An adaptive control system (ACS) uses direct output feedback to control a
plant. The ACS uses direct adaptive output feedback control developed for
highly uncertain nonlinear systems, that does not rely on state
estimation. The approach is also applicable to systems of unknown, but
bounded dimension, whose output has known, but otherwise arbitrary
relative degree. This includes systems with both parameter uncertainty
and unmodeled dynamics. The result is achieved by extending the universal
function approximation property of linearly parameterized neural networks
to model unknown system dynamics from input/output data. The network
weight adaptation rule is derived from Lyapunov stability analysis, and
guarantees that the adapted weight errors and the tracking error are
bounded.