We present an application of arti cial neural networks to machine condition monitoring. Since several signal preprocessing methods produce high dimensional feature vectors there is a need for optimizing the structure of the neural network. We examine three methods for nding the structure and compare the resulting networks: fully connected networks, pruning techniques and Structure Evolution and Incomplete Induction".