Advances for statistical downscaling of climate change precipitation scenarios based on machine learning techniques

  1. Legasa Ríos, Mikel Néstor
Zuzendaria:
  1. Rodrigo Manzanas Zuzendaria

Defentsa unibertsitatea: Universidad de Cantabria

Fecha de defensa: 2023(e)ko uztaila-(a)k 21

Epaimahaia:
  1. José Antonio Lozano Alonso Presidentea
  2. Joaquín Bedia Jiménez Idazkaria
  3. María Laura Bettolli Kidea

Mota: Tesia

Teseo: 818683 DIALNET lock_openTESEO editor

Laburpena

Even though they are the main tool to study climate change, global climate models (GCMs) still have a limited spatial resolution and exhibit considerable systematic errors with respect to the observed climate. Statistical downscaling aims to solve this issue by learning empirical relationships between large-scale variables, well reproduced by GCMs (such as synoptic winds or geopotential), and local observations of the target surface variable, such as precipitation, the focus of this thesis. We propose a series of novel developments which allow for improving the consistency of the downscaled fields and producing plausible local-to-regional climate change scenarios. The results of this thesis have important implications for the different sectors in need of reliable precipitation information to undertake their impact assessments.