Submitted:
31 January 2026
Posted:
03 February 2026
You are already at the latest version
Abstract
Keywords:
MSC: 93C10; 93C40; 37N35
1. Introduction
- (i)
- Relative to the control schemes presented in [31,32], this work investigates a predefined-time adaptive fuzzy control problem for high-order nonstrict-feedback nonlinear systems in the presence of unmodeled dynamics and input time delays. In contrast to finite-time and fixed-time control approaches reported in [33,34,35,36], the proposed method guarantees system stabilization within a designer-assigned time horizon. Specifically, the convergence duration is directly governed by a tunable design parameter, enabling its explicit selection prior to controller implementation to satisfy desired performance specifications. To enhance practical feasibility, a Padé approximation technique is employed to address the adverse effects of input delays. This delay-compensation mechanism ensures that the closed-loop system retains stability and satisfactory tracking performance even when control actions are subject to delays. Consequently, the developed control framework is applicable to a wide range of high-order nonlinear systems where input delay effects are unavoidable.
- (ii)
- A dynamic control signal based on the predefined-time control principle is designed to address the effects of unmodeled dynamics, including unknown high-order system behaviors and actuator nonlinearities. The control law ensures that the closed-loop system achieves practical predefined-time stability, meaning that system states converge to a small neighborhood around the origin within the specified time. By selecting appropriate control parameters, the tracking performance can be effectively improved, and the impact of modeling uncertainties, external disturbances, and unmodeled dynamics can be minimized. This provides both theoretical assurance and practical feasibility for high-precision control of complex nonlinear systems.
2. Problem Formulation and Preliminaries
3. Controller Design and Stability Analysis
4. Simulation Results
5. Conclusions
Author Contributions
Data Availability Statement
Conflicts of Interest
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