“…Instead, we perform calibration and UQ using the recently developed CES methodology (Cleary et al.,
2021), which consists of three steps: (a) Ensemble Kalman processes (Garbuno‐Inigo et al.,
2020; Schillings & Stuart,
2017) are used to calibrate parameters and to generate input‐output pairs of the mapping
; (b) Gaussian process (GP) regression, or other machine learning tools, are used to train an emulator
of the mapping
using the training points generated in the calibration step; and (c) MCMC sampling with the computationally efficient emulator
rather than the expensive forward model
is used to estimate the posterior distribution
. The CES methodology has previously been used for calibration and UQ of parameters in simple model problems such as Darcy flow and Lorenz systems (Cleary et al.,
2021) and for convective parameters in a statistically stationary GCM (Dunbar et al.,
2021). More recent methodological developments by Lan et al.…”