@article{4c7dc1768a0e49f7b41e896b73ff4dd5,
title = "A fast particle-based approach for calibrating a 3-d model of the antarctic ice sheet",
abstract = "We consider the scientifically challenging and policy-relevant task of understanding the past and projecting the future dynamics of the Antarctic ice sheet. The Antarctic ice sheet has shown a highly nonlinear threshold response to past climate forcings. Triggering such a threshold response through anthropogenic greenhouse gas emissions would drive drastic and potentially fast sea level rise with important implications for coastal flood risks. Previous studies have combined information from ice sheet models and observations to calibrate model parameters. These studies have broken important new ground but have either adopted simple ice sheet models or have limited the number of parameters to allow for the use of more complex models. These limitations are largely due to the computational challenges posed by calibration as models become more computationally intensive or when the number of parameters increases. Here, we propose a method to alleviate this problem: a fast sequential Monte Carlo method that takes advantage of the massive parallelization afforded by modern high-performance computing systems. We use simulated examples to demonstrate how our sample-based approach provides accurate approximations to the posterior distributions of the calibrated parameters. The drastic reduction in computational times enables us to provide new insights into important scientific questions, for example, the impact of Pliocene era data and prior parameter information on sea level projections. These studies would be computationally prohibitive with other computational approaches for calibration such as Markov chain Monte Carlo or emulation-based meth-ods. We also find considerable differences in the distributions of sea level projections when we account for a larger number of uncertain parameters. For example, based on the same ice sheet model and data set, the 99th percentile of the Antarctic ice sheet contribution to sea level rise in 2300 increases from 6.5 m to 13.1 m when we increase the number of calibrated parameters from three to 11. With previous calibration methods, it would be challenging to go beyond five parameters. This work provides an important next step toward improving the uncertainty quantification of complex, computationally intensive and decision-relevant models.",
author = "Lee, {Ben Seiyon} and Murali Haran and Fuller, {Robert W.} and David Pollard and Klaus Keller",
note = "Funding Information: We would like to thank Don Richards, Daniel Gilford, Bob Kopp, Kelsey Ruckert, Vivek Srikrishnans, Robert Ceres, Kristina Rolph, Mahkameh Zarekarizi and Casey Hegelson for useful discussions. This work was partially supported by the U.S. Department of Energy, Office of Science, Biological and Environmental Research Pro-gram, Earth and Environmental Systems Modeling, MultiSector Dynamics, Contract No. DE-SC0016162 and by the National Science Foundation through the Network for Sustainable Climate Risk Management (SCRiM) under NSF cooperative agreement GEO-1240507. This study was also cosupported by the Penn State Center for Climate Risk Management. We would like to acknowledge high-performance computing support from Cheyenne (doi:10.5065/D6RX99HX) provided by NCAR{\textquoteright}s Computational and Information Systems Laboratory, sponsored by the National Science Foundation. Any opinions, findings and conclusions or recommendations expressed in this material are those of the authors and do not necessarily reflect the views of the Department of Energy, the National Science Foundation or other funding entities. Any errors and opinions are, of course, those of the authors. We are not aware of any real or perceived conflicts of interest for any authors. Funding Information: Acknowledgments. We would like to thank Don Richards, Daniel Gilford, Bob Kopp, Kelsey Ruckert, Vivek Srikrishnans, Robert Ceres, Kristina Rolph, Mahkameh Zarekarizi and Casey Hegelson for useful discussions. This work was partially supported by the U.S. Department of Energy, Office of Science, Biological and Environmental Research Program, Earth and Environmental Systems Modeling, MultiSector Dynamics, Contract No. DE-SC0016162 and by the National Science Foundation through the Network for Sustainable Climate Risk Management (SCRiM) under NSF cooperative agreement GEO-1240507. This study was also cosupported by the Penn State Center for Climate Risk Management. We would like to acknowledge high-performance computing support from Cheyenne (doi:10.5065/D6RX99HX) provided by NCAR{\textquoteright}s Computational and Information Systems Laboratory, sponsored by the National Science Foundation. Any opinions, findings and conclusions or recommendations expressed in this material are those of the authors and do not necessarily reflect the views of the Department of Energy, the National Science Foundation or other funding entities. Any errors and opinions are, of course, those of the authors. We are not aware of any real or perceived conflicts of interest for any authors. Publisher Copyright: {\textcopyright} Institute of Mathematical Statistics, 2020.",
year = "2020",
doi = "10.1214/19-AOAS1305",
language = "English (US)",
volume = "14",
pages = "605--634",
journal = "Annals of Applied Statistics",
issn = "1932-6157",
publisher = "Institute of Mathematical Statistics",
number = "2",
}