http://lattes.cnpq.br/4555821496706121; SOUSA, Leandro Fontes de.
Abstract:
Stability indexes are numeric parameters obtained from upper-air reports in many operational
stations and are widely used as auxiliary tools in weather forecasts, given that they state the
relationship between atmospheric thermodynamics and precipitation. In this study, we analyze
a range of stability indexes at play in the region of Petrolina (9 24′S, 40 30′W), with a special
focus on January months, a pre-rainy season month that is locally determined by diverse
meteorological systems that shape the weather conditions in the area. Our data base is formed
by daily upper-air reports throughout the period of 15 January months, from 1999 to 2016,
alongside with precipitation data. Weather forecasting techniques are used as to assess local
thermodynamic conditions, by focusing on both the days prior to rain events and rain days
catalogued by Petrolina rain-gauge station. Yeo-Johnson transformation was applied to the
stability indexes, aiming at the normalization of data. The transformed indexes were then
analyzed with the aid of statistical tools, such as Quantis techniques and multivariate analysis,
as a way to evaluate whether such indexes are useful to determine conditions that precede
rainfall days. By means of the quantile orders of 20, 40, 60 and 80%, our results indicate that
both quantis analysis and multivariate analysis pave the way to a better understanding of such
indexes as sound indicators for the assessment of instability levels and the prediction of rain
occurrence in the Petrolina area. The perfomance analysis of stability indexes ranging from rain
days to days prior to rain events indicates that K and SWEAT indexes are the best stability
indicators. Yeo-Johnson transformation was efficient enough to approximate indexes
distribution to that of normal distribution and have shown that the transformed variable amplify
the instability indicator values of K, SWEAT and IC indexes. TMED* has satisfactorily
addressed the temporary effects of thermal inversion as a favorable condition to the rain
occurrence (by means of a disruption of the stable layer). The discriminant analysis of the
preliminary factor allowed us to conclude that the groups we have obtained from groupment
analysis have been efficiently discriminated and that SWEAT*, K* TNCL* and IC* were the
mot important indexes for the determination of standardized discriminant function.