Intelligent Vacuum Thermoforming Process
By: Andi Kuswoyo, Christos Margadji, Sebastian W. Pattinson
Potential Business Impact:
Fixes plastic parts made by machines.
Ensuring consistent quality in vacuum thermoforming presents challenges due to variations in material properties and tooling configurations. This research introduces a vision-based quality control system to predict and optimise process parameters, thereby enhancing part quality with minimal data requirements. A comprehensive dataset was developed using visual data from vacuum-formed samples subjected to various process parameters, supplemented by image augmentation techniques to improve model training. A k-Nearest Neighbour algorithm was subsequently employed to identify adjustments needed in process parameters by mapping low-quality parts to their high-quality counterparts. The model exhibited strong performance in adjusting heating power, heating time, and vacuum time to reduce defects and improve production efficiency.
Similar Papers
Deep Learning-Based Control Optimization for Glass Bottle Forming
Artificial Intelligence
Makes glass bottles perfectly every time.
Zero-Shot Multi-Criteria Visual Quality Inspection for Semi-Controlled Industrial Environments via Real-Time 3D Digital Twin Simulation
CV and Pattern Recognition
Finds factory flaws automatically using digital copies.
Process Integrated Computer Vision for Real-Time Failure Prediction in Steel Rolling Mill
CV and Pattern Recognition
Spots machine problems before they stop factories.