Robust statistical modeling of monthly rainfall: The minimum density power divergence approach [article]

Arnab Hazra, Abhik Ghosh
2023 arXiv   pre-print
Statistical modeling of monthly, seasonal, or annual total rainfall is a crucial area of research in meteorology, mainly from the perspective of rainfed agriculture, where a proper assessment of the future availability of rainwater is necessary. The rainfall amount during a wet period can take any positive value and some simple (one or two-parameter) probability models supported over the positive real line that are generally used for rainfall modeling are exponential, gamma, Weibull, lognormal,
more » ... Pearson Type-V/VI, log-logistic, etc., where the unknown model parameters are routinely estimated using the maximum likelihood estimator (MLE). However, the presence of outliers or extreme observations is a common issue in rainfall data and the MLEs being highly sensitive to them often leads to spurious inference. Here, we discuss a robust parameter estimation approach based on the minimum density power divergence estimator (MDPDE). We fit the above four parametric models to the areally-weighted monthly rainfall data from the 36 meteorological subdivisions of India for the years 1951-2014 and compare the fits based on MLE and the proposed optimum MDPDE; the superior performance of MDPDE is showcased for several cases. For all month-subdivision combinations, we discuss the best-fit models and the estimated median rainfall amounts.
arXiv:1909.08035v3 fatcat:tva5e3syoffufiyf4ywhqjxuwu