2021
DOI: 10.1109/access.2021.3057500
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Augmented Convolutional LSTMs for Generation of High-Resolution Climate Change Projections

Abstract: Projection of changes in extreme indices of climate variables such as temperature and precipitation are critical to assess the potential impacts of climate change on human-made and natural systems, including critical infrastructures and ecosystems. While impact assessment and adaptation planning rely on high-resolution projections (typically in the order of a few kilometers), state-of-the-art Earth System Models (ESMs) are available at spatial resolutions of few hundreds of kilometers. Current solutions to obt… Show more

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Cited by 17 publications
(15 citation statements)
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“…The main objective is to adjust the statistical properties of climate simulations with observations. Several studies have used QM bias correction for annual precipitation maxima (Cannon et al., 2015; Harilal et al., 2021; Maraun, 2013; Ngai et al., 2017). The QM has been shown to be an effective method for removing biases at relatively little computational expense (Li et al., 2010; Maraun, 2013; Maraun et al., 2010; Maurer & Pierce, 2014).…”
Section: Methodsmentioning
confidence: 99%
“…The main objective is to adjust the statistical properties of climate simulations with observations. Several studies have used QM bias correction for annual precipitation maxima (Cannon et al., 2015; Harilal et al., 2021; Maraun, 2013; Ngai et al., 2017). The QM has been shown to be an effective method for removing biases at relatively little computational expense (Li et al., 2010; Maraun, 2013; Maraun et al., 2010; Maurer & Pierce, 2014).…”
Section: Methodsmentioning
confidence: 99%
“…Statistical downscaling of gridded climate variables is a task closely related to that of superresolution in computer vision, considering that both aim to learn a mapping between lowresolution and high-resolution grids (Wang et al, 2021). Unsurprisingly, several DL-based approaches have been proposed for statistical or empirical downscaling of climate data in recent years (Vandal et al, 2017;Leinonen et al, 2020;Stengel et al, 2020;Höhlein et al, 2020;Liu et al, 2020;Harilal et al, 2021). Most of these methods have in common the use of convolutions for the exploitation of multivariate spatial or spatio-temporal gridded data, that is 3D (height/latitude, width/longitude, channel/variable) or 4D (time, height/latitude, width/longitude, channel/variable) tensors.…”
Section: Cnn-based Super-resolution For Statistical Downscalingmentioning
confidence: 99%
“…The trained model is then applied to the desired, unseen during training, lowresolution data in a domain-transfer fashion. Other approaches such as those proposed by Höhlein et al (2020) or Harilal et al (2021), model a cross-scale transfer function between explicit low-resolution and high-resolution datasets. DL4DS supports both training frameworks, with explicit paired samples (in MOS fashion) or with paired samples simulated from high-resolution fields (in PerfectProg fashion).…”
Section: Type Of Statistical Downscalingmentioning
confidence: 99%
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