Simulation Failure-Robust Bayesian Optimization for Data-Driven Parameter Estimation
提出一种失败鲁棒贝叶斯优化算法,在线学习仿真失败区域并引导优化避开它们,加速参数校准过程,适用于数字孪生等工业系统。
Advances in modeling and computation have resulted in high-fidelity digital twins capable of simulating the dynamics of a wide range of industrial systems. These simulation models often require calibration, or the estimation of an optimal set of parameters in some goodness-of-fit sense, to reflect a system’s observed behavior. While searching over the parameter space is an inevitable part of the calibration process, simulation models are rarely designed to be valid for arbitrarily large parameter spaces. The application of existing calibration methods, therefore, often results in repeated model evaluations using parameters that can cause the simulations to be impractically slow or even result in catastrophic failure. In general, the shape of subregions in the parameter space that could result in simulation failure is unknown. In this article, we propose a novel failure-robust Bayesian optimization (FR-BO) algorithm that learns these failure regions (FRs) from online simulations and informs a Bayesian optimization algorithm to avoid FRs while optimizing model parameters. This results in acceleration of the optimizer’s convergence and prevents wastage of time trying to simulate parameters with high failure probabilities. The effectiveness of the proposed FR-BO algorithm is demonstrated via a well-known benchmark example where we compare against state-of-the-art gradient matching techniques, and a practical example related to parameter estimation for digital twins of buildings.