Saltar para:
Logótipo
Você está em: Início > Publicações > Visualização > Enhancing intelligent transportation systems with a more efficient model for long-term traffic predictions based on an attention mechanism and a residual temporal convolutional network
Mapa das Instalações
FC6 - Departamento de Ciência de Computadores FC5 - Edifício Central FC4 - Departamento de Biologia FC3 - Departamento de Física e Astronomia e Departamento GAOT FC2 - Departamento de Química e Bioquímica FC1 - Departamento de Matemática

Enhancing intelligent transportation systems with a more efficient model for long-term traffic predictions based on an attention mechanism and a residual temporal convolutional network

Título
Enhancing intelligent transportation systems with a more efficient model for long-term traffic predictions based on an attention mechanism and a residual temporal convolutional network
Tipo
Artigo em Revista Científica Internacional
Ano
2025-12
Autores
Selim Reza
(Autor)
Outra
Ver página pessoal Sem permissões para visualizar e-mail institucional Pesquisar Publicações do Participante Sem AUTHENTICUS Sem ORCID
Marta Campos Ferreira
(Autor)
FEUP
J.J.M. Machado
(Autor)
FEUP
João Manuel R. S. Tavares
(Autor)
FEUP
Revista
Título: Neural NetworksImportada do Authenticus Pesquisar Publicações da Revista
Vol. 192 107897
Páginas: 1-17
ISSN: 0893-6080
Editora: Elsevier
Indexação
Publicação em ISI Web of Knowledge ISI Web of Knowledge - 0 Citações
Publicação em ISI Web of Science ISI Web of Science
Publicação em Scopus Scopus - 0 Citações
Clarivate Analytics
Classificação Científica
CORDIS: Ciências Tecnológicas
FOS: Ciências da engenharia e tecnologias
Outras Informações
ID Authenticus: P-019-MV9
Abstract (EN): Accurate traffic state prediction is fundamental to Intelligent Transportation Systems, playing a critical role in optimising traffic management, improving mobility, and enhancing the efficiency of transportation networks. Traditional methods often rely on feature engineering, statistical time-series approaches, and non-parametric techniques to model the inherent complexities of traffic states, incorporating external factors such as weather conditions and accidents to refine predictions. However, the effectiveness of long-term traffic state prediction hinges on capturing spatial-temporal dependencies over extended periods. Current models face challenges in dealing with (i) high-dimensional traffic features, (ii) error accumulation for multi-step prediction, and (iii) robustness to external factors effectively. To address these challenges, this study proposes a novel model with a Dynamic Feature Embedding layer designed to transform complex data sequences into meaningful representations and a Deep Linear Projection network that refines these representations through non-linear transformations and gating mechanisms. These two features make the model more scalable when dealing with high-dimensional traffic features. The model also includes a Spatial-Temporal Positional Encoding layer to capture spatial-temporal relationships, masked multi-head attention-based encoder blocks, and a Residual Temporal Convolutional Network to process features and extract short-and long-term temporal patterns. Finally, a Time-Distributed Fully Connected Layer produces accurate traffic state predictions up to 24 timesteps into the future. The proposed architecture uses a direct strategy for multi-step modelling to help predict timesteps non-autoregressively and thus circumvents the error accumulation problem. The model was evaluated against state-of-the-art baselines using two benchmark datasets. Experimental results demonstrated the model's superiority, achieving up to 21.17% and 29.30% average improvements in Root Mean Squared Error and 3.56% and 32.80% improvements in Mean Absolute Error compared to the baselines, respectively. The Friedman Chi-Square statistical test further confirmed the significant performance difference between the proposed model and its counterparts. The adversarial perturbations and random sensor dropout tests demonstrated its good robustness. On top of that, it demonstrated good generalizability through extensive experiments. The model effectively mitigates error accumulation in multi-step predictions while maintaining computational efficiency, making it a promising solution for enhancing Intelligent Transportation Systems.
Idioma: Inglês
Tipo (Avaliação Docente): Científica
Nº de páginas: 17
Documentos
Nome do Ficheiro Descrição Tamanho
paper Article 1057.27 KB
1-s2.0-S0893608025007786 1st Page 4516.25 KB
Publicações Relacionadas

Dos mesmos autores

Traffic State Prediction Using One-Dimensional Convolution Neural Networks and Long Short-Term Memory (2022)
Artigo em Revista Científica Internacional
Selim Reza; Marta Campos Ferreira; José J. M. Machado; João Manuel R. S. Tavares
Road Traffic Events Monitoring Using a Multi-Head Attention Mechanism-Based Transformer and Temporal Convolutional Networks (2025)
Artigo em Revista Científica Internacional
Selim Reza; Marta Campos Ferreira; J.J.M. Machado; João Manuel R. S. Tavares
An Actor-Critic-based adapted Deep Reinforcement Learning model for multi-step traffic state prediction (2025)
Artigo em Revista Científica Internacional
Selim Reza; Marta Campos Ferreira; J.J.M. Machado; João Manuel R. S. Tavares
A multi-head attention-based transformer model for traffic flow forecasting with a comparative analysis to recurrent neural networks (2022)
Artigo em Revista Científica Internacional
Selim Reza; Marta Campos Ferreira; José Joaquim M. Machado; João Manuel R. S. Tavares
A customized residual neural network and bi-directional gated recurrent unit-based automatic speech recognition model (2022)
Artigo em Revista Científica Internacional
Selim Reza; Marta Campos Ferreira; J.J.M. Machado; João Manuel R. S. Tavares

Ver todas (6)

Da mesma revista

The unimodal model for the classification of ordinal data (vol 21, pg 78, 2008) (2014)
Outras Publicações
Pinto da Costa, J; Alonso, H; Cardoso, JS
The unimodal model for the classification of ordinal data (2008)
Artigo em Revista Científica Internacional
Joaquirn Pinto P da Costa; Hugo Alonso; Jaime S Cardoso
Stability and synchronization of fractional-order memristive neural networks with multiple delays (2017)
Artigo em Revista Científica Internacional
Chen, LP; Cao, JD; Wu, RC; José Tenreiro Machado; António Mendes Lopes; Yang, HJ
Off-line simulation inspires insight: A neurodynamics approach to efficient robot task learning (2015)
Artigo em Revista Científica Internacional
Sousa, E; Erlhagen, W; Ferreira, F; Bicho, E

Ver todas (7)

Recomendar Página Voltar ao Topo
Copyright 1996-2026 © Faculdade de Ciências da Universidade do Porto  I Termos e Condições  I Acessibilidade  I Índice A-Z
Última actualização: 2016-03-23 I  Página gerada em: 2026-02-25 às 15:57:13 | Política de Privacidade | Política de Proteção de Dados Pessoais | Denúncias | Livro Amarelo Eletrónico