A globally convergent adaptive pole placement algorithm without a persistency of excitation requirement

This paper presents an indirect adaptive control scheme for deterministic plants which are not necessarily minimum phase. Global convergence is established for the scheme in the sense that the closed loop poles are asymptotically assigned and the system input and output remain bounded for all time. A key feature of the scheme is that no persistency of excitation condition is required. The algorithm has been designed with time-varying problems in mind and uses recursive least squares with variable forgetting factor, normalized regression vectors, and a matrix gain with constant trace.