Application of Statistical Downscaling with Principal Component Regression for Local Rainfall Forecasting in Jember Regency
Date
2020-06-10Author
HADI, Alfian Futuhul
RISKI, Abduh
TAZKIYAH, Okit
ANGGRAENI, Dian
SALSABILA, Izdihar
WICAKSONO, Dimas BC
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Global climate change causes various changes and extreme fluctuations in weather circumstances,
including extreme changes in rainfall. An accurate rainfall forecasting was indeed needed in various agricultural
activities. The statistical downscaling (SD) was developed to model the global climate circumstance data from
the satellite, called the General Circulation Model (GCM). Combine with data on the earth from the weather
station; the GCM predict the future local weather. The functional relationship in the SD was modeling the GCM
output data as the predictors and the local-scale rainfall data as the response. The GCM’s ability to display
predictive data for decades to come was a technological leap in forecasting the rainfall to study long term on
weather/climate change. Statistically, this modeling requires the twos below: (1) a dimensional reduction in GCM
data and (2) accurate predictive models on the functional relationship. In this study, rainfall forecasting was
conducted in Jember Regency using Principal Component Analysis (PCA) for dimensional reduction and a
predictive model of Principal Component Regression (PCR). The accuracy was measured in each cluster in the
8×8, and 10×10 domains with the RMSE statistic was around 80.41-101.35.
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