Applied Sciences (Aug 2021)

Reducing Forecast Errors of a Regional Climate Model Using Adaptive Filters

  • Michel Pompeu Tcheou,
  • Lisandro Lovisolo,
  • Alexandre Ribeiro Freitas,
  • Sin Chan Chou

DOI
https://doi.org/10.3390/app11178001
Journal volume & issue
Vol. 11, no. 17
p. 8001

Abstract

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In this work, the use of adaptive filters for reducing forecast errors produced by a Regional Climate Model (RCM) is investigated. Seasonal forecasts are compared against the reanalysis data provided by the National Centers for Environmental Prediction. The reanalysis is used to train adaptive filters based on the Recursive Least Squares algorithm in order to reduce the forecast error. The K-means unsupervised learning algorithm is used to obtain the number of filters to employ from the climate variables. The proposed approach is applied to some climate variables such as the meridional wind, zonal wind, and the geopotential height. The forecast is produced by the Eta RCM at 40-km resolution in a domain covering most of Brazil. Results show that the proposed approach is capable of reducing the forecast errors, according to evaluation metrics such as normalized mean square error, maximum absolute error, and maximum normalized absolute error, thus improving the seasonal climate forecasts.

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