Litcius/Paper detail

Self-Learning Optimal Cruise Control Based on Individual Car-Following Style

Hongqing Chu, Lulu Guo, Yongjun Yan, Bingzhao Gao, Hong Chen

2020IEEE Transactions on Intelligent Transportation Systems50 citationsDOI

Abstract

This study aims to develop an optimal cruise controller that can automatically adapt to individual car-following style. First, the adaptive cruise control (ACC) problem is formulated as a linear quadratic optimal control, and an optimal control law containing the longitudinal acceleration of the target vehicle is derived. Then, a certain number of individual car-following styles are predefined on the basis of the proposed optimal cruise controller. Thereafter, a car-following style learning algorithm is proposed to quantify the closeness of the predefined individual car-following style to the specific driver, and a proper style is thus determined for the specific driver by using this learning algorithm. On the basis of the learned car-following style, the proposed optimal cruise controller can adapt itself to individual car-following style. Finally, the proposed self-learning optimal cruise controller is evaluated through simulation and experimental tests. Results show that the control behavior of the proposed self-learning optimal controller is closer to that of the human driver than that of a factory-installed ACC.

Topics & Concepts

Cruise controlCruiseOptimal controlController (irrigation)Computer scienceControl theory (sociology)AccelerationEngineeringControl (management)Control engineeringArtificial intelligenceMathematical optimizationMathematicsClassical mechanicsPhysicsBiologyAerospace engineeringAgronomyTraffic control and managementAutonomous Vehicle Technology and SafetyTransportation and Mobility Innovations