Finding the optimal distribution of exerted effort by an athlete in competitive sports has been widely investigated in the fields of sport science, applied mathematics and optimal control. In this article, we propose a reinforcement learning-based solution to the optimal control problem in the running race application. Well-known mathematical model of Keller is used for numerically simulating the dynamics in runner's energy storage and motion. A feed-forward neural network is employed as the probabilistic controller model in continuous action space which transforms the current state (position, velocity and available energy) of the runner to the predicted optimal propulsive force that the runner should apply in the next time step. A logarith...
This paper presents a control framework that combines model-based optimal control and reinforcement ...
In this research, an optimization methodology was introduced for improving bipedal robot locomotion ...
When long-distance runners prepare for a race, they can train more efficiently if they are able to p...
International audienceWe present new models, numerical simulations and rigorous analysis for the opt...
By increasing the step frequency of the runners, it is possible to reduce the risk of injuries due t...
In this contribution, we discuss Reinforcement Learning as an alternative way to solve optimal contr...
A model of sport biomechanics describing short-distance running (sprinting) is developed by applying...
International audienceOur aim is to present a new model which encompasses pace optimization and moto...
International audienceWe introduce a new optimal control model which encompasses pace optimization a...
Kidziński Ł, Mohanty SP, Ong C, et al. Learning to Run challenge solutions: Adapting reinforcement l...
International audienceIn order to describe the velocity and the anaerobic energy of two runners comp...
This paper explores the use of reinforcement learning (RL) models for autonomous racing. In contrast...
This study explored the use of artificial neural networks in the estimation of runners\u27 kinetics ...
There are currently no generally accepted optimality criteria for human running. The purpose of the ...
Reinforcement Learning (RL) methods have been successfully demonstrated in robotic tasks, however, ...
This paper presents a control framework that combines model-based optimal control and reinforcement ...
In this research, an optimization methodology was introduced for improving bipedal robot locomotion ...
When long-distance runners prepare for a race, they can train more efficiently if they are able to p...
International audienceWe present new models, numerical simulations and rigorous analysis for the opt...
By increasing the step frequency of the runners, it is possible to reduce the risk of injuries due t...
In this contribution, we discuss Reinforcement Learning as an alternative way to solve optimal contr...
A model of sport biomechanics describing short-distance running (sprinting) is developed by applying...
International audienceOur aim is to present a new model which encompasses pace optimization and moto...
International audienceWe introduce a new optimal control model which encompasses pace optimization a...
Kidziński Ł, Mohanty SP, Ong C, et al. Learning to Run challenge solutions: Adapting reinforcement l...
International audienceIn order to describe the velocity and the anaerobic energy of two runners comp...
This paper explores the use of reinforcement learning (RL) models for autonomous racing. In contrast...
This study explored the use of artificial neural networks in the estimation of runners\u27 kinetics ...
There are currently no generally accepted optimality criteria for human running. The purpose of the ...
Reinforcement Learning (RL) methods have been successfully demonstrated in robotic tasks, however, ...
This paper presents a control framework that combines model-based optimal control and reinforcement ...
In this research, an optimization methodology was introduced for improving bipedal robot locomotion ...
When long-distance runners prepare for a race, they can train more efficiently if they are able to p...