基于量纲分析的交通密度估计

S. Amritha, S. Subramanian, L. Vanajakshi
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引用次数: 3

摘要

交通密度定义为每单位长度的车辆数量,是量化道路拥堵的主要指标。然而,由于该变量的空间性质,直接测量它是困难的,唯一的方法是从现场直接测量它是航空摄影。因此,通常从其他容易测量的变量,如速度或流量来估计。除了基于统计、机器学习或基于模型的方法之外,一些报道的获得密度的方法包括输入输出分析、基本交通流量关系和基于占用率的测量。然而,为了获得更好的性能,所有这些方法都需要仔细选择相关的输入变量/参数及其关系。获得这些关系的一种方法是对所涉及的变量/参数进行量纲分析,识别无量纲变量/参数,然后使用实验数据获得它们之间的关系。本文尝试用这种方法估计道路交通密度。首先确定表征道路交通流的适当的无量纲变量/参数,然后利用模拟数据找出它们之间的关系。这种关系随后被用于估计其他数据集的密度,结果被发现是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic density estimation using dimensional analysis
Traffic density, defined as the number of vehicles per unit length, is the primary measure used for quantifying road congestion. However, the direct measurement of this variable is difficult due to its spatial nature and the only method to directly measure it from field is aerial photography. Hence, it is usually estimated from other easily measurable variables such as speed or flow. Some of the reported approaches to obtain density include the input output analysis, fundamental traffic flow relation, and occupancy-based measurements in addition to those based on statistics, machine learning or model-based approaches. However, for better performance, all these methods require the careful selection of the relevant input variables/parameters and their relationships. One way of obtaining these relationships is to perform a dimensional analysis of the variables/parameters involved, identifying the non-dimensional variables/parameters and then obtaining a relationship between them using experimental data. This approach has been attempted for estimating road traffic density in this paper. The appropriate non-dimensional variables/parameters that characterize road traffic flow were first determined and the relation between them was then found out using simulated data. This relationship was subsequently used to estimate density for other datasets and the results were found to be promising.
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