Abstract

Extreme rainfalls often occur everywhere just in a moment, very difficult to be anticipated and produce very detrimental impact to the environment and human society. Floods and landslides are influenced by high variability of extreme rainfalls, especially in the watershed area for floods and the hills as well as mountains for landslides, such as in Malang Residence, East Java, Indonesia as a case study in this study. The prediction tools for determining location and time of the next extreme rainfalls event will occur are required. The behavior of extreme rainfalls measured on one or several stations rain gauge could be approximated by Generalized Pareto (GP) Distribution. The prediction tools must be able to identify and characterize parameters of the GP Distribution such as shape and scale parameters over the entire area. Shape parameter of GP distribution has associated with characteristics of extreme rainfalls distributions. To identify characteristics of shape parameter on each station and their similarity, an algorithm to make a partition of shape parameters into several spatial clusters and investigate the type of distribution was proposed. In order to determine threshold value, mean residual life plot and stability of modified scale and shape parameters at a range of thresholds were used, Maximum Likelihood method was utilized to estimate parameter value and k-means method combined by Silhouette values to make the cluster of extreme rainfalls distribution. By using rainfalls data on twenty eight different stations rain gauge, the results showed that the proposed algorithm well performed and extreme rainfalls were heterogeneous with three type of GP distribution. In general, shape parameter values were negative and positive except on nine stations which were close to zero and were well partitioned by six clusters.

Highlights

  • F Extreme rainfalls often occur everywhere just in a moment, very difficult to be anticipated and produce floods and landslides caused by extreme rainfalls requires expert forecasting tool in local-scale

  • By using rainfalls data on twenty eight different stations rain gauge, the results showed that the proposed algorithm well performed and extreme rainfalls were heterogeneous with three type of Generalized Pareto (GP) distribution

  • Plots on each data series at twenty eight stations rain gauge illustrate that model which was obtained by Maximum Likelihood Estimation (MLE) fitted the data well

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Summary

Introduction

F Extreme rainfalls often occur everywhere just in a moment, very difficult to be anticipated and produce floods and landslides caused by extreme rainfalls requires expert forecasting tool in local-scale. Several researches in last decade years have been conducted their research on characterizing and modeling the large-scale temporal (annual and seasonal) of extreme rainfalls They use variety of statistical methods for analyzing extreme rainfalls data, such as linear regression analysis, nonstationary frequency analysis (Tramblay et al, 2013), Bayesian approach, time series analysis (Tularam and Ilahee, 2010) and semi-parametric and parametric method (AghaKouchak and Nasrollahi, 2010), Peak over threshold method using GP distribution (Li et al, 2005). These conditions make rivers and ground into a dangerous and vulnerable to floods and landslides

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