交通网络中加速度作为速度和道路类型函数的概率建模

M. Abou Zeid, I. Chabini, E. Nam, A. Cappiello
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引用次数: 11

摘要

统计加速和减速分布作为速度和道路类型的函数。该方法允许在给定速度的链路上估计车辆之间的加速和减速变化。加速度是一个随机变量,它遵循的概率分布实际上与道路类型无关。对于给定的数据集,这个分布对于加速度和减速都是半正态分布。此外,随着速度范围的增大,分布的标准差减小。开发的模型有许多应用,特别是在非微观交通模型中需要对加速度进行建模的情况下。在这种情况下,瞬时排放模型从这种分析中获益最多,因为这些模型考虑了发动机运行、加速或其他导致尾气排放的功率替代项。本文的结果也适用于设计和验证调节驱动循环。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic modeling of acceleration in traffic networks as a function of speed and road type
Statistical acceleration and deceleration distributions are developed as a function of speed and road type. The approach allows for the estimation of acceleration and deceleration variation among vehicles on a link with a given speed. Acceleration is shown to be a random variable that follows a probabilistic distribution that is practically independent of the road type. For the given data set, this distribution is a half-normal distribution for both acceleration and deceleration. Moreover, the standard deviation of the distributions decreases as the speed range increases. The developed model has a number of applications, especially where acceleration needs to be modeled as in the case of non-microscopic traffic models. In such context, instantaneous emission models benefit most from this analysis as these models account for engine operation, accelerations, or other power surrogate terms, which lead to the generation of tailpipe emissions. Results of this paper also have applications for designing and validating regulatory driving cycles.
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