短期交通流量的自适应复合时间序列预测模型

IF 8.6 2区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Journal of Big Data Pub Date : 2024-08-03 DOI:10.1186/s40537-024-00967-w
Qitan Shao, Xinglin Piao, Xiangyu Yao, Yuqiu Kong, Yongli Hu, Baocai Yin, Yong Zhang
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引用次数: 0

摘要

短期交通流量预测是智能交通领域的一个热点问题。过去几十年来,交通流预测研究领域取得了长足的发展。随着深度学习和神经网络的快速发展,人们提出了一系列有效的方法来解决短期交通流预测问题,这使得比以往任何时候都更准确地检查和预测交通状况成为可能。与基于线性的方法不同,基于深度学习的方法是通过探索交通流中复杂的非线性关系来实现交通流预测的。大多数现有方法始终只使用单一框架进行特征提取和预测。这些方法对所有交通流一视同仁,认为它们包含相同的属性。然而,来自不同时间点或道路的交通流可能包含不同的属性信息(如拥堵和不拥堵)。简单的单一框架通常会忽略不同数据分布中蕴含的不同属性。这会降低交通预测的准确性。为解决这些问题,我们提出了一种自适应复合框架,名为 "长短结合(LSC)"。在所提出的方法中,我们设计了两个数据预测模块(L 和 S),分别用于预测具有不同属性的短期交通流。此外,我们还集成了一个属性预测模块(C),用于预测未来时间序列中每个时间点的交通属性。我们在真实世界的数据集上对所提出的框架进行了评估。实验结果表明,所提出的模型具有出色的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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An adaptive composite time series forecasting model for short-term traffic flow

Short-term traffic flow forecasting is a hot issue in the field of intelligent transportation. The research field of traffic forecasting has evolved greatly in past decades. With the rapid development of deep learning and neural networks, a series of effective methods have been proposed to address the short-term traffic flow forecasting problem, which makes it possible to examine and forecast traffic situations more accurately than ever. Different from linear based methods, deep learning based methods achieve traffic flow forecasting by exploring the complex nonlinear relationships in traffic flow. Most existing methods always use a single framework for feature extraction and forecasting only. These approaches treat all traffic flow equally and consider them contain same attribute. However, the traffic flow from different time spots or roads may contain distinct attributes information (such as congested and uncongested). A simple single framework usually ignore the different attributes embedded in different distributions of data. This would decrease the accuracy of traffic forecasting. To tackle these issues, we propose an adaptive composite framework, named Long-Short-Combination (LSC). In the proposed method, two data forecasting modules(L and S) are designed for short-term traffic flow with different attributes respectively. Furthermore, we also integrate an attribute forecasting module (C) to forecast the traffic attributes for each time point in future time series. The proposed framework has been assessed on real-world datasets. The experimental results demonstrate that the proposed model has excellent forecasting performance.

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来源期刊
Journal of Big Data
Journal of Big Data Computer Science-Information Systems
CiteScore
17.80
自引率
3.70%
发文量
105
审稿时长
13 weeks
期刊介绍: The Journal of Big Data publishes high-quality, scholarly research papers, methodologies, and case studies covering a broad spectrum of topics, from big data analytics to data-intensive computing and all applications of big data research. It addresses challenges facing big data today and in the future, including data capture and storage, search, sharing, analytics, technologies, visualization, architectures, data mining, machine learning, cloud computing, distributed systems, and scalable storage. The journal serves as a seminal source of innovative material for academic researchers and practitioners alike.
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