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Bayesian Optimization with Active Constraint Learning for Advanced Manufacturing Process Design

Gary Y. Li, Yujia Wang, Swastik Kar, Xiaoning Jin

2025IISE Transactions11 citationsDOIOpen Access PDF

Abstract

This study addresses the complex challenge of identifying process parameters for optimal manufacturing outcomes in advanced manufacturing, where nonlinear and costly process-to-quality relationships prevail. We introduce a novel experimental design framework that energizes the optimization of process parameters and feasibility constraint learning with a significantly reduced number of trials as compared to traditional Design of Experiments methods. Our approach is grounded in two primary methodologies: (1) active multi-criteria sample for constraint estimation and (2) Bayesian optimization-based sample for optimal parameter identification. This integration facilitates the efficient discovery of globally optimal parameter settings and outperforms multiple benchmark models in constraint estimation accuracy. The framework’s efficacy is demonstrated through application on both synthetic datasets and a real-world case study involving the synthesis of 2D materials, demonstrating its potential to enhance manufacturing efficiency and quality in complex manufacturing processes significantly.

Topics & Concepts

Bayesian optimizationConstraint (computer-aided design)Computer scienceProcess (computing)Active learning (machine learning)Bayesian probabilityManufacturing engineeringIndustrial engineeringArtificial intelligenceMachine learningMathematical optimizationEngineeringMathematicsMechanical engineeringProgramming languageManufacturing Process and OptimizationAdvanced Control Systems OptimizationAdvanced Multi-Objective Optimization Algorithms
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