This paper presents an extended control concept for automatic track guidance of industrial trucks in intralogistic systems. It is based on Reinforcement Learning (RL), a method of Artificial Intelligence (AI). The presented approach is able to adapt itself to different industrial truck variants and to the associated specific vehicle parameters. In order to avoid starting the whole training of the controller for each truck variant from scratch, the training process is divided into two steps. In the first step, the controller is trained on a simplified linear model using parameters of a nominal vehicle variant. Based on this, the control parameters are only fine-tuned in the second step using a more complex nonlinear model, representing the r...
This paper presents an active component damage reducing control approach for driving manoeuvres of a...
Abstract: A neural-network based approach to the control of non-linear dynamical systems such as whe...
Two controller performances are assessed for generalization in the path following task of autonomous...
The path tracking control system is a crucial component for autonomous vehicles; it is challenging t...
This paper presents a novel model-reference reinforcement learning algorithm for the intelligent tra...
The control of non-linear systems using neural networks has gained increasing interest in recent yea...
This paper presents a novel model-reference reinforcement learning control method for uncertain auto...
A reinforcement learning strategy is applied to the problem of the dynamic roll control of a full-bo...
Reinforcement learning (RL) is a booming area in artificial intelligence. The applications of RL are...
The goal of this thesis is a creation of an autonomous agent that can control a vehicle. The agent u...
ABSTRACT: Neural networks can be used to solve highly nonlinear control problems. This paper shows h...
This paper investigates the path tracking control problem of autonomous vehicles subject to modellin...
Absfrucf- This paper develops fuzzy control systems and neural-network control systems for backing u...
Closed-loop control systems, which utilize output signals for feedback to generate control inputs, c...
The trailer-truck backing-up problem has long been accepted as a benchmark to test control algorithm...
This paper presents an active component damage reducing control approach for driving manoeuvres of a...
Abstract: A neural-network based approach to the control of non-linear dynamical systems such as whe...
Two controller performances are assessed for generalization in the path following task of autonomous...
The path tracking control system is a crucial component for autonomous vehicles; it is challenging t...
This paper presents a novel model-reference reinforcement learning algorithm for the intelligent tra...
The control of non-linear systems using neural networks has gained increasing interest in recent yea...
This paper presents a novel model-reference reinforcement learning control method for uncertain auto...
A reinforcement learning strategy is applied to the problem of the dynamic roll control of a full-bo...
Reinforcement learning (RL) is a booming area in artificial intelligence. The applications of RL are...
The goal of this thesis is a creation of an autonomous agent that can control a vehicle. The agent u...
ABSTRACT: Neural networks can be used to solve highly nonlinear control problems. This paper shows h...
This paper investigates the path tracking control problem of autonomous vehicles subject to modellin...
Absfrucf- This paper develops fuzzy control systems and neural-network control systems for backing u...
Closed-loop control systems, which utilize output signals for feedback to generate control inputs, c...
The trailer-truck backing-up problem has long been accepted as a benchmark to test control algorithm...
This paper presents an active component damage reducing control approach for driving manoeuvres of a...
Abstract: A neural-network based approach to the control of non-linear dynamical systems such as whe...
Two controller performances are assessed for generalization in the path following task of autonomous...