Please use this identifier to cite or link to this item:
http://hdl.handle.net/10397/119703
| Title: | A hybrid intelligence framework with uncertainty quantification for reliable surface roughness prediction in micro-milling | Authors: | He, Z Sun, Y Yuan, S Qin, F Zhang, X Cheung, CF Cao, H Wang, C |
Issue Date: | 15-Sep-2026 | Source: | Expert systems with applications, 15 Sept 2026, v. 326, 132774 | Abstract: | In high-risk ultra-precision manufacturing, such as micro-milling, the application of artificial intelligence for predictive modeling and process optimization is critically hampered by a credibility gap stemming from the “black-box” nature of predictive models and the data-scarce reality of the domain. To bridge this gap, this study proposes a novel physics-constrained hybrid intelligence framework uniquely tailored to the physical realities of micro-milling. It is designed to deliver not just accurate, but fundamentally credible predictions from small sample data. The framework is built on a synergistic, three-tiered approach that explicitly mirrors the surface formation mechanisms: first, an explainable boosting machine model establishes an interpretable baseline with domain knowledge as soft constraints, which can capture macroscopic deterministic trends (e.g., kinematic geometry); second, a stacking ensemble method systematically corrects for complex, stochastic micro-dynamic residuals (e.g., size effect) to enhance accuracy; finally, the integration of adaptive conformal prediction—applied for the first time in this domain—augments point predictions with statistically rigorous uncertainty intervals, thereby transforming the model from a simple predictor into a trustworthy decision-support tool. Evaluated on experimental micro-milling data, the framework demonstrates its core value by achieving a 95.31% prediction interval coverage probability (PICP) at a 95% confidence level. This credibility is complemented by state-of-the-art accuracy, evidenced by a 19.9% reduction in mean absolute percentage error over the strongest baseline. By delivering accurate and uncertainty-quantified predictions, this framework presents a robust surface roughness predictive paradigm, providing manufacturers with reliable process-level decision support in data-scarce ultra-precision manufacturing environments. | Keywords: | Conformal prediction Machine learning Micro-milling Surface roughness prediction Uncertainty quantification |
Publisher: | Elsevier Ltd | Journal: | Expert systems with applications | ISSN: | 0957-4174 | EISSN: | 1873-6793 | DOI: | 10.1016/j.eswa.2026.132774 |
| Appears in Collections: | Journal/Magazine Article |
Show full item record
Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.



