2024
DOI: 10.1029/2023ea003227
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Deep Learning for Daily 2‐m Temperature Downscaling

Shuyan Ding,
Xiefei Zhi,
Yang Lyu
et al.

Abstract: This study proposes a novel method, which is a U‐shaped convolutional neural network that combines non‐local attention mechanisms, Res2net residual modules, and terrain information (UNR‐Net). The original U‐Net method and the linear regression (LR) method are conducted as benchmarks. Generally, the UNR‐Net has demonstrated promise in performing a 10× downscaling for daily 2‐m temperature over North China with lead times of 1–7 days and shows superiority to the U‐Net and LR methods. To be specific, U‐Net and UN… Show more

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“…Barnes et al, 2024), as well as numerical model development (e.g. Ding et al, 2024). Despite this widespread acceptance, however, there appears to be one distinct and fundamental problem in the derivation of core equations in J99 that, to the author's knowledge, has not previously been recognized nor reported.…”
Section: Introductionmentioning
confidence: 99%
“…Barnes et al, 2024), as well as numerical model development (e.g. Ding et al, 2024). Despite this widespread acceptance, however, there appears to be one distinct and fundamental problem in the derivation of core equations in J99 that, to the author's knowledge, has not previously been recognized nor reported.…”
Section: Introductionmentioning
confidence: 99%