Multi-objective calibration by combination of stochastic and gradient-like parameter generation rules – the caRamel algorithm
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Published:2020-06-19
Issue:6
Volume:24
Page:3189-3209
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ISSN:1607-7938
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Container-title:Hydrology and Earth System Sciences
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language:en
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Short-container-title:Hydrol. Earth Syst. Sci.
Author:
Monteil CélineORCID, Zaoui Fabrice, Le Moine Nicolas, Hendrickx Frédéric
Abstract
Abstract. Environmental modelling is complex, and models often require the calibration of several parameters that are not able to be directly evaluated from a physical quantity or field measurement.
Multi-objective calibration has many advantages such as adding constraints in a poorly constrained problem or finding a compromise between different objectives by defining a set of optimal parameters.
The caRamel optimizer has been developed to meet the requirement for an automatic calibration procedure that delivers not just one but a family of parameter sets that are optimal with regard to a multi-objective target. The idea behind caRamel is to rely on stochastic rules while also allowing more “local” mechanisms, such as the extrapolation along vectors in the parameter space.
The caRamel algorithm is a hybrid of the multi-objective evolutionary annealing simplex (MEAS) method and the non-dominated sorting genetic algorithm II (ε-NSGA-II). It was initially developed for calibrating hydrological models but can be used for any environmental model.
The caRamel algorithm is well adapted to complex modelling. The comparison with other optimizers in hydrological case studies (i.e. NSGA-II and MEAS) confirms the quality of the algorithm.
An R package, caRamel, has been designed to easily implement this multi-objective algorithm optimizer in the R environment.
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
Reference51 articles.
1. Baluja, S. and Caruana, R.: Removing the genetics from the standard genetic algorithm, in: Machine Learning Proceedings 1995, Morgan Kaufmann, San Francisco, USA, 38–46, 1995. a 2. Campo, L., Caparrini, F., and Castelli, F.: Use of multi-platform, multi-temporal remote-sensing data for calibration of a distributed hydrological model: an application in the Arno basin,
Italy, Hydrol. Process., 20, 2693–2712, 2006. a 3. Coron, L., Thirel, G., Delaigue, O., Perrin, C., and Andréassian, V.: The Suite of
Lumped GR Hydrological Models in an R package, Environ. Model.
Softw., 94, 166–171, https://doi.org/10.1016/j.envsoft.2017.05.002, 2017. a, b, c 4. Coron, L., Delaigue, O., Thirel, G., Perrin, C., and Michel, C.: airGR: Suite of GR
Hydrological Models for Precipitation-Runoff Modelling. R package version 1.3.2.23, available at:
https://cran.r-project.org/package=airGR (last access: 15 June 2020), 2019. a, b, c 5. Deb, K., Pratap, A., Agarwal, S. Meyarivan, T.: A fast and elitist multiobjective genetic algorithm: NSGA-II, IEEE Trans. Evol. Comput., 6, 182–197, 2002. a, b, c
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