학술논문

A Physical Law Constrained Deep Learning Model for Vehicle Trajectory Prediction
Document Type
Periodical
Source
IEEE Internet of Things Journal IEEE Internet Things J. Internet of Things Journal, IEEE. 10(24):22775-22790 Dec, 2023
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Trajectory
Predictive models
Data models
Mathematical models
Behavioral sciences
Encoding
Social factors
Vehicle dynamics
Data driven
gated recurrent unit (GRU) encoder–decoder framework
physical driven
social force rules
vehicle trajectory prediction
Language
ISSN
2327-4662
2372-2541
Abstract
Vehicle trajectory prediction is crucial and indispensable for ensuring the safe and efficient operation of autonomous vehicles in complex traffic environments. The application of Internet of Things technology in the collaborative automated driving system (CADS) has established a robust data foundation for vehicle trajectory prediction. Accurate prediction requires not only a substantial amount of high-quality data but also a deep understanding of the vehicle’s driving characteristics and interactions between neighboring vehicles. To enhance the study of vehicle trajectory prediction, this article proposes a novel Social Force-constrained Gated Recurrent Unit (SF-GRU) model, which integrates data-driven and physics-driven models. Specifically, the SF-GRU model is based on the gated recurrent unit encoder–decoder framework and incorporates social force constraints to enhance and supplement the model input based on vehicle time-series trajectory data, which describes the driving and interactive behaviors of vehicles during driving, as well as the interactions between neighboring vehicles and the surrounding environment. The model is trained and validated using the next generation simulation data set. Experimental results demonstrate that the SF-GRU model outperforms existing state-of-the-art models in both longitudinal and lateral motion, and that social force constraints are more effective than spatial variables in improving prediction accuracy. Furthermore, the SF-GRU model can intuitively and accurately consider the interactions between vehicles, and precisely describe the changes of relevant variables in the prediction process, thus enhancing the interpretability of the data-driven model. The SF-GRU model has great potential in vehicle trajectory prediction and can provide important support for the practical implementation of autonomous driving vehicles.