SYLGMar 21, 2021

Sliding Mode Learning Control of Uncertain Nonlinear Systems with Lyapunov Stability Analysis

arXiv:2103.11274v12 citations
Originality Incremental advance
AI Analysis

This addresses control problems for uncertain nonlinear systems, representing an incremental improvement over existing sliding mode learning methods.

The paper tackles control of uncertain nonlinear systems by proposing a novel sliding mode learning control structure with a new sliding surface, proving stability for nth-order systems and demonstrating through simulations that it can learn system behavior without mathematical models and achieve robust performance against disturbances.

This paper addresses to Sliding Mode Learning Control (SMLC) of uncertain nonlinear systems with Lyapunov stability analysis. In the control scheme, a conventional control term is used to provide the system stability in compact space while a Type-2 Neuro-Fuzzy Controller (T2NFC) learns system behavior so that the T2NFC takes the overall control of the system completely in a very short time period. The stability of the sliding mode learning algorithm was proven in literature; however, it is so restrictive for systems without the overall system stability. To address this shortcoming, a novel control structure with a novel sliding surface is proposed in this paper and the stability of the overall system is proven for nth-order uncertain nonlinear systems. To investigate the capability and effectiveness of the proposed learning and control algorithms, the simulation studies have been achieved under noisy conditions. The simulation results confirm that the developed SMLC algorithm can learn the system behavior in the absence of any mathematical model knowledge and exhibit robust control performance against external disturbances.

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