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Vehicle Energy/Emissions Estimation Based on Vehicle Trajectory Reconstruction Using Sparse Mobile Sensor Data

机译:基于稀疏移动传感器数据的车辆轨迹重建的车辆能量/排放估计

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摘要

Microscopic vehicle emissions models have been well developed in the past decades. Those models require second-by-second vehicle trajectory data as a key input to perform vehicle energy/emissions estimation. Due to the omnipresence of mobile sensors such as floating cars, real-world vehicle trajectory data can be collected in a large scale. However, most large-scaled mobile sensor data in practice are sparse in terms of sampling rate due to the consideration in implementation cost. In this paper, a new modal activity framework for vehicle energy/emissions estimation using sparse mobile sensor data is presented. The valid vehicle dynamic states are identified including four driving modes, named acceleration, deceleration, cruising, and idling. The best valid vehicle dynamic state with the largest probabilities is selected to reconstruct the second-by-second vehicle trajectory between consecutive sampling times. Then vehicle energy/emissions factors are estimated based on operating mode distributions. The proposed model is calibrated and validated using the Next Generation Simulation's dataset, and shows better performance in vehicle energy/emissions estimation compared with the linear interpolation model. Sensitivity analysis is performed to show the model accuracy with different time intervals. This paper provides a new methodology for vehicle energy/emissions estimation and extends the application area of sparse mobile sensor data.
机译:在过去的几十年里,微观车辆排放模型已经过分发展。这些模型需要二次第二车辆轨迹数据作为执行车辆能量/发射估计的键输入。由于浮动汽车等移动传感器的无所不在,可以大规模收集现实世界的车辆轨迹数据。然而,由于实施成本的考虑,在实践中,大多数大规模的移动传感器数据在采样率方面是稀疏的。本文介绍了使用稀疏移动传感器数据的车辆能量/排放估计的新模态活动框架。识别有效的车辆动态状态,包括四种驾驶模式,命名为加速,减速,巡航和空转。选择具有最大概率的最佳有效车辆动态状态以在连续采样时间之间重建第二逐行车辆轨迹。然后基于操作模式分布估计车辆能量/排放因子。使用下一代模拟数据集进行校准并验证所提出的模型,并与线性插值模型相比,在车辆能量/排放估计中显示出更好的性能。执行灵敏度分析以显示不同时间间隔的模型精度。本文为车辆能量/排放估计提供了一种新的方法,并扩展了稀疏移动传感器数据的应用领域。

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