Multi-modal graph convolutional network for vessel trajectory prediction based on cooperative intention enhance using conditional variational autoencoder
Artikel i vetenskaplig tidskrift, 2026

Advances in maritime instrumentation and measurement (I&M), particularly through the widespread adoption of automatic identification system (AIS), have significantly accelerated the development of intelligent situational awareness systems (ISAS). As a critical component of ISAS, cooperative navigation demands greater accuracy and reliability in vessel trajectory prediction. Nevertheless, challenges arising from complex inter-vessel interactions and implicit intention inference expose limitations in modeling explicit and implicit relationships and ensuring the robustness of trajectory prediction. To address these challenges, we propose a cooperative intention enhance multi-modal graph convolutional network (CIE-MGCN) to learn and predict the future vessel trajectories. The CIE-MGCN is composed of three primary components: Interaction Extractor, Intention Constructor, and Trajectory Generator. In Interaction Extractor, we designed the social-community extractor (SCE) to construct diverse interaction graphs that capture both cooperative and adversarial relationships among vessel trajectories, and the multi-modal transformer (MMT) to fuse explicit interaction features across various modalities. In Intention Constructor, we introduce a conditional variational autoencoder (CVAE)-based approach to infer implicit relationships and capture potential future behavioral variations and multi-modal probability distributions of future trajectories are produced by Trajectory Generator. Extensive experiments on real-world navigation data show that CIE-MGCN outperforms state-of-the-art models in accuracy and robustness, owing to its strong reasoning and learning capabilities. These reliable predictions further support cooperative navigation within ISAS by enhancing coordination and decision-making among multi-vessel.

Graph convolutional network

Trajectory prediction

Cooperative intention constructor

Intelligent situational awareness systems

Conditional variational autoencoder

Multi-modal interaction extractor

Författare

Junhao Jiang

Dalian Maritime University

Yi Zuo

Dalian Maritime University

Kansai University

Zhiyuan Li

Chalmers, Mekanik och maritima vetenskaper, Marin teknik

Reliability Engineering and System Safety

0951-8320 (ISSN)

Vol. 267 111885

Ämneskategorier (SSIF 2025)

Robotik och automation

Datavetenskap (datalogi)

DOI

10.1016/j.ress.2025.111885

Mer information

Senast uppdaterat

2025-11-24