On Using Neural Networks to Learn Safety Speed Reduction in Human-Robot Collaboration: A Comparative Analysis
By: Marco Faroni , Alessio Spanò , Andrea M. Zanchettin and more
In Human-Robot Collaboration, safety mechanisms such as Speed and Separation Monitoring and Power and Force Limitation dynamically adjust the robot's speed based on human proximity. While essential for risk reduction, these mechanisms introduce slowdowns that makes cycle time estimation a hard task and impact job scheduling efficiency. Existing methods for estimating cycle times or designing schedulers often rely on predefined safety models, which may not accurately reflect real-world safety implementations, as these depend on case-specific risk assessments. In this paper, we propose a deep learning approach to predict the robot's safety scaling factor directly from process execution data. We analyze multiple neural network architectures and demonstrate that a simple feed-forward network effectively estimates the robot's slowdown. This capability is crucial for improving cycle time predictions and designing more effective scheduling algorithms in collaborative robotic environments.
Similar Papers
Analysis of Deep-Learning Methods in an ISO/TS 15066-Compliant Human-Robot Safety Framework
Robotics
Robots move faster and safer with people.
Safety Monitoring for Learning-Enabled Cyber-Physical Systems in Out-of-Distribution Scenarios
Machine Learning (CS)
Keeps smart machines safe from unexpected problems.
SafeFall: Learning Protective Control for Humanoid Robots
Robotics
Robot falls safely, protecting its parts from damage.