The regulator equations arising from the nonlinear output regulation proble
m are a set of mixed partial and algebraic equations. Due to the nonlinear
nature, it is difficult to obtain the exact solution of the regulator equat
ions. This paper presents an approximation method for solving the regulator
equations based on a class of feedforward neural networks. It is shown tha
t a three-layer neural network can solve the regulator equations up to a pr
escribed arbitrarily small error, and this small error can be translated in
to a guaranteed steady-state tracking error for the closed-loop system. The
method has led to an effective approach to approximately solving the nonli
near output regulation problem. Copyright (C) 2000 John Wiley & Sons, Ltd.