用于智能交通系统中船舶轨迹预测的双向信息融合驱动深度网络

Huanhuan Li , Wenbin Xing , Hang Jiao , Kum Fai Yuen , Ruobin Gao , Yan Li , Christian Matthews , Zaili Yang
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引用次数: 0

摘要

准确的船舶轨迹预测(STP)对于实现船舶碰撞预警和确保海上安全至关重要。在人工智能技术进步的推动下,基于深度学习的 STP 已成为船舶避碰研究领域的主流方法。本文在对现有 STP 研究进展进行前沿调查的基础上,针对该领域经典方法的弊端,旨在开发一种新的双向信息融合驱动预测模型,以实现更精确的 STP 结果。在此背景下,通过将两个双向网络按特定顺序组合,建立了级联网络模型。它将双向长短时记忆(BiLSTM)和双向门控递归单元(BiGRU)神经网络整合为一个单一的三层信息增强网络。它利用这两个网络的优势,实现了更精确的船舶轨迹预测。此外,利用来自三个水域的自动识别系统(AIS)数据对所提出模型的性能进行了全面评估,这些数据代表了不同安全问题的交通场景。通过与其他二十种方法(包括文献中最先进的 STP)的对比分析,验证了所提模型的优越性。结果表明,新模型优于所有基准模型,因此,本文中的新 STP 解决方案为改善自主导航和海上安全做出了新贡献。
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Bi-directional information fusion-driven deep network for ship trajectory prediction in intelligent transportation systems

Accurate ship trajectory prediction (STP) is crucial to realise the early warning of ship collision and ensure maritime safety. Driven by advancements in artificial intelligence technology, deep learning-based STP has become a predominant approach in the research field of ship collision avoidance. This paper, based on a state-of-the-art survey of the existing STP research progress, aims to develop a new bi-directional information fusion-driven prediction model that enables the achievement of more accurate STP results by addressing the drawbacks of the classical methods in the field. In this context, a cascading network model is developed by combining two bi-directional networks in a specific order. It incorporates the Bi-directional Long Short-Term Memory (BiLSTM) and the Bi-directional Gated Recurrent Unit (BiGRU) neural network into a single three-layer, information-enhanced network. It takes advantage of both networks to realise more accurate prediction of ship trajectories. Furthermore, the performance of the proposed model is comprehensively evaluated using Automatic Identification System (AIS) data from three water areas representing traffic scenarios of different safety concerns. The superiority of the proposed model is verified through comparative analysis with twenty other methods, including the state-of-the-art STP in the literature. The finding reveals that the new model is better than all the benchmarked ones, and thus, the new STP solution in this paper makes new contributions to improving autonomous navigation and maritime safety.

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来源期刊
CiteScore
16.20
自引率
16.00%
发文量
285
审稿时长
62 days
期刊介绍: Transportation Research Part E: Logistics and Transportation Review is a reputable journal that publishes high-quality articles covering a wide range of topics in the field of logistics and transportation research. The journal welcomes submissions on various subjects, including transport economics, transport infrastructure and investment appraisal, evaluation of public policies related to transportation, empirical and analytical studies of logistics management practices and performance, logistics and operations models, and logistics and supply chain management. Part E aims to provide informative and well-researched articles that contribute to the understanding and advancement of the field. The content of the journal is complementary to other prestigious journals in transportation research, such as Transportation Research Part A: Policy and Practice, Part B: Methodological, Part C: Emerging Technologies, Part D: Transport and Environment, and Part F: Traffic Psychology and Behaviour. Together, these journals form a comprehensive and cohesive reference for current research in transportation science.
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Editorial Board A two-stage stochastic-robust model for supply chain network design problem under disruptions and endogenous demand uncertainty Social, economic and green optimization of the distribution process of e-commerce platforms Optimization of electric bus vehicle scheduling and charging strategies under Time-of-Use electricity price Evolutionary game-based ship inspection planning considering ship competitive interactions
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