An optimized Q-Learning algorithm for mobile robot local path planning

Q Zhou, Y Lian, J Wu, M Zhu, H Wang, J Cao - Knowledge-Based Systems, 2024 - Elsevier
The Q-Learning algorithm is a reinforcement learning technique widely used in various
fields such as path planning, intelligent transportation, penetration testing, among others. It …

Solving the optimal path planning of a mobile robot using improved Q-learning

ES Low, P Ong, KC Cheah - Robotics and Autonomous Systems, 2019 - Elsevier
Q-learning, a type of reinforcement learning, has gained increasing popularity in
autonomous mobile robot path planning recently, due to its self-learning ability without …

Modified Q-learning with distance metric and virtual target on path planning of mobile robot

ES Low, P Ong, CY Low, R Omar - Expert Systems with Applications, 2022 - Elsevier
Path planning is an essential element in mobile robot navigation. One of the popular path
planners is Q-learning–a type of reinforcement learning that learns with little or no prior …

Mobile robot path planning using a QAPF learning algorithm for known and unknown environments

U Orozco-Rosas, K Picos, JJ Pantrigo… - IEEE …, 2022 - ieeexplore.ieee.org
This paper presents the computation of feasible paths for mobile robots in known and
unknown environments using a QAPF learning algorithm. Q-learning is a reinforcement …

A dynamic reward-enhanced Q-learning approach for efficient path planning and obstacle avoidance in mobile robotics

A Gharbi - Applied Computing and Informatics, 2024 - emerald.com
Purpose The purpose of the paper is to propose and demonstrate a novel approach for
addressing the challenges of path planning and obstacle avoidance in the context of mobile …

Optimal path planning approach based on Q-learning algorithm for mobile robots

A Maoudj, A Hentout - Applied Soft Computing, 2020 - Elsevier
In fact, optimizing path within short computation time still remains a major challenge for
mobile robotics applications. In path planning and obstacles avoidance, Q-Learning (QL) …

Expected-mean gamma-incremental reinforcement learning algorithm for robot path planning

CS Tan, R Mohd-Mokhtar, MR Arshad - Expert Systems with Applications, 2024 - Elsevier
Recently, researchers have been extensively exploring the immense potential of Q-Star.
However, the available resources lack comprehensive information on this topic. Despite this …

A path planning approach for mobile robots using short and safe Q-learning

H Du, B Hao, J Zhao, J Zhang, Q Wang, Q Yuan - Plos one, 2022 - journals.plos.org
Path planning is a major challenging problem for mobile robots, as the robot is required to
reach the target position from the starting position while simultaneously avoiding conflicts …

A Path‐Planning Approach Based on Potential and Dynamic Q‐Learning for Mobile Robots in Unknown Environment

B Hao, H Du, J Zhao, J Zhang… - Computational …, 2022 - Wiley Online Library
The path‐planning approach plays an important role in determining how long the mobile
robots can travel. To solve the path‐planning problem of mobile robots in an unknown …

CLSQL: Improved Q-Learning Algorithm Based on Continuous Local Search Policy for Mobile Robot Path Planning

T Ma, J Lyu, J Yang, R Xi, Y Li, J An, C Li - Sensors, 2022 - mdpi.com
How to generate the path planning of mobile robots quickly is a problem in the field of
robotics. The Q-learning (QL) algorithm has recently become increasingly used in the field of …