On the Effect of the Layers' Number of Deep Neural Network for Improving the Reward of a Reinforcement Learning Robot

 

Talal Markabi1,*, Bahaa Mansoura1

1Faculty of Informatics Engineering, Albaath University, Syria

Emals: Talal67markabi@gmail.com; mansoura_bahaa77@gmail.com

 

 

 

Abstract

The Q learning algorithm in reinforcement learning is one of the algorithms that allows the robot to learn the surrounding environment without the need for prior training samples with the principle of reward and punishment for the robot through interaction with the environment.

Increasing the number of hidden layers of the deep neural network used and adjusting some of the higher parameters in it can increase the reward of the robot and thus obtain the best path to achieve the goal.

Keywords: Neural network; Deep learning; Robotics; Layers