Electrical drives are usually modeled using circuit theory, with currents or linking fluxes chosen as state variables for its electrical part and rotor speed or position chosen for its mechanical part. Often, its internal structure contains nonlinear relations difficult to model as dead-time, hysteresis, and saturation effects. On the contrary, if the available model is accurate enough, its parameter values are generally difficult to obtain and/or be estimated in real time. Therefore, this paper investigates the use of fuzzy logic for automatic modeling electrical drive systems. An experimental system composed by a DC motor supplied from a DC-DC converter is used. We underline the unsupervised learning characteristics of the fuzzy algorithm, its memory and generalization capabilities. Some learning situations with critical effects in model performance are presented and discussed, pointing out some results and conclusions concerning the fuzzy modeling process in practice.