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  An example of an automatic differentiation-based modelling system

Kaminski, T., Giering, R., Scholze, M., Rayner, P., & Knorr, W. (2003). An example of an automatic differentiation-based modelling system. In V. Kumar, M. Gavrilova, C. Tan, & P. L'ecuyer (Eds.), Computational Science and its Applications - ICCSA 2003, Pt 2, Proceedings (pp. 95-104). Heidelberg: Springer.

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BGC0609.pdf (Publisher version), 2MB
 
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 Creators:
Kaminski, T., Author
Giering, R., Author
Scholze, M., Author
Rayner, P., Author
Knorr, W.1, Author           
Affiliations:
1Department Biogeochemical Synthesis, Prof. C. Prentice, Max Planck Institute for Biogeochemistry, Max Planck Society, ou_1497753              

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Free keywords: CO2; biosphere; transport
 Abstract: We present a prototype of a Carbon Cycle Data Assimilation System (CCDAS), which is composed of a terrestrial biosphere model (BETHY) coupled to an atmospheric transport model (TM2), corresponding derivative codes and a derivative-based optimisation routine. In calibration mode, we use first and second derivatives to estimate model parameters and their uncertainties from atmospheric observations and their uncertainties. In prognostic mode, we use first derivatives to map model parameters and their uncertainties onto prognostic quantities and their uncertainties. For the initial version of BETHY the corresponding derivative codes have been generated automatically by FastOpt's automatic differentiation (AD) tool Transformation of Algorithms in Fortran (TAF). From this point on, BETHY has been developed further within CCDAS, allowing immediate update of the derivative code by TAR This yields, at each development step, both sensitivity information and systematic comparison with observational data meaning that CCDAS is supporting model development. The data assimilation activities, in turn, benefit from using the current model version. We describe generation and performance of the various derivative codes in CCDAS, i.e. reverse scalar (adjoint), forward over reverse (Hessian) as well as forward and reverse Jacobian plus detection of the Jacobian's sparsity.

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 Dates: 2003
 Publication Status: Issued
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 Identifiers: ISI: ISI:000184327300011
Other: BGC0609
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Title: Computational Science and its Applications - ICCSA 2003, Pt 2, Proceedings
Source Genre: Book
 Creator(s):
Kumar, V., Editor
Gavrilova, M.L., Editor
Tan, C.J.K., Editor
L'ecuyer, P., Editor
Affiliations:
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Publ. Info: Heidelberg : Springer
Pages: - Volume / Issue: 2668 Sequence Number: - Start / End Page: 95 - 104 Identifier: -

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Title: Lecture Notes in Computer Science
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Pages: - Volume / Issue: 2668 Sequence Number: - Start / End Page: - Identifier: -