This paper provides a new deterministic Q-learning with a presumed knowledge about the distance from the current state to both the next state and the goal. This knowledge is efficiently used to update the entries in the Q-table once only by utilizing four derived properties of the Q-learning, instead of repeatedly updating them like the classical Q-learning. Naturally, the proposed algorithm has an insignificantly small time complexity in comparison to its classical counterpart. Furthermore, the proposed algorithm stores the Q-value for the best possible action at a state and thus saves significant storage. Experiments undertaken on simulated maze and real platforms confirm that the Q-table obtained by the proposed Q-learning when used for ...
Autonomous Navigation for mobile robots has many applications for indoor and outdoor environments; h...
In path planning for mobile robot, classical Q-learning algorithm requires high iteration counts and...
International audienceRobot learning is a challenging – and somewhat unique – research domain. If a...
This paper provides a new deterministic Q-learning with a presumed knowledge about the distance from...
Classical Q-learning algorithm is a reinforcement of learning algorithm that has been applied in pat...
Dynamic path planning is an important task for mobile robots in complex and uncertain environments. ...
Decision making and movement control are used for mobile robots to perform the given tasks. This stu...
AbstractClassical Q-learning takes huge computation to calculate the Q-value for all possible action...
This paper presents the computation of feasible paths for mobile robots in known and unknown enviro...
How to generate the path planning of mobile robots quickly is a problem in the field of robotics. Th...
Autonomous mobile robot path planning in unknown and dynamic environment is a crucial task for succe...
Abstract — Reinforcement learning (RL) has been used as a learning mechanism for a mobile robot to l...
Q-Learning is a method for solving reinforcement learning problems. Reinforcement learning problems ...
Q-Learning is a method for solving reinforcement learning problems. Reinforcement learning problems ...
Nowadays, mobile robots are applied to increasingly complex scenarios. Whether it is a closed scenar...
Autonomous Navigation for mobile robots has many applications for indoor and outdoor environments; h...
In path planning for mobile robot, classical Q-learning algorithm requires high iteration counts and...
International audienceRobot learning is a challenging – and somewhat unique – research domain. If a...
This paper provides a new deterministic Q-learning with a presumed knowledge about the distance from...
Classical Q-learning algorithm is a reinforcement of learning algorithm that has been applied in pat...
Dynamic path planning is an important task for mobile robots in complex and uncertain environments. ...
Decision making and movement control are used for mobile robots to perform the given tasks. This stu...
AbstractClassical Q-learning takes huge computation to calculate the Q-value for all possible action...
This paper presents the computation of feasible paths for mobile robots in known and unknown enviro...
How to generate the path planning of mobile robots quickly is a problem in the field of robotics. Th...
Autonomous mobile robot path planning in unknown and dynamic environment is a crucial task for succe...
Abstract — Reinforcement learning (RL) has been used as a learning mechanism for a mobile robot to l...
Q-Learning is a method for solving reinforcement learning problems. Reinforcement learning problems ...
Q-Learning is a method for solving reinforcement learning problems. Reinforcement learning problems ...
Nowadays, mobile robots are applied to increasingly complex scenarios. Whether it is a closed scenar...
Autonomous Navigation for mobile robots has many applications for indoor and outdoor environments; h...
In path planning for mobile robot, classical Q-learning algorithm requires high iteration counts and...
International audienceRobot learning is a challenging – and somewhat unique – research domain. If a...