基于神经常微分方程和时空自适应网络的交通流预测模型构建。

IF 3.9 2区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Li Ma, Yunshun Wang, Xiaoshi Lv, Lijun Guo
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引用次数: 0

摘要

为解决短期交通流预测中的时空错觉问题,深入挖掘短期交通流网络特征,提出了一种将长期时空异质性与短期时空特征相结合的交通流预测模型。在长期时空分支中,采用Transformer结构,利用自监督掩蔽机制分别对长期时空维度的异质性进行预训练。在此基础上,设计了一个时空自适应模块,以适应和指导跨时间序列和交通流网络的短期交通流预测。在短时时空分支,设计了递归神经常微分方程(ODE)模块。该模块能够对短期时空特征进行连续动态调整,更好地捕捉和挖掘潜在的短期时空特征。该模块通过多次循环,逐步准确提取和压缩路网特征,整合适应的时空异质性,在解码器中重构未来短期交通流。在4个交通流和2个交通速度数据集上进行了实验,结果表明,与传统时间序列模型相比,该模型的预测精度指标平均提高了45.09%、39.14%和0.47%;与循环神经网络(RNN)系列模型相比,平均改进率分别为18.91%、15.77%和0.18%;与图卷积序列模型相比,平均提高21.31%、16.65%和0.21%;与Transformer系列机型相比,平均提高了6.57%、6.23%和0.05%。通过对交通速度数据集的多步实验,验证了该模型在交通速度场景下的通用性和良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Construction of a traffic flow prediction model based on neural ordinary differential equations and Spatiotemporal adaptive networks.

Construction of a traffic flow prediction model based on neural ordinary differential equations and Spatiotemporal adaptive networks.

Construction of a traffic flow prediction model based on neural ordinary differential equations and Spatiotemporal adaptive networks.

Construction of a traffic flow prediction model based on neural ordinary differential equations and Spatiotemporal adaptive networks.

To address the issue of spatiotemporal illusion in short-term traffic flow prediction and deeply explore the underlying short-term traffic flow network characteristics, a traffic flow prediction model that combines long-term spatiotemporal heterogeneity with short-term spatiotemporal features is proposed. In the long-term spatiotemporal branch, the Transformer structure is employed, and a self-supervised masking mechanism is utilized to pretrain the heterogeneity in long-term temporal and spatial dimensions separately. Additionally, a spatiotemporal adaptive module is designed, which adapts to and guides short-term traffic flow prediction across time series and traffic flow networks. In the short-term spatiotemporal branch, a recurrent neural ordinary differential equation (ODE) module is devised. This module is capable of continuously and dynamically adjusting short-term spatiotemporal features, better capturing and exploring potential short-term spatiotemporal characteristics. Through multiple cycles, this module gradually and accurately extracts and compresses road network features, integrates the adapted spatiotemporal heterogeneity, and reconstructs future short-term traffic flows in the decoder. Experiments are conducted on four traffic flow and two traffic speed datasets, showing that compared to traditional time series models, the proposed model's prediction accuracy indicators have relatively improved by 45.09%, 39.14%, and 0.47% on average; compared to recurrent neural network (RNN) series models, the improvements are 18.91%, 15.77%, and 0.18% on average; compared to graph convolution series models, the improvements are 21.31%, 16.65%, and 0.21% on average; and compared to Transformer series models, the improvements are 6.57%, 6.23%, and 0.05% on average. The model's general applicability and good performance in transportation speed scenarios were verified through a multi-step experiment conducted on the transportation speed dataset.

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来源期刊
Scientific Reports
Scientific Reports Natural Science Disciplines-
CiteScore
7.50
自引率
4.30%
发文量
19567
审稿时长
3.9 months
期刊介绍: We publish original research from all areas of the natural sciences, psychology, medicine and engineering. You can learn more about what we publish by browsing our specific scientific subject areas below or explore Scientific Reports by browsing all articles and collections. Scientific Reports has a 2-year impact factor: 4.380 (2021), and is the 6th most-cited journal in the world, with more than 540,000 citations in 2020 (Clarivate Analytics, 2021). •Engineering Engineering covers all aspects of engineering, technology, and applied science. It plays a crucial role in the development of technologies to address some of the world''s biggest challenges, helping to save lives and improve the way we live. •Physical sciences Physical sciences are those academic disciplines that aim to uncover the underlying laws of nature — often written in the language of mathematics. It is a collective term for areas of study including astronomy, chemistry, materials science and physics. •Earth and environmental sciences Earth and environmental sciences cover all aspects of Earth and planetary science and broadly encompass solid Earth processes, surface and atmospheric dynamics, Earth system history, climate and climate change, marine and freshwater systems, and ecology. It also considers the interactions between humans and these systems. •Biological sciences Biological sciences encompass all the divisions of natural sciences examining various aspects of vital processes. The concept includes anatomy, physiology, cell biology, biochemistry and biophysics, and covers all organisms from microorganisms, animals to plants. •Health sciences The health sciences study health, disease and healthcare. This field of study aims to develop knowledge, interventions and technology for use in healthcare to improve the treatment of patients.
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