交通流预测的混合时间序列预测模型

IF 0.8 4区 工程技术 Q4 TRANSPORTATION SCIENCE & TECHNOLOGY
Rajalakshmi V, G. S.
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引用次数: 1

摘要

交通流预测在当今的交通系统中是至关重要的,因为它需要建立一个交通计划,以确定一个旅行路线。本研究的目的是利用时间序列预测模型来估计未来的交通流量,以减少道路上的交通拥堵。最小化预测误差是交通预测中最困难的任务。为了预测未来的交通流量,该系统还需要车辆和道路的实时数据。为了解决这些问题,本文提出了多层感知器混合自回归综合移动平均(ARIMA-MLP)模型和混合自回归综合移动平均与递归神经网络(ARIMA-RNN)模型。交通数据来自英国公路数据集。采用随机游走模型对时序数据进行预处理。对自回归综合移动平均(ARIMA)、递归神经网络(RNN)和多层感知器(MLP)预测模型进行了训练和测试。在提出的ARIMA-MLP和ARI-MA-RNN混合模型中,使用ARIMA模型的残差来训练MLP和RNN模型。然后利用MAE、MSE、RMSE和R2 (ARIMA-MLP模型高峰时预测值为0.936763,非高峰时预测值为0.87638;ARIMA-RNN模型高峰时预测值为0.9416466,非高峰时预测值为0.931917)对混合系统的有效性进行评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Time-Series Forecasting Models for Traffic Flow Prediction
Traffic flow forecast is critical in today’s transportation system since it is necessary to construct a traffic plan in order to determine a travel route. The goal of this research is to use time-series forecasting models to estimate future traffic in order to reduce traffic congestion on roadways. Minimising prediction error is the most difficult task in traffic prediction. In order to anticipate future traffic flow, the system also requires real-time data from vehicles and roadways. A hybrid autoregressive integrated moving av-erage with multilayer perceptron (ARIMA-MLP) model and a hybrid autoregressive integrated moving average with recurrent neural network (ARIMA-RNN) model are proposed in this paper to address these difficulties. The transportation data are used from the UK Highways data-set. The time-series data are preprocessed using a random walk model. The forecasting models autoregressive inte-grated moving average (ARIMA), recurrent neural net-work (RNN), and multilayer perceptron (MLP) are trained and tested. In the proposed hybrid ARIMA-MLP and ARI-MA-RNN models, the residuals from the ARIMA model are used to train the MLP and RNN models. Then the ef-ficacy of the hybrid system is assessed using the metrics MAE, MSE, RMSE and R2 (peak hour forecast-0.936763, non-peak hour forecast-0.87638 on ARIMA-MLP model and peak hour forecast-0.9416466, non-peak hour fore-cast-0.931917 on ARIMA-RNN model).
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来源期刊
Promet-Traffic & Transportation
Promet-Traffic & Transportation 工程技术-运输科技
CiteScore
1.90
自引率
20.00%
发文量
62
审稿时长
3 months
期刊介绍: This scientific journal publishes scientific papers in the area of technical sciences, field of transport and traffic technology. The basic guidelines of the journal, which support the mission - promotion of transport science, are: relevancy of published papers and reviewer competency, established identity in the print and publishing profile, as well as other formal and informal details. The journal organisation consists of the Editorial Board, Editors, Reviewer Selection Committee and the Scientific Advisory Committee. The received papers are subject to peer review in accordance with the recommendations for international scientific journals. The papers published in the journal are placed in sections which explain their focus in more detail. The sections are: transportation economy, information and communication technology, intelligent transport systems, human-transport interaction, intermodal transport, education in traffic and transport, traffic planning, traffic and environment (ecology), traffic on motorways, traffic in the cities, transport and sustainable development, traffic and space, traffic infrastructure, traffic policy, transport engineering, transport law, safety and security in traffic, transport logistics, transport technology, transport telematics, internal transport, traffic management, science in traffic and transport, traffic engineering, transport in emergency situations, swarm intelligence in transportation engineering. The Journal also publishes information not subject to review, and classified under the following headings: book and other reviews, symposia, conferences and exhibitions, scientific cooperation, anniversaries, portraits, bibliographies, publisher information, news, etc.
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