Chao Guo
Local Marine Renewable Energy Resource Assessment via bias correction of climate re-analysis datasets.
Rel. Giuseppe Giorgi. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Meccanica (Mechanical Engineering), 2022
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Abstract
This study focus on the assessment of climate simulation variables by exploiting different bias correction methods and analysis the comparison of different bias corrected simulation. Because measured models need to generate high resolution input data, global and regional climate models are often distorted and have poor resolution. The purpose of this study is to find an accurate bias correction approach for climate variables prediction which are used to estimate the potential of renewable energy in a local area. Three different bias correction methods are analyzed, one of them is simply to correct based on mean values of previous data while others are based on the choice of different quantiles.
In order to ensure the accuracy of the study, an important assumption is that the statistical properties of the present climate bias are maintained in the future, which can guarantee the experimental results are useful in future climate predictions
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