2023
DOI: 10.5194/egusphere-egu23-15217
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EDCHM: A c++ based R package for flexible semi-distributed conceptual hydrological modeling

Abstract: <p>Modular hydrological modeling has been around for some time, with early examples such as the Modular Modeling System (MMS) developed in 1996. In 2011,Fenicia et al. introduced the SUPERFLEX modeling framework, refined by Molin et al. (2021) as the Python package SurperflexPy. A framework with an even larger library of processes is the Raven modeling framework introduced by Craig et al. (2020).</p> <p>This work introduces a c++ based R package prioritizing convenienc… Show more

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“…All analyses and figures were made using Microsoft Excel [16] and R v. 4.3.1 [17] with the following packages: ggplot2, lme4, lmerTest, emmeans, mgcv, ggbeeswarm and MuMIn [1824]. The numbers of biological replicates and measurements are reported in the figure legend and associated tables in the electronic supplementary material.…”
Section: Methodsmentioning
confidence: 99%
“…All analyses and figures were made using Microsoft Excel [16] and R v. 4.3.1 [17] with the following packages: ggplot2, lme4, lmerTest, emmeans, mgcv, ggbeeswarm and MuMIn [1824]. The numbers of biological replicates and measurements are reported in the figure legend and associated tables in the electronic supplementary material.…”
Section: Methodsmentioning
confidence: 99%
“…To test whether Mesoamerican firs rapidly changed their environmental preferences after divergence, we calculated the mean PNO for each species, which we projected onto the phylogeny with methods developed by Evans et al (2009), with the function anc.clim available in phyloclim (Heibl & Calenge, 2013). This analysis is based on ancestral climate suitability, estimated at the nodes of the ultrametric tree (44 tips; iteration = 2) using ML and assuming a BM model.…”
Section: Methodsmentioning
confidence: 99%