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Autonomous Construction of Multiple Structures Using Learning Automata: Description and Experimental Validation

Sérgio R. Barros dos Santos, Sidney Givigi, Cairo Lúcio Nascimento

Year
2015
Citations
41

Abstract

In this paper, we develop an adaptive scheme based on reinforcement learning (RL) for planning the construction tasks using a quadrotor. Moreover, an autonomous construction system to assemble user-specified 3-D structures is proposed. Nowadays, complex construction tasks using mobile robots are characterized by three fundamental problems: assembly planning, motion planning, and path tracking control. The high-level plan to perform the construction task consists of assembly mode algorithms that are derived offline in a simulation environment through learning and heuristic search. A promising approach to design and optimize the path tracking controllers for a quadrotor as well as the attitude controllers using RL is presented. This paper describes a comprehensive validation framework that enables an aerial robot to build structures in a robust and safe manner. The experimental trials for building the 3-D structures using the designed high-level plans and path tracking controllers have provided encouraging results.

Keywords

Reinforcement learningMotion planningComputer scienceHeuristicLearning automataRobotPlan (archaeology)Scheme (mathematics)Control engineeringMobile robot

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