Design of electrical and electronic systems with complex EMC constrains requires often to exploit the peculiarities of some population based global optimizers. One of the main drawbacks of the adoption of these optimizers for system design is represented by the difficulty of introducing in the algorithm all the heuristic knowledge already available in the field. In order to overcome this problem, Bayesian optimization algorithms (BOAs), classified as estimation of distribution algorithm, can be very effective since they are based on the definition of distributions of promising solutions using the information extracted from the entire set of good solutions. Unfortunately, their straightforward implementations usually lack of exploration feat...