2019
DOI: 10.5194/hess-2019-464
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Coupled machine learning and the limits of acceptability approach applied in parameter identification for a distributed hydrological model

Abstract: Abstract. Monte Carlo (MC) methods have been widely used in uncertainty analysis and parameter identification for hydrological models. The main challenge with these approaches is, however, the prohibitive number of model runs required to get an adequate sample size which may take from days to months especially when the simulations are run in distributed mode. In the past, emulators have been used to minimize the computational burden of the MC simulation through direct estimation of the residual based response … Show more

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Cited by 6 publications
(5 citation statements)
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“…2). The hyperparameters of a single layer neural network are the number of units in the hidden layer (size) and the regularization parameter to avoid over-fitting (decay) (Teweldebrhan et al 2020).…”
Section: Machine Learning Models and Performance Measuresmentioning
confidence: 99%
“…2). The hyperparameters of a single layer neural network are the number of units in the hidden layer (size) and the regularization parameter to avoid over-fitting (decay) (Teweldebrhan et al 2020).…”
Section: Machine Learning Models and Performance Measuresmentioning
confidence: 99%
“…Specifically, we have 2). The hyperparameters of a single layer neural network are the number of units in the hidden layer (size) and the regularization parameter to avoid over-fitting (decay) (Teweldebrhan et al, 2020). In order to achieve a high performance of the ML models, we combine hyperparameter tuning and cross validation.…”
Section: Gradient Boosting Machines Use Weak Learner Models (Usually ...mentioning
confidence: 99%
“…If the model calibration of a physical model is aided by ma-chine learning is this process included in the definition of a hybrid system (e.g. Teweldebrhan et al, 2020)? Would deeplearning-based quality control of observations be included within a hybrid system (e.g.…”
Section: Introductionmentioning
confidence: 99%