Abstract

Advancing an efficient coverage path planning in robots set up for application such as cleaning, painting and mining are becoming more crucial. Such drive in the coverage path planning field proposes numerous techniques over the past few decades. However, the proposed approaches were only applied and tested with a fixed morphological robot in which the coverage performance was significantly degraded in a complex environment. To this end, an A-star based zigzag global planner for a novel self-reconfigurable Tetris inspired cleaning robot (hTetro) presented in this paper. Unlike the traditional A-star algorithm, the presented approach can generate waypoints in order to cover the narrow spaces while assuming appropriate morphology of the hTtero robot with the objective of maximizing the coverage area. We validated the efficiency of the proposed planning approach in the Robot Operation System (ROS) Based simulated environment and tested with the hTetro robot in real-time under the controlled scenarios. Our experiments demonstrate the efficiency of the proposed coverage path planning approach resulting in superior area coverage performance in all considered experimental scenarios.

Highlights

  • Robots are fast becoming an integral component of our everyday life and being deployed towards a number of processes over a wide range of applications

  • In order to achieve efficient navigation, a robot must be equipped with necessary control units, sensor systems and the effective coverage path planning intelligence

  • The results indicated that hTetro robot could achieve superior coverage performance through its shapeshifting ability

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Summary

Introduction

Robots are fast becoming an integral component of our everyday life and being deployed towards a number of processes over a wide range of applications. Such robots are required to find safe and feasible routes to navigate effectively in the environment. This need is crucial when these robots are navigating in complex and uncertain settings. In order to achieve efficient navigation, a robot must be equipped with necessary control units, sensor systems and the effective coverage path planning intelligence. Path planning becomes an essential ingredient for many robotic applications, such as cleaning, painting, inspection and mining in order to amplify their performances

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