Publication: Predicting adhesion strength of micropatterned surfaces using gradient boosting models and explainable artificial intelligence visualizations
Type:
Article
Date
2023-06-27
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
Fibrillar dry adhesives are widely used due to their effectiveness in air and vacuum conditions. However, their
performance depends on various factors. Previous studies have proposed analytical methods to predict adhesion
strength on micro-patterned surfaces. However, the method lacks interpretation on which parameters are critical.
This research utilizes gradient-boosting machine learning (ML) algorithms to accurately predict adhesion
strength. Additionally, explainable machine learning (XML) methods are employed to interpret the underlying
reasoning behind the predictions. The analysis demonstrates that gradient boosting models achieve a high
correlation coefficient (R > 0.95) in accurately predicting pull-off force on micro-patterned surfaces. The use of
XML methods provides insights into the importance of features, their interactions, and their contributions to
specific predictions. This novel, explainable, and data-driven approach holds potential for real-time applications,
aiding in the identification of critical features that govern the performance of fibrillar adhesives. Furthermore, it
improves end-users’ confidence by offering human-comprehensible explanations and facilitates understanding
among non-technical audiences
Description
Keywords
Machine learning, Bioinspiration, Fibrillar adhesives, Gradient boosting, Explainable AI
