基于神经网络的交通密度矩阵公共交通预测方法

Dancho Panovski, Veronica Scurtu, T. Zaharia
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引用次数: 5

摘要

在当今的现代城市中,机动性是至关重要的,尤其是公共交通。主要目标是针对给定的实际问题提出解决方案,具体涉及到各个公交车站的公交到达时间,并考虑到当地的交通状况。我们表明,在一些全局宏观参数(例如,车辆或行人总数)下,全局预测方法是不可行的。这一观察结果使我们引入了一种更细粒度的方法,其中交通状况用交通密度矩阵表示。在这种新范式下,线性和神经网络(NN)方法的实验结果都显示出良好的预测性能。因此,与基本的线性回归相比,神经网络方法的预测精度提高了24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural Network-based Approach for Public Transportation Prediction with Traffic Density Matrix
In today's modern cities, mobility is of crucial importance, and public transportation is particularly concerned. The main objective is to propose solutions to a given, practical problem, which specifically concerns the bus arrival time at various bus stop stations, by taking to account local traffic conditions. We show that a global prediction approach, under some global macro-parameters (e.g., total number of vehicles or pedestrians) is not feasible. This observation leads us to the introduction of a finer granularity approach, where the traffic conditions are represented in terms of a traffic density matrix. Under this new paradigm, the experimental results obtained with both linear and neural networks (NN) approaches show promising prediction performances. Thus, the NN approach yields 24% more accurate prediction performances than a basic, linear regression.
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