土地利用-人口-基于时间的交通预测的深度学习神经网络方法

A. Azad, Xin Wang
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引用次数: 1

摘要

土地利用和交通规划是相互依存的,也是预测城市发展的重要因素。近年来,基于土地利用以及其他几个变量的交通预测已经成为一个值得研究的领域。本文提出了深度神经网络回归(DNN-Regression)和递归神经网络(DNN-RNN)方法来预测交通流量。这些方法使用了三个关键变量:土地利用、人口统计和时间数据。使用从加拿大卡尔加里市收集的数据集,用其他方法对所提出的方法进行评估。提出的深度神经网络回归集中在人口和土地利用变量上进行交通预测。该研究还利用DNN-RNN对同一地理区域的交通进行了时间预测。DNN-RNN使用长短期记忆来预测交通流量。对比实验表明,提出的DNN-Regression和DNN-RNN模型优于其他方法。
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Deep Learning Neural Network Approaches to Land Use-demographic- Temporal based Traffic Prediction
Land use and transportation planning are inter-dependent, as well as being important factors in forecasting urban development. In recent years, predicting traffic based on land use, along with several other variables, has become a worthwhile area of study. In this paper, it is proposed that Deep Neural Network Regression (DNN-Regression) and Recurrent Neural Network (DNN-RNN) methods could be used to predict traffic. These methods used three key variables: land use, demographic and temporal data. The proposed methods were evaluated with other methods, using datasets collected from the City of Calgary, Canada. The proposed DNN-Regression focused on demographic and land use variables for traffic prediction. The study also predicted traffic temporally in the same geographical area by using DNN-RNN. The DNN-RNN used long short-term memory to predict traffic. Comparative experiments revealed that the proposed DNN-Regression and DNN-RNN models outperformed other methods.
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