基于核的交通系统密度估计建模与优化

Arash Tabibiazar, O. Basir
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引用次数: 17

摘要

交通拥堵是许多城市尤其是市区面临的主要问题之一。适当的解决方案来自于对交通数据的建模和对拥塞特征的理解。人们开发了各种方法来解决这个问题,然而,仍然需要开发新的方法。本文利用一种基于核密度估计的方法,从浮动汽车数据中采集带时间戳的位置样本,提取城市区域的拥堵点。开发了一个概率框架,以广义高斯密度对交通数据进行建模,然后通过最小化位置样本的Dirac分布的局部累积分布和兴趣点的高斯混合分布之间的Cramer-von Mises距离,在一个预定义的时间窗口内以兴趣点为中心,在一个近似函数中找到核的优化权重。通过优化核权值得到的近似密度函数可用于估计特定时间和空间内的机动车辆密度。对流量数据进行建模以提取所需的参数,可以显著提高性能。该方法适用于实际测量,可在交通管理系统中实时实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel-based modeling and optimization for density estimation in transportation systems using floating car data
Traffic congestion is one of major problems in numerous cities especially in urban areas. An appropriate solution comes from the modeling of traffic data and understanding the congestion characteristics. Various methods were developed to solve this problem, however, still necessary to develop new approaches. In this paper, a kernel-based density estimation method is utilized to extract the congestion spots in urban areas based on collected position samples with time-stamp from floating car data. A probabilistic framework is developed to model the traffic data with generalized Gaussian density and then to find optimized weights of kernels in an approximation function, centered at points-of-interest by minimizing the Cramer-von Mises distance between localized cumulative distributions of mixture of Dirac distributions of position samples and Gaussian mixtures of points-of-interest in a pre-defined time window. The approximation density function by optimized kernels' weights can be used to estimate the mobile vehicles density in a specific time and space. Modeling the traffic data to extract the required parameters improves the performance significantly. The proposed method is applied to real measurements and can be implemented in real time in traffic management systems.
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