Autonomous Navigation of Robots: Optimization with DQN

Author:

Escobar-Naranjo Juan1,Caiza Gustavo2ORCID,Ayala Paulina1ORCID,Jordan Edisson1ORCID,Garcia Carlos A.3ORCID,Garcia Marcelo V.1ORCID

Affiliation:

1. Faculty of Systems, Electronics and Industrial Engineering, Universidad Tecnica de Ambato (UTA), Ambato 180206, Ecuador

2. Electronics and Automation Department, Universidad Politecnica Salesiana (UPS), Quito 170146, Ecuador

3. Department of Systems Engineering, Automation and Industrial Informatics, Universitat Politecnica de Catalunya (UPC), 08034 Barcelona, Spain

Abstract

In the field of artificial intelligence, control systems for mobile robots have undergone significant advancements, particularly within the realm of autonomous learning. However, previous studies have primarily focused on predefined paths, neglecting real-time obstacle avoidance and trajectory reconfiguration. This research introduces a novel algorithm that integrates reinforcement learning with the Deep Q-Network (DQN) to empower an agent with the ability to execute actions, gather information from a simulated environment in Gazebo, and maximize rewards. Through a series of carefully designed experiments, the algorithm’s parameters were meticulously configured, and its performance was rigorously validated. Unlike conventional navigation systems, our approach embraces the exploration of the environment, facilitating effective trajectory planning based on acquired knowledge. By leveraging randomized training conditions within a simulated environment, the DQN network exhibits superior capabilities in computing complex functions compared to traditional methods. This breakthrough underscores the potential of our algorithm to significantly enhance the autonomous learning capacities of mobile robots.

Funder

Universidad Técnica de Ambato

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

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