Inferring gas consumption and pollution emission of vehicles throughout a city

Jingbo Shang, Yu Zheng, Wenzhu Tong, Eric Chang, Yong Yu
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引用次数: 262

Abstract

This paper instantly infers the gas consumption and pollution emission of vehicles traveling on a city's road network in a current time slot, using GPS trajectories from a sample of vehicles (e.g., taxicabs). The knowledge can be used to suggest cost-efficient driving routes as well as identifying road segments where gas has been wasted significantly. The instant estimation of the emissions from vehicles can enable pollution alerts and help diagnose the root cause of air pollution in the long run. In our method, we first compute the travel speed of each road segment using the GPS trajectories received recently. As many road segments are not traversed by trajectories (i.e., data sparsity), we propose a Travel Speed Estimation (TSE) model based on a context-aware matrix factorization approach. TSE leverages features learned from other data sources, e.g., map data and historical trajectories, to deal with the data sparsity problem. We then propose a Traffic Volume Inference (TVI) model to infer the number of vehicles passing each road segment per minute. TVI is an unsupervised Bayesian Network that incorporates multiple factors, such as travel speed, weather conditions and geographical features of a road. Given the travel speed and traffic volume of a road segment, gas consumption and emissions can be calculated based on existing environmental theories. We evaluate our method based on extensive experiments using GPS trajectories generated by over 32,000 taxis in Beijing over a period of two months. The results demonstrate the advantages of our method over baselines, validating the contribution of its components and finding interesting discoveries for the benefit of society.
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推断全市车辆的油耗和污染排放情况
本文利用车辆样本(如出租车)的GPS轨迹,即时推断出当前时段在城市道路网络上行驶的车辆的油耗和污染排放。这些知识可以用来建议具有成本效益的驾驶路线,并确定汽油浪费严重的路段。从长远来看,对车辆排放的即时估计可以实现污染警报,并有助于诊断空气污染的根本原因。在我们的方法中,我们首先使用最近收到的GPS轨迹计算每个路段的行驶速度。由于许多路段没有经过轨迹(即数据稀疏性),我们提出了一种基于上下文感知矩阵分解方法的行驶速度估计(TSE)模型。TSE利用从其他数据源学习的特征,例如地图数据和历史轨迹,来处理数据稀疏性问题。然后,我们提出了一个交通量推断(TVI)模型来推断每分钟通过每个路段的车辆数量。TVI是一种无监督贝叶斯网络,它结合了多种因素,如行驶速度、天气条件和道路的地理特征。给定路段的行驶速度和交通量,可以根据现有的环境理论计算油耗和排放量。我们利用北京32000多辆出租车在两个月的时间里生成的GPS轨迹进行了广泛的实验,以此来评估我们的方法。结果证明了我们的方法比基线的优势,验证了其组成部分的贡献,并为社会的利益找到了有趣的发现。
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