We present an observer for parameter estimation in nonlinear oscillating systems (periodic, quasiperiodic or chaotic). The observer requires measurements of generalized displacements. It estimates generalized velocities on a fast time scale and unknown parameters on a slow time scale, with time scale separation specified by a small parameter $\epsilon$. Parameter estimates converge asymptotically like $e–^{-{\epsilon}t}$ where t is time, provided the data is such that a certain averaged coefficient matrix is positive definite. The method is robust: small model errors and noise cause small estimation errors. The effects of zero mean, high frequency noise can be reduced by faster sampling. Several numerical examples show the effectiveness of ...
The estimation of the unknown parameters of a nonlinear system is reduced to the estimation of its s...
We consider a dynamic method, based on synchronization and adaptive control, to estimate unknown par...
We consider the problem of asymptotic reconstruction of the state and parameter values in systems of...
We present an observer for parameter estimation in nonlinear oscillating systems (periodic, quasiper...
Parameter estimation in dynamic systems is studied, following exact and approximate procedures deriv...
In this paper we consider the problem of estimating the parameters of a nonlinear dynamical system g...
Transferring information from observations to models of complex systems may meet impediments when th...
International audienceWe study a class of continuous-time nonlinear systems with discrete measuremen...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
peer reviewedMotivated by neuroscience applications, we introduce the concept of qualitative estimat...
We consider the problem of asymptotic reconstruction of the state and parameter values in systems of...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Illustration of parameter estimation in chaotic Lorenz96 system using optimally-controlled dynamical...
The estimation of the unknown parameters of a nonlinear system is reduced to the estimation of its s...
We consider a dynamic method, based on synchronization and adaptive control, to estimate unknown par...
We consider the problem of asymptotic reconstruction of the state and parameter values in systems of...
We present an observer for parameter estimation in nonlinear oscillating systems (periodic, quasiper...
Parameter estimation in dynamic systems is studied, following exact and approximate procedures deriv...
In this paper we consider the problem of estimating the parameters of a nonlinear dynamical system g...
Transferring information from observations to models of complex systems may meet impediments when th...
International audienceWe study a class of continuous-time nonlinear systems with discrete measuremen...
Parameter estimation in nonlinear models is a common task, and one for which there is no general sol...
peer reviewedMotivated by neuroscience applications, we introduce the concept of qualitative estimat...
We consider the problem of asymptotic reconstruction of the state and parameter values in systems of...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Illustration of parameter estimation in chaotic Lorenz96 system using optimally-controlled dynamical...
The estimation of the unknown parameters of a nonlinear system is reduced to the estimation of its s...
We consider a dynamic method, based on synchronization and adaptive control, to estimate unknown par...
We consider the problem of asymptotic reconstruction of the state and parameter values in systems of...