Fast sensitivity analysis methods for computationally expensive models with multi-dimensional output
-
Published:2018-08-03
Issue:8
Volume:11
Page:3131-3146
-
ISSN:1991-9603
-
Container-title:Geoscientific Model Development
-
language:en
-
Short-container-title:Geosci. Model Dev.
Author:
Ryan EdmundORCID, Wild OliverORCID, Voulgarakis Apostolos, Lee LindsayORCID
Abstract
Abstract. Global sensitivity analysis (GSA) is a powerful approach in identifying which
inputs or parameters most affect a model's output. This determines
which inputs to include when performing model calibration or uncertainty
analysis. GSA allows quantification of the sensitivity index (SI) of a
particular input – the percentage of the total variability in the output
attributed to the changes in that input – by averaging over the other inputs
rather than fixing them at specific values. Traditional methods of computing
the SIs using the Sobol and extended Fourier Amplitude
Sensitivity Test (eFAST) methods involve running a
model thousands of times, but this may not be feasible for computationally
expensive Earth system models. GSA methods that use a statistical emulator in
place of the expensive model are popular, as they require far fewer model
runs. We performed an eight-input GSA, using the Sobol and eFAST methods, on
two computationally expensive atmospheric chemical transport models using
emulators that were trained with 80 runs of the models. We considered two
methods to further reduce the computational cost of GSA: (1) a
dimension reduction approach and (2) an emulator-free approach. When
the output of a model is multi-dimensional, it is common practice to build a
separate emulator for each dimension of the output space. Here, we used
principal component analysis (PCA) to reduce the output dimension, built an
emulator for each of the transformed outputs, and then computed SIs of the
reconstructed output using the Sobol method. We considered the global
distribution of the annual column mean lifetime of atmospheric methane, which
requires ∼ 2000 emulators without PCA but only 5–40 emulators
with PCA. We also applied an emulator-free method using a generalised
additive model (GAM) to estimate the SIs using only the training runs.
Compared to the emulator-only methods, the emulator–PCA and GAM methods
accurately estimated the SIs of the ∼ 2000 methane lifetime
outputs but were on average 24 and 37 times faster, respectively.
Funder
Natural Environment Research Council
Publisher
Copernicus GmbH
Reference70 articles.
1. Ahtikoski, A., Heikkilä, J., Alenius, V., and Siren, M.: Economic
viability of utilizing biomass energy from young stands – the case of
Finland, Biomass Bioenerg., 32, 988–996, 2008. 2. Ba, S., Myers, W. R., and Brenneman, W. A.: Optimal sliced Latin hypercube
designs, Technometrics, 57, 479–487, 2015. 3. Bailis, R., Ezzati, M., and Kammen, D. M.: Mortality and greenhouse gas
impacts of biomass and petroleum energy futures in Africa, Science, 308,
98–103, 2005. 4. Bastos, L. S. and O'Hagan, A.: Diagnostics for Gaussian process emulators,
Technometrics, 51, 425–438, 2009. 5. Campbell, J. E., Carmichael, G. R., Chai, T., Mena-Carrasco, M., Tang, Y.,
Blake, D., Blake, N., Vay, S. A., Collatz, G. J., and Baker, I.:
Photosynthetic control of atmospheric carbonyl sulfide during the growing
season, Science, 322, 1085–1088, 2008.
Cited by
27 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|