This research developed models, based on machine learning (MA), for forecasting 16 hours and 4 hours of occurrence of a convective meteorological event (CME), 4 hours for forecasting severity and evaluating the applicability of the optimal models of 12 UTC using thermodynamic instability indices (TII) data extracted from the WRF model with two different types of parameterization con guration in an attempt to develop a30-hour CME forecast model. In the training and testing of the MA algorithms, the classic TIIs (input) were used, obtained from the atmospheric pro les of the Brasilia upper air sounding and atmospheric discharges (output) detected in the study area for the characterization of CME, considering the period from 2012 to 2017. The optimal models applied to the modeled TIIs were evaluated through statistical metrics with con guration II obtaining signi cant results. For CME detection, the results showed that the best models obtained POD, 1-FAR, F-MEASURE and KAPPA with values respectively greater than 0.90, 0.80, 0.90, 0.80 and BIAS ranging from 0 .89 and 1.12. For the detection of event severity, the model presented the following statistical values (in parentheses): POD (0.82), 1-FAR (0.78), F-MEASURE (0.82), KAPPA (0.59 ) and BIAS (0.97). The results of 16-h and 4-h CME prediction hindcasts (30 days) with developed models demonstrated acceptable performance in identifying the occurrence or non-occurrence of CME and its severity for the study area.