Projection Pursuit Regression (PPR) on Statistical Downscaling Modeling For Daily Rainfall Forecasting*
Abstract
Rainfall forecasting has an important role in people's lives. Rainfall forecasting in 
Indonesia has complex problems because it is located in a tropical climate. Rainfall 
prediction in Indonesia is difficult due to the complex topography and interactions 
between the oceans, land and atmosphere. With these conditions, an accurate rainfall 
forecasting model on a local scale is needed, of course taking into account the 
information about the global atmospheric circulation obtained from the General 
Circulation Model (GCM) output. GCM may still be used to provide local or regional scale 
information by adding Statistical Downscaling (SD) techniques. SD is a regression based model in determining the functional relationship between the response variable 
and the predictor variable. Rainfall observations obtained from the Meteorology 
Climatology and Geophysics Council (BMKG) are a response variable in this study. The 
predictor variable used in this study is the global climate output from GCM. This research 
was conducted in a place, namely Kupang City, East Nusa Tenggara because it has low 
rainfall. The Projection Pursuit Regression (PPR) will be used in this SD method for this 
study. In PPR modeling, optimization needs to be done and model validation is carried 
out with the smallest Root Mean Square Error (RMSE) criteria. The expected results 
must have a pattern between the results of forecasts and observations showing or 
approaching the observational data. The PPR model is a good model for predicting 
rainfall because The results of the forecast and observation show that the results of the 
rainfall forecast are observational data.
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- LSP-Jurnal Ilmiah Dosen [7430]