This document discusses the classification of misalignment in induction motors using various wavelet transforms and quadratic discriminant analysis. The research emphasizes the importance of preventive maintenance on induction motors, particularly due to the high incidence of bearing damage caused by misalignment. Results indicate that the first level of Daubechies wavelet combined with quadratic discriminant analysis achieves the best classification accuracy, with an error rate of 0% for certain wavelet functions.