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A Machine Learning Approach for Collaborative Robot Smart Manufacturing Inspection for Quality Control Systems

Thadeu Brito, Jonas Queiroz, Luis Piardi, Lucas A. Fernandes, José Lima, Paulo Leitão

2020Procedia Manufacturing100 citationsDOIOpen Access PDF

Abstract

The 4th industrial revolution promotes the automatic inspection of all products towards a zero-defect and high-quality manufacturing. In this context, collaborative robotics, where humans and machines share the same space, comprises a suitable approach that allows combining the accuracy of a robot and the ability and flexibility of a human. This paper describes an innovative approach that uses a collaborative robot to support the smart inspection and corrective actions for quality control systems in the manufacturing process, complemented by an intelligent system that learns and adapts its behavior according to the inspected parts. This intelligent system that implements the reinforcement learning algorithm makes the approach more robust once it can learn and be adapted to the trajectory. In the preliminary experiments, it was used a UR3 robot equipped with a Force-Torque sensor that was trained to perform a path regarding a product quality inspection task.

Topics & Concepts

Flexibility (engineering)RoboticsContext (archaeology)RobotArtificial intelligenceQuality (philosophy)EngineeringProcess (computing)Reinforcement learningIndustrial robotComputer scienceMechatronicsControl engineeringBiologyPaleontologyEpistemologyMathematicsStatisticsPhilosophyOperating systemRobot Manipulation and LearningDigital Transformation in IndustryIndustrial Vision Systems and Defect Detection