

机译:驾驶大数据:首先通过大型私人汽车数据集进行驾驶行为

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The increasing number of privately owned vehicles in large metropolitan cities has contributed to traffic congestion, increased energy waste, raised CO2 emissions, and impacted our living conditions negatively. Analysis of data representing citizens' driving behavior can provide insights to reverse these conditions. This article presents a large-scale driving status and trajectory dataset consisting of 426,992,602 records collected from 68,069 vehicles over a month. From the dataset, we analyze the driving behavior and produce random distributions of trip duration and millage to characterize car trips. We have found that a private car has more than 17% probability to make four trips per day, and a trip has more than 25% probability to last 20-30 minutes and 33% probability to travel 10 Kilometers during the trip. The collective distributions of trip mileage and duration follow Weibull distribution, whereas the hourly trips follow the well known diurnal pattern and so the hourly fuel efficiency. Based on these findings, we have developed an application which recommends the drivers to find the nearby gas stations and possible favorite places from past trips. We further highlight that our dataset can be applied for developing dynamic Green maps for fuel-efficient routing, modeling efficient Vehicle-to-Vehicle (V2V) communications, verifying existing V2V protocols, and understanding user behavior in driving their private cars.
机译:大都市城市越来越多的私人车辆促成了交通拥堵,增加能源浪费,提高二氧化碳排放,并对我们的生活条件负面影响。代表公民驾驶行为的数据分析可以提供逆转这些条件的见解。本文介绍了大型驾驶状态和轨迹数据集,由426,992,602条记录,从68,069辆超过一个月内收集。从数据集中,我们分析了驾驶行为并产生了跳闸持续时间和米金列的随机分布,以表征汽车旅行。我们发现私家车有超过17%的概率来每天进行四次旅行,并且在旅途中持续20-30分钟的概率超过25%以上的概率和33%的概率在旅途中旅行10公里。旅行里程和持续时间的集体分布遵循Weibull分布,而每小时旅行遵循众所周知的昼夜图案,因此每小时燃油效率。基于这些调查结果,我们开发了一个应用程序,推荐司机在过去的旅行中找到附近的加油站和可能最喜欢的地方。我们进一步突出显示我们的数据集可以应用于开发动态绿色地图,以便为省油路由,建模高效的车辆到车辆(V2V)通信,验证现有的V2V协议,并了解驾驶私人车辆的用户行为。

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