Litcius/Paper detail

Transfer Learning Based Long Short-Term Memory Car-Following Model for Adaptive Cruise Control

Jiazu Zhou, Jianwu Wan, Feng Zhu

2022IEEE Transactions on Intelligent Transportation Systems26 citationsDOI

Abstract

Most existing studies modeled Adaptive Cruise Control (ACC) car-following (CF) behavior using conventional CF models which were originally built for human-driving vehicles (HVs) and calibrated with HV data. In this paper, firstly a learnable CF model is proposed by resorting to Long Short-Term Memory (LSTM) for ACC systems, which utilizes the ACC data for model construction and offers extraordinary adaptability and accuracy. Nevertheless, the applicability of the LSTM CF model is hindered by the scarce ACC data problem, as training the model requires a large amount of data. To address the ACC data scarcity problem, a transfer learning strategy for the LSTM model is further developed, leveraging on the large-scale open-source HV data and the similar driving patterns hidden in HV and ACC-equipped vehicles. In the transfer learning based LSTM model, a unified framework incorporating an alignment layer is developed to transfer the useful features from HV data and meanwhile calibrating the CF model with ACC data. Comparison results show that the proposed model outperforms other CF models which are built with only ACC data or using simple transfer learning methods. Further, microscopic simulations are performed to verify the applicability of the transfer learning based LSTM CF model.

Topics & Concepts

Transfer of learningComputer scienceCruise controlArtificial intelligenceAdaptabilityData modelingMachine learningTerm (time)Transfer (computing)Control (management)Quantum mechanicsEcologyPhysicsParallel computingBiologyDatabaseTraffic control and managementTraffic Prediction and Management TechniquesTransportation Planning and Optimization
Transfer Learning Based Long Short-Term Memory Car-Following Model for Adaptive Cruise Control | Litcius