ROSep 1, 2020

Control Framework for a Hybrid-steel Bridge Inspection Robot

arXiv:2009.00740v12 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for reduced human involvement in bridge inspection for maintenance purposes, but it appears incremental as it builds on a previously designed robot.

The paper tackled the problem of autonomous navigation for steel bridge inspection robots by proposing a control framework that enables real-time navigation and minimizes human intervention, demonstrating effective performance in practical experiments on actual steel bridges.

Autonomous navigation of steel bridge inspection robots is essential for proper maintenance. The majority of existing robotic solutions for bridge inspection require human intervention to assist in the control and navigation. In this paper, a control system framework has been proposed for a previously designed ARA robot [1], which facilitates autonomous real-time navigation and minimizes human involvement. The mechanical design and control framework of ARA robot enables two different configurations, namely the mobile and inch-worm transformation. In addition, a switching control was developed with 3D point clouds of steel surfaces as the input which allows the robot to switch between mobile and inch-worm transformation. The surface availability algorithm (considers plane, area, and height) of the switching control enables the robot to perform inch-worm jumps autonomously. Themobiletransformationallows the robot to move on continuous steel surfaces and perform visual inspection of steel bridge structures. Practical experiments on actual steel bridge structures highlight the effective performance of ARA robot with the proposed control framework for autonomous navigation during a visual inspection of steel bridges.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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