一种混合自回归分数积分移动平均与非线性自回归神经网络的短期交通流预测模型

IF 2.8 3区 工程技术 Q3 TRANSPORTATION Journal of Intelligent Transportation Systems Pub Date : 2023-01-02 DOI:10.1080/15472450.2021.1977639
Xuecai Xu , Xiaofei Jin , Daiquan Xiao , Changxi Ma , S.C. Wong
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引用次数: 13

摘要

智能交通控制与引导系统是解决城市交通拥堵、提高道路通行能力、保障驾驶员出行安全的有效途径,而短时交通流量预测是智能交通控制和引导系统的核心。为了研究短时交通流时间序列的长期记忆和动态特征,将自回归分数积分移动平均(ARFIMA)模型和非线性自回归(NAR)神经网络模型相结合,提出了一种预测短时交通流的混合模型,其中ARFIMA模型可以解决线性分量的长期记忆问题,NAR神经网络可以适应非线性残差分量的动态特征。首先,采用ARFIMA模型对交通流的线性分量进行预测,并与自回归综合移动平均(ARIMA)模型的结果进行了比较。其次,采用NAR神经网络模型对非线性残差分量进行预测,并将加权结果作为混合模型的预测流量。通过使用从开放访问的PeMS数据库中获得的加州高速公路的横断面交通流量数据,验证了所提出的混合模型。结果表明,考虑长期记忆的ARFIMA模型能够有效地预测短期交通流量,混合模型的预测精度优于奇异模型。研究结果为短期交通流量预测提供了一种误差较小、精度较高的方法。
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A hybrid autoregressive fractionally integrated moving average and nonlinear autoregressive neural network model for short-term traffic flow prediction

Intelligent traffic control and guidance system is an effective way to solve urban traffic congestion, improve road capacity and guarantee drivers' travel safety, while short-term traffic flow prediction is the core of intelligent traffic control and guidance system. To investigate the long-term memory and the dynamic feature of short-time traffic flow time series, a hybrid model was proposed by integrating autoregressive fractionally integrated moving average (ARFIMA) model and nonlinear autoregressive (NAR) neural network model to predict short-time traffic flow, in which ARFIMA model can address the long-term memory of linear component and NAR neural network can accommodate the dynamic feature of nonlinear residual component. First, the ARFIMA model was employed to predict the linear component of traffic flow, and the results were compared with those of autoregressive integrated moving average (ARIMA) model. Next, the NAR neural network model was adopted to forecast the nonlinear residual components, and the weighted results were considered as the predicted flow of the hybrid model. The proposed hybrid model was validated by using the cross-sectional traffic flow data in California freeways obtained from the open-access PeMS database. The results showed that the ARFIMA model considering the long-term memory can effectively predict the short-term traffic flow, and the prediction accuracy of the hybrid model is better than that of the singular models. The findings provide an alternative for the short-term traffic flow prediction with lower error and higher accuracy.

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来源期刊
CiteScore
8.80
自引率
19.40%
发文量
51
审稿时长
15 months
期刊介绍: The Journal of Intelligent Transportation Systems is devoted to scholarly research on the development, planning, management, operation and evaluation of intelligent transportation systems. Intelligent transportation systems are innovative solutions that address contemporary transportation problems. They are characterized by information, dynamic feedback and automation that allow people and goods to move efficiently. They encompass the full scope of information technologies used in transportation, including control, computation and communication, as well as the algorithms, databases, models and human interfaces. The emergence of these technologies as a new pathway for transportation is relatively new. The Journal of Intelligent Transportation Systems is especially interested in research that leads to improved planning and operation of the transportation system through the application of new technologies. The journal is particularly interested in research that adds to the scientific understanding of the impacts that intelligent transportation systems can have on accessibility, congestion, pollution, safety, security, noise, and energy and resource consumption. The journal is inter-disciplinary, and accepts work from fields of engineering, economics, planning, policy, business and management, as well as any other disciplines that contribute to the scientific understanding of intelligent transportation systems. The journal is also multi-modal, and accepts work on intelligent transportation for all forms of ground, air and water transportation. Example topics include the role of information systems in transportation, traffic flow and control, vehicle control, routing and scheduling, traveler response to dynamic information, planning for ITS innovations, evaluations of ITS field operational tests, ITS deployment experiences, automated highway systems, vehicle control systems, diffusion of ITS, and tools/software for analysis of ITS.
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