Bayesian Optimization of Partially Known Systems using Hybrid Models
arXiv cs.LG / 3/13/2026
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Key Points
- We present a hybrid model-based Bayesian optimization formulation that combines iterative Bayesian learning with partially known mechanistic physics models by inferring missing equations with a Gaussian process and incorporating the GP as a constraint in the hybrid model.
- The approach yields a constrained nonlinear stochastic program discretized via sample-average approximation, enabling the inclusion of physics-based nonlinear and implicit constraints such as mass conservation laws.
- In an in-silico optimization of a single-stage distillation, the hybrid BO achieves significantly better designs than standard BO and can converge in as few as one iteration, whereas standard BO did not converge within 25 seeds.
- Overall, the method promises to enhance optimization for partially known systems by leveraging both mechanistic modeling and data-driven learning, with broad potential applicability.
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