Adaptive state observer for linear time-varying system with partially unknown parameters of the state matrix and the input vector
Alexey Bobtsov, Nikolay Nikolaev, Romeo Ortega, Olga Slita, Olga, Kozachek

TL;DR
This paper presents an adaptive observer design for linear time-varying systems with unknown parameters in both the state and control matrices, utilizing the GPEBO method and least squares estimation, demonstrated through a second-order system example.
Contribution
It introduces a novel adaptive observer synthesis method that handles unknown parameters in both the state and control matrices of a time-varying system, extending previous approaches.
Findings
Successfully estimated unknown parameters in a second-order system
Demonstrated effectiveness with frequency-poor regressors
Validated approach through computer simulation results
Abstract
The article deals with the problem of synthesis of an adaptive observer of state variables of a linear time-varying SISO dynamic system. It is assumed that the control signal and the output variable are measurable. It is assumed that the state matrix of the plant contains known variables and unknown constant parameters, and the control matrix (vector) is unknown. The synthesis of the observer is based on the GPEBO method (generalized parameter based observer) proposed in . Synthesis of adaptive provides for preliminary parametrization of the initial system and its transformation to a linear regression model with further identification of unknown parameters. To identify unknown constant parameters a classical estimation algorithm was used (the least squares method with a forgetting factor). This approach has proven itself well in cases where the known regressor is frequency poor…
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Taxonomy
TopicsControl Systems and Identification · Advanced Control and Stabilization in Aerospace Systems · Cybersecurity and Information Systems
