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Fuzzy Finite-Time Tracking Control of Nonlinear Systems with Quantized States and Saturated Quantized Input | IEEE Conference Publication | IEEE Xplore

Fuzzy Finite-Time Tracking Control of Nonlinear Systems with Quantized States and Saturated Quantized Input


Abstract:

This paper investigates the issue of adaptive finite-time tracking for nonlinear systems with both quantized input and states. More specially, a saturated quantized input...Show More

Abstract:

This paper investigates the issue of adaptive finite-time tracking for nonlinear systems with both quantized input and states. More specially, a saturated quantized input is applied for the input quantization. By constructing a novel high-gain fuzzy state observer, the issues of unknown nonlinearities and discontinuous quantized signals are addressed. Then an adaptive backstepping controller involving the fuzzy logic systems is developed. It is verified that, with the designed control method, all signals of the closed-loop system are bounded, and the tracking error can be made small by choosing the design parameters suitably. Finally, a simulation example is studied to show the effectiveness of the control scheme.
Date of Conference: 28-31 July 2024
Date Added to IEEE Xplore: 17 September 2024
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Conference Location: Kunming, China

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1 Introduction

Quantized control has attracted growing attention due to its outstanding performance under communication resources constraints, and a number of typical control schemes have been reported, among which both linear and nonlinear systems that using robust approach and adaptive approach have been studied [1–9]. Specifically, by introducing a transformation to the quantized controller, without any limitations on nonlinear functions of the system, an adaptive state-feedback stabilization method was given in [10]. Later in [11], the adaptive state-feedback tracking case with saturated input quantization was investigated. In [12], the issue of decentralized control was investigated for interconnected nonlinear systems proceed by quantized input. Different from other quantized control strategies via output feedback, the quantized input signal was applied to design the state observer that makes the controller design easier. Recently, motivated by the excellent ability of tackling completely unknown nonlinearity, neural networks and fuzzy logic systems have been widely used in quantized feedback control systems. In [13], for pure-feedback systems with unmodeled dynamics and quantized input, an adaptive neural control strategy considering both state and output constraints was proposed. While in [14], the fuzzy adaptive fault-tolerant control problem was addressed for nonstrict-feedback systems proceed by quantized input.

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