Explainable artificial intelligence for visual fingerprinting of copper tubes' atmospheric corrosion in diverse environments | Synapse
March 3, 2026
Explainable artificial intelligence for visual fingerprinting of copper tubes' atmospheric corrosion in diverse environments
Key Points
Visual fingerprinting accurately identifies and analyzes atmospheric corrosion in copper tubes, enhancing predictive maintenance.
Using a machine learning approach, the model achieves over 85% accuracy in various environmental conditions, proving its robustness.
The analysis leverages explainable artificial intelligence, which provides insights into the decision-making process by showing the reasoning behind predictions.
Understanding corrosion patterns can help in implementing preventive measures, potentially saving costs and improving safety in engineering applications.