Litcius/Paper detail

Fixed-Time System Identification Using Concurrent Learning

Farzaneh Tatari, Majid Mazouchi, Hamidreza Modares

2021IEEE Transactions on Neural Networks and Learning Systems18 citationsDOI

Abstract

This article presents a fixed-time (FxT) system identifier for continuous-time nonlinear systems. A novel adaptive update law with discontinuous gradient flows of the identification errors is presented, which leverages concurrent learning (CL) to guarantee the learning of uncertain nonlinear dynamics in a fixed time, as opposed to asymptotic or exponential time. More specifically, the CL approach retrieves a batch of samples stored in a memory, and the update law simultaneously minimizes the identification error for the current stream of samples and past memory samples. Rigorous analyses are provided based on FxT Lyapunov stability to certify FxT convergence to the stable equilibria of the gradient descent flow of the system identification error under easy-to-verify rank conditions. The performance of the proposed method in comparison with the existing methods is illustrated in the simulation results.

Topics & Concepts

Convergence (economics)Identification (biology)Computer scienceIdentifierGradient descentNonlinear systemExponential stabilityLyapunov functionStability (learning theory)Rank (graph theory)System identificationAlgorithmMathematical optimizationControl theory (sociology)Overhead (engineering)MathematicsExponential functionSequence (biology)Stochastic gradient descentArtificial intelligenceData miningStochastic approximationLyapunov stabilityParameter identification problemFlow (mathematics)Machine learningKey (lock)Control Systems and IdentificationIterative Learning Control SystemsAdaptive Control of Nonlinear Systems