Physics-informed dynamical system models form critical components of digital twins of the built environment. These digital twins enable the design of energy-efficient infrastructure, but must be properly calibrated to accurately reflect system behavior for downstream prediction and analysis. Dynamical system models of modern buildings are typically described by a large number of parameters and incur significant computational expenditure during simulations. To handle large-scale calibration of digital twins without exorbitant simulations, we propose ANP-BBO: a scalable and parallelizable batch-wise Bayesian optimization (BBO) methodology that leverages attentive neural processes (ANPs).
翻译:这些数字双胞胎能够设计节能基础设施,但必须进行适当校准,以准确反映下游预测和分析的系统行为。现代建筑物的动态系统模型通常用大量参数描述,在模拟过程中需要大量计算开支。为了处理数字双胞胎的大规模校准,而不进行过高的模拟,我们建议ANP-BBBO:一种可缩放的、可平行的Bayesian优化(BBBO)方法,利用专心神经过程(ANPs)。