Mueller, Klaus C.2022-11-092022-11-091994http://hdl.handle.net/10919/112536Much research in recent years has been done in applying artificial neural networks to the problem of nonlinear system identification. The most common neural network architecture, the multilayer feed-forward network, trained with the backpropagation algorithm, has been shown to be capable of universal function approximation which makes it applicable to a much wider range of problems than other nonlinear identification techniques. While these neural networks show great potential, they still suffer several drawbacks, such as slow convergence toward a solution. New neural network architectures have been proposed in an attempt to overcome these limitations. This study examines one such architecture, Cascade-Correlation, and its usefulness in system identification applications, particularly the nonlinear case.vi, 114 leavesapplication/pdfenIn CopyrightLD5655.V855 1994.M845Neural networks (Computer science)Nonlinear theoriesSystem identificationApplication of cascade-correlation neural networks to nonlinear system identificationThesis