AO-PHLGJul 22, 2022

Enhancing Oceanic Variables Forecast in the Santos Channel by Estimating Model Error with Random Forests

arXiv:2208.05966v1h-index: 18
Originality Synthesis-oriented
AI Analysis

This work improves oceanic variable forecasts for the Santos Channel region, but it is incremental as it extends previous methods to new variables and stations.

The study tackled forecasting Sea Surface Height and current velocity in the Santos Channel by using Random Forests to predict errors of a numerical forecasting system, resulting in an average 11.9% reduction in RMSE and 38.7% reduction in bias.

In this work we improve forecasting of Sea Surface Height (SSH) and current velocity (speed and direction) in oceanic scenarios. We do so by resorting to Random Forests so as to predict the error of a numerical forecasting system developed for the Santos Channel in Brazil. We have used the Santos Operational Forecasting System (SOFS) and data collected in situ between the years of 2019 and 2021. In previous studies we have applied similar methods for current velocity in the channel entrance, in this work we expand the application to improve the SHH forecast and include four other stations in the channel. We have obtained an average reduction of 11.9% in forecasting Root-Mean Square Error (RMSE) and 38.7% in bias with our approach. We also obtained an increase of Agreement (IOA) in 10 of the 14 combinations of forecasted variables and stations.

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