Abstract
Monthly precipitation data during the period of 1970 to 2019 obtained from the Meteorological, Climatological and Geophysical Agency database were used to analyze regionalized precipitation regimes in Yogyakarta, Indonesia. There were missing values in 52.6% of the data, which were handled by a hybrid random forest approach and bootstrap method (RF-Bs). The present approach addresses large missing values and also reduces the Root Mean Square Error (RMSE) and the Mean Absolute Error (MAE) in the search for the optimum minimal value. Cluster analysis was used to classify stations or grid points into different rainfall regimes. Hierarchical clustering analysis (HCA) of rainfall data reveal the pattern of behavior of the rainfall regime in a specific region by identifying homogeneous clusters. According to the HCA, four distinct and homogenous regions were recognized. Then, the principal component analysis (PCA) technique was used to homogenize the rainfall series and optimally reduce the long-term rainfall records into a few variables. Moreover, PCA was applied to monthly rainfall data in order to validate the results of the HCA analysis. On the basis of the 75% of cumulative variation, 14 factors for the Dry season and the Rainy season, and 12 factors for the Inter-monsoon season, were extracted among the components using varimax rotation. Consideration of different groupings into these approaches opens up new advanced early warning systems in developing recommendations on how to differentiate climate change adaptation- and mitigation-related policies in order to minimize the largest economic damage and taking necessary precautions when multiple hazard events occur.
Highlights
IntroductionRainfall is the most significant variable in climatology and hydrological modelling
In order to counter the issue regarding a large gap of missing values, this study proposed a hybrid Random Forest (RF)-BS that could be applied in the monthly rainfall data in the Special Region of Yogyakarta, Indonesia
This study proposed a hybrid imputation approach using Random Forest with Bootstrap (RF-Bs) combined with multivariate analysis to identify patterns of spatial rainfall across Yogyakarta, Indonesia
Summary
Rainfall is the most significant variable in climatology and hydrological modelling. Indonesia is a important area for intervention and research surrounding the impact of natural disasters as it is a part of the area of geological instability known as the ‘Ring of Fire’. It is a country that regularly experiences mud slides, flooding and earthquakes. One relevant feature of the rainfall regime in Indonesia is the occurrence of episodes of rain of an extreme character, which has the potential to become hazardous in Indonesia. Consecutive waves of flash floods hit Sleman regency
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