Global optimization in electrical engineering using stochastic methods requ
ires usually a large amount of CPU time to locate the optimum, if the objec
tive function is calculated either with the finite element method (FEM) or
the boundary element method (BEM). One approach to reduce the number of FEM
or BEM calls using neural networks and another one using multiquadric func
tions have been introduced recently. This paper compares the efficiency of
both methods, which are applied to a couple of test problems and the result
s are discussed.