We present a Newton-based extremum seeking
algorithm for maximizing higher derivatives of unknown maps
in the presence of time delays. Different from previous works
about extremum seeking for higher derivatives, arbitrarily long
input-output delays are allowed. We incorporate a predictor
feedback with a perturbation-based estimate for the Hessian’s
inverse using a differential Riccati equation. As a bonus,
the convergence rate of the real-time optimizer can be made
user-assignable, rather than being dependent on the unknown
Hessian of the higher-derivative map. Furthermore, exponential
stability and convergence to a small neighborhood of the
unknown extremum point can be obtained for locally quadratic
derivatives by using backstepping transformation and averaging
theory in infinite dimensions. We also give a numerical example
in order to highlight the effectiveness of the proposed predictorbased
extremum seeking for time-delay compensation.
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We present a Newton-based extremum seeking
algorithm for maximizing higher derivatives of unknown maps
in the presence of time delays. Different from previous works
about extremum seeking for higher derivatives, arbitrarily long
input-output delays are allowed. We incorporate a predictor
feedback with a perturbation-based estimate for the Hessian’s
inverse using a differential Riccati equation. As a bonus,
the convergence rate of the real-time optimizer can be made
user-assignable, rathe...
»