MetaFollower: Adaptable Personalized Autonomous Car Following
Xianda Chen, Kehua Chen, Meixin Zhu, Hao (Frank) Yang, Shaojie Shen,, Xuesong Wang, Yinhai Wang

TL;DR
MetaFollower is a novel meta-learning-based framework that enables rapid personalization of car-following models, improving accuracy and safety by capturing individual driving styles and temporal dynamics.
Contribution
It introduces the first meta-learning approach for fast adaptation in car-following models, combining LSTM and IDM for interpretability and heterogeneity modeling.
Findings
Outperforms baseline models in accuracy and safety
Adapts quickly to new drivers with limited data
Effectively captures driver and temporal heterogeneity
Abstract
Car-following (CF) modeling, a fundamental component in microscopic traffic simulation, has attracted increasing interest of researchers in the past decades. In this study, we propose an adaptable personalized car-following framework -MetaFollower, by leveraging the power of meta-learning. Specifically, we first utilize Model-Agnostic Meta-Learning (MAML) to extract common driving knowledge from various CF events. Afterward, the pre-trained model can be fine-tuned on new drivers with only a few CF trajectories to achieve personalized CF adaptation. We additionally combine Long Short-Term Memory (LSTM) and Intelligent Driver Model (IDM) to reflect temporal heterogeneity with high interpretability. Unlike conventional adaptive cruise control (ACC) systems that rely on predefined settings and constant parameters without considering heterogeneous driving characteristics, MetaFollower can…
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Taxonomy
TopicsTransportation and Mobility Innovations
