Regression‐based regionalization for bias correction of temperature and precipitation

Volume: 39, Issue: 7, Pages: 3298 - 3312
Published: Feb 28, 2019
Abstract
Statistical bias correction methods are inferred relationships between inputs and outputs. The constructed functions are based on available observations, which are limited in time and space. This study investigates the ability of regression models (linear and nonlinear) to regionalize a domain by defining a minimum number of training pixels necessary to achieve a good level of bias correction performance. Linear regression is used to divide...
Paper Details
Title
Regression‐based regionalization for bias correction of temperature and precipitation
Published Date
Feb 28, 2019
Volume
39
Issue
7
Pages
3298 - 3312
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