OCLGSYNov 10, 2019

Parameter Estimation in Adaptive Control of Time-Varying Systems Under a Range of Excitation Conditions

arXiv:1911.03810v367 citations
Originality Incremental advance
AI Analysis

This addresses the problem of robust adaptive control for engineers dealing with time-varying systems, offering an incremental improvement by replacing filtering approaches with a bounded learning rate matrix.

The paper tackles parameter estimation in adaptive control of time-varying systems by introducing an algorithm with a time-varying learning rate matrix, which ensures exponential convergence of parameter errors to a compact set under excitation conditions and guarantees global boundedness of state and parameter errors.

This paper presents a new parameter estimation algorithm for the adaptive control of a class of time-varying plants. The main feature of this algorithm is a matrix of time-varying learning rates, which enables parameter estimation error trajectories to tend exponentially fast towards a compact set whenever excitation conditions are satisfied. This algorithm is employed in a large class of problems where unknown parameters are present and are time-varying. It is shown that this algorithm guarantees global boundedness of the state and parameter errors of the system, and avoids an often used filtering approach for constructing key regressor signals. In addition, intervals of time over which these errors tend exponentially fast toward a compact set are provided, both in the presence of finite and persistent excitation. A projection operator is used to ensure the boundedness of the learning rate matrix, as compared to a time-varying forgetting factor. Numerical simulations are provided to complement the theoretical analysis.

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