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Graph Convolutional Network based Configuration Detection for Freeform Modular Robot Using Magnetic Sensor Array

Yuxiao Tu, Guanqi Liang, Tin Lun Lam

202114 citationsDOI

Abstract

Modular self-reconfigurable robotic (MSRR) systems are potentially more robust and more adaptive than conventional systems. Following our previous work where we proposed a freeform MSRR module called FreeBOT, this paper presents a novel configuration detection system for FreeBOT using a magnetic sensor array. A FreeBOT module can be connected by up to 11 modules, and the proposed configuration detection system can locate a variable number of connection points accurately in real-time. By equipping FreeBOT with 24 magnetic sensors, the magnetic field density produced by magnets and steel spherical shells can be monitored. The connectable area is split into 199 non-uniform regions, including 84 uniform regions. Using a Graph Convolutional Network (GCN) based algorithm, the connection points can be located accurately under ferromagnetic environments. The system can locate a variable number of connection points for such a region division with only single connection point training data. Finally, the localization algorithm can run faster than 40 Hz on FreeBOT. With the real-time configuration detection system, the FreeBOT system has the potential to reconfigure automatically and accurately.

Topics & Concepts

Modular designComputer scienceGraphConnection (principal bundle)RobotTopology (electrical circuits)Real-time computingArtificial intelligenceEngineeringMathematicsTheoretical computer scienceElectrical engineeringGeometryOperating systemModular Robots and Swarm IntelligenceSoft Robotics and ApplicationsMicro and Nano Robotics
Graph Convolutional Network based Configuration Detection for Freeform Modular Robot Using Magnetic Sensor Array | Litcius