Abstract:
Extreme rainfall has become a prevailing natural disaster in the region of
Southern Africa. Flooding is one of the natural disasters that pose damage
to property, infrastructure, and human lives. This study conducted a comprehensive
extreme value analysis of monthly maximum rainfall recorded at
five selected meteorological stations in KwaZulu-Natal province, South Africa;
namely Mandini, Mount Edgecombe, Richards Bay Airport, Port Edward, and
Virginia, using data spanning from 1952 to 2022 as provided by the South
African Weather Service (SAWS). The aimed to compare the performance of
advanced extreme value theory (EVT) models, specifically the generalised extreme
value distribution (GEVD), generalised extreme value distribution for
r-largest order statistics (GEVDr) and the blended generalised extreme value
distribution (bGEVD), in modelling extreme rainfall events. Stationarity assessments
using the Augmented Dickey-Fuller (ADF), Kwiatkowski-Phillips-
Schmidt-Shin (KPSS), and Phillips-Perron (PP) tests produced mixed results,
while the Mann-Kendall (M-K) trend test indicated a monotonic decreasing
trend in rainfall. Parameter estimation for the GEVD was performed using
maximum likelihood estimation (MLE) and Bayesian Markov Chain Monte
Carlo (MCMC) methods, both yielding positive shape parameters consistent
with the Fr´echet class of distributions. Goodness-of-fit evaluations through
Anderson-Darling (A-D) and Kolmogorov-Smirnov (K-S) tests, alongside diagnostic
plots, confirmed the suitability of the GEVD model for the data. Additionally,
the Shapiro-Wilk test demonstrated the non-normality of the rainfall
datasets. Optimal block sizes for the r-largest order statistics model varied
across stations, with r-values ranging from 2 to 4. Both the standard GEVD
and r-largest GEVD models provided consistent return level estimates, suggesting
strong model performance. The bGEVD model further revealed a negative
time trend in rainfall maxima, resulting in lower return level estimates
compared to the other models. Return levels were calculated for return periods
ranging from 5 to 250 years, highlighting that extreme rainfall events
become increasingly likely with longer return periods. Overall, the findings
of the study offer valuable insights into the behaviour of extreme rainfall in
KwaZulu-Natal province, with significant implications for risk management,
infrastructure planning, and disaster preparedness.