Iterative integration of deep learning in hybrid Earth surface system modelling

M Chen, Z Qian, N Boers, AJ Jakeman… - Nature Reviews Earth & …, 2023 - nature.com
Earth system modelling (ESM) is essential for understanding past, present and future Earth
processes. Deep learning (DL), with the data-driven strength of neural networks, has …

[HTML][HTML] Sensitivity analysis of environmental models: A systematic review with practical workflow

F Pianosi, K Beven, J Freer, JW Hall, J Rougier… - … Modelling & Software, 2016 - Elsevier
Sensitivity Analysis (SA) investigates how the variation in the output of a numerical model
can be attributed to variations of its input factors. SA is increasingly being used in …

[HTML][HTML] The future of sensitivity analysis: an essential discipline for systems modeling and policy support

S Razavi, A Jakeman, A Saltelli, C Prieur… - … Modelling & Software, 2021 - Elsevier
Sensitivity analysis (SA) is en route to becoming an integral part of mathematical modeling.
The tremendous potential benefits of SA are, however, yet to be fully realized, both for …

[HTML][HTML] A Matlab toolbox for global sensitivity analysis

F Pianosi, F Sarrazin, T Wagener - Environmental Modelling & Software, 2015 - Elsevier
Abstract Global Sensitivity Analysis (GSA) is increasingly used in the development and
assessment of environmental models. Here we present a Matlab/Octave toolbox for the …

Global sensitivity analysis in hydrological modeling: Review of concepts, methods, theoretical framework, and applications

X Song, J Zhang, C Zhan, Y Xuan, M Ye, C Xu - Journal of hydrology, 2015 - Elsevier
Sensitivity analysis (SA) aims to identify the key parameters that affect model performance
and it plays important roles in model parameterization, calibration, optimization, and …

[HTML][HTML] A simple and efficient method for global sensitivity analysis based on cumulative distribution functions

F Pianosi, T Wagener - Environmental Modelling & Software, 2015 - Elsevier
Variance-based approaches are widely used for Global Sensitivity Analysis (GSA) of
environmental models. However, methods that consider the entire Probability Density …

[HTML][HTML] Global Sensitivity Analysis of environmental models: Convergence and validation

F Sarrazin, F Pianosi, T Wagener - Environmental Modelling & Software, 2016 - Elsevier
We address two critical choices in Global Sensitivity Analysis (GSA): the choice of the
sample size and of the threshold for the identification of insensitive input factors. Guidance to …

Sobol'sensitivity analysis of a complex environmental model

J Nossent, P Elsen, W Bauwens - Environmental modelling & software, 2011 - Elsevier
Complex environmental models are controlled by a high number of parameters. Accurately
estimating the values of all these parameters is almost impossible. Sensitivity analysis (SA) …

[HTML][HTML] A comprehensive evaluation of various sensitivity analysis methods: A case study with a hydrological model

Y Gan, Q Duan, W Gong, C Tong, Y Sun, W Chu… - … modelling & software, 2014 - Elsevier
Sensitivity analysis (SA) is a commonly used approach for identifying important parameters
that dominate model behaviors. We use a newly developed software package, a Problem …

Evaluation of an urban drainage system and its resilience using remote sensing and GIS

GC Guptha, S Swain, N Al-Ansari, AK Taloor… - … Applications: Society and …, 2021 - Elsevier
The increasing number of pluvial floods due to extreme climatic events or poor maintenance
of the drainage networks urge for assessing the performance of the urban drainage system …