This paper investigates the path tracking control problem of autonomous vehicles subject to modelling uncertainties and external disturbances. The problem is approached by employing a 2-degree of freedom vehicle model, which is reformulated into a newly defined parametric form with the system uncertainties being lumped into an unknown parametric vector. On top of the parametric system representation, a novel robust adaptive learning control (RALC) approach is then developed, which estimates the system uncertainties through iterative learning while treating the external disturbances by adopting a robust term. It is shown that the proposed approach is able to improve the lateral tracking performance gradually through learning from previous co...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
Autonomous vehicle field of study has seen considerable researches within three decades. In the last...
This paper introduces a robust adaptive path-tracking control scheme via a predicted interval approa...
This paper investigates the path tracking control problem of autonomous vehicles subject to modelli...
This paper investigates the path tracking control problem of autonomous vehicles subject to modelli...
This paper investigates the path tracking control problem of autonomous vehicles subject to modelli...
This paper investigates the path tracking control problem of autonomous vehicles subject to modelli...
As the bottom layer of the autonomous vehicle, path tracking control is a crucial element that provi...
The path tracking control system is a crucial component for autonomous vehicles; it is challenging t...
Abstract—We address the problem of position trajec-tory-tracking and path-following control design f...
As mobile robots leave structured indoor environments to operate in challenging outdoor environments...
This paper presents a novel model-reference reinforcement learning control method for uncertain auto...
As mobile robots leave structured indoor environments to operate in challenging outdoor environments...
This paper presents a novel model-reference reinforcement learning algorithm for the intelligent tra...
In this dissertation, we develop and analysis the robust control design methods for longitudinal and...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
Autonomous vehicle field of study has seen considerable researches within three decades. In the last...
This paper introduces a robust adaptive path-tracking control scheme via a predicted interval approa...
This paper investigates the path tracking control problem of autonomous vehicles subject to modelli...
This paper investigates the path tracking control problem of autonomous vehicles subject to modelli...
This paper investigates the path tracking control problem of autonomous vehicles subject to modelli...
This paper investigates the path tracking control problem of autonomous vehicles subject to modelli...
As the bottom layer of the autonomous vehicle, path tracking control is a crucial element that provi...
The path tracking control system is a crucial component for autonomous vehicles; it is challenging t...
Abstract—We address the problem of position trajec-tory-tracking and path-following control design f...
As mobile robots leave structured indoor environments to operate in challenging outdoor environments...
This paper presents a novel model-reference reinforcement learning control method for uncertain auto...
As mobile robots leave structured indoor environments to operate in challenging outdoor environments...
This paper presents a novel model-reference reinforcement learning algorithm for the intelligent tra...
In this dissertation, we develop and analysis the robust control design methods for longitudinal and...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
Autonomous vehicle field of study has seen considerable researches within three decades. In the last...
This paper introduces a robust adaptive path-tracking control scheme via a predicted interval approa...