This paper studies global robust output regulation of second-order nonlinear systems with input disturbances that encompass the fully-actuated Euler-Lagrange systems. We assume the availability of relative output (w.r.t. a family of reference signals) and output derivative measurements. Based on a specific separation principle and self learning mechanism, we develop an internal model-based controller that does not require apriori knowledge of reference and disturbance signals and it only assumes that the kernels of these signals are a family of exosystems with unknown parameters (e.g., amplitudes, frequencies or time periods). The proposed control framework has a self-learning mechanism that extricates itself from requiring absolute positio...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This paper proposes a nonparametric learning solution framework for a generic internal model design ...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This paper proposes a nonparametric learning solution framework for a generic internal model design ...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This paper studies global robust output regulation of second-order nonlinear systems with input dist...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This paper considers robust output regulation of uncertain Euler-Lagrange (EL) systems by error (or ...
This thesis focuses on robust output regulation for autonomous robots. The control objective of outp...
This paper proposes a nonparametric learning solution framework for a generic internal model design ...