Ensemble-Based Experimental Design for Targeting Data Acquisition to Inform Climate Models
Oliver R. A. Dunbar, Michael F. Howland, Tapio Schneider, Andrew M., Stuart

TL;DR
This paper introduces an ensemble-based algorithm within a Bayesian framework to optimize data collection for climate models, reducing uncertainty efficiently by targeting specific regions and times for data acquisition.
Contribution
The authors develop a novel parallel algorithm integrated with the CES framework to strategically target data collection, significantly decreasing the number of model evaluations needed for calibration.
Findings
Targeted data collection increases information gain about GCM parameters.
Regions near the intertropical convergence zone often yield the highest uncertainty reduction.
The method effectively calibrates parameters using limited, strategically chosen data.
Abstract
Data required to calibrate uncertain GCM parameterizations are often only available in limited regions or time periods, for example, observational data from field campaigns, or data generated in local high-resolution simulations. This raises the question of where and when to acquire additional data to be maximally informative about parameterizations in a GCM. Here we construct a new ensemble-based parallel algorithm to automatically target data acquisition to regions and times that maximize the uncertainty reduction, or information gain, about GCM parameters. The algorithm uses a Bayesian framework that exploits a quantified distribution of GCM parameters as a measure of uncertainty. This distribution is informed by time-averaged climate statistics restricted to local regions and times. The algorithm is embedded in the recently developed calibrate-emulate-sample (CES) framework, which…
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