FedPAW: Federated Learning with Personalized Aggregation Weights for Urban Vehicle Speed Prediction

Yuepeng He, Pengzhan Zhou*, Yijun Zhai, Fang Qu, Zhida Qin, Mingyan Li, Songtao Guo

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Vehicle speed prediction is crucial for intelligent transportation systems, promoting more reliable autonomous driving by accurately predicting future vehicle conditions. Due to variations in drivers' driving styles and vehicle types, speed predictions for different target vehicles may significantly differ. Existing methods may not realize personalized vehicle speed prediction while protecting drivers' data privacy. We propose a Federated learning framework with Personalized Aggregation Weights (FedPAW) to overcome these challenges. This method captures client-specific information by measuring the weighted mean squared error between the parameters of local models and global models. The server sends tailored aggregated models to clients instead of a single global model, without incurring additional computational and communication overhead for clients. To evaluate the effectiveness of FedPAW, we collected driving data in urban scenarios using the autonomous driving simulator CARLA, employing an LSTM-based Seq2Seq model with a multi-head attention mechanism to predict the future speed of target vehicles. The results demonstrate that our proposed FedPAW ranks lowest in prediction error within the time horizon of 10 seconds, with a 0.8% reduction in test MAE, compared to eleven representative benchmark baselines.

Original languageEnglish
Pages (from-to)1248-1259
Number of pages12
JournalIEEE Transactions on Cloud Computing
Volume12
Issue number4
DOIs
Publication statusPublished - 2024

Keywords

  • Aggregation weights
  • Internet of Vehicles
  • personalized federated learning
  • vehicle speed prediction

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