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Section 1: Publication
Publication Type
Journal Article
Authorship
Marsh, C. B., Green, K. R., Wang, B., & Spiteri, R. J.
Title
Performance improvements to modern hydrological models via lookup table optimizations
Year
2021
Publication Outlet
Environmental Modelling & Software, 139, 105018.
DOI
ISBN
ISSN
Citation
Marsh, C. B., Green, K. R., Wang, B., & Spiteri, R. J. (2021). Performance improvements to modern hydrological models via lookup table optimizations. Environmental Modelling & Software, 139, 105018.
https://doi.org/10.1016/j.envsoft.2021.105018
Abstract
Distributed hydrological models predict the spatial variability in processes that govern observed mass and energy fluxes. A challenge associated with the use of these models is the computational burden associated with representing the Earth's (sub)surface via millions of computational elements. This burden is exacerbated as more complex process representations are included because their parameterizations involve computationally intensive mathematical functions. Lookup tables (LUTs) approximate a mathematical function by interpolating precomputed values of the function. Highly accurate approximations are possible for substantially reduced computational costs. In this work, a general methodology using the C++ LUT library FunC is applied to identify and replace computationally intensive mathematical function evaluations in the Canadian Hydrological Model (CHM). The use of LUTs introduces a pointwise relative error below and provides a reduction in run time of almost 20%. This work shows how LUTs can be implemented with relatively little pain and yield significant computational savings for distributed hydrological models.
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