经典汽车跟随模型与人工神经网络之间的联系

Fangyu Wu, D. Work
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引用次数: 16

摘要

本文通过微观(即车辆)尺度的建模来考虑交通建模问题。通过一个可以精确表示为人工神经网络的汽车跟随模型的实例,将经典的常微分方程模型与基于数据驱动的人工神经网络(ANN)模型联系起来。在一组数值实验中,提出了四种人工神经网络模型(结构范围从能够准确捕获经典汽车跟随模型的模型到通用神经网络模型),然后从数据中训练并评估其结果的准确性。研究表明,通过在神经网络中添加结构(即通过结构和激活函数),有可能优于一般的人工神经网络模型来处理突发现象,如停波和行波。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Connections between classical car following models and artificial neural networks
This article considers the problem of traffic modeling via modeling at the microscopic (i.e., vehicle) scale. It provides a connection between classical ordinary differential equation based models and data driven artificial neural network (ANN) based models by showing an example of a car following model which can be exactly expressed as an ANN. In a set of numerical experiments, four ANN models (ranging in structure from a model that is able to exactly capture a classical car following model, to a generic neural network model) are proposed and then trained from data and their resulting accuracy is assessed. It is shown that by adding structure into the neural network (i.e., via the architecture and the activation functions), it is possible to outperform generic ANN models to emergent phenomena such as stop and go waves.
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