Abstract

Stochastic distribution control (SDC) systems are a group of systems where the outputs considered is the measured probability density function (PDF) of the system output whilst subjected to a normal crisp input. The purpose of the active fault tolerant control of such systems is to use the fault estimation information and other measured information to make the output PDF still track the given distribution when the objective PDF is known. However, if the target PDF is unavailable, the PDF tracking operation will be impossible. Minimum entropy control of the system output can be considered as an alternative strategy. The mean represents the center location of the stochastic variable, and it is reasonable that the minimum entropy fault tolerant controller can be designed subjected to mean constraint. In this paper, using the rational square-root B-spline model for the shape control of the system output probability density function (PDF), a nonlinear adaptive observer based fault diagnosis algorithm is proposed to diagnose the fault. Through the controller reconfiguration, the system entropy subjected to mean restriction can still be minimized when fault occurs. An illustrative example is utilized to demonstrate the use of the minimum entropy fault tolerant control algorithms.

Highlights

  • Fault diagnosis (FD) and fault-tolerant control (FTC) has long been regarded as an important and integrated part in control systems

  • In order to improve the reliability of the control system, the research of fault diagnosis and fault-tolerant control for stochastic dynamic systems has been one of the liveliest research areas in control theory and practice [3]

  • A nonlinear adaptive observer-based fault diagnosis algorithm is proposed to diagnose the fault in the dynamic part of the non-Gaussian Stochastic distribution control (SDC) systems based on the rational square-root B-spline approximation model [9]

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Summary

Introduction

Fault diagnosis (FD) and fault-tolerant control (FTC) has long been regarded as an important and integrated part in control systems. A nonlinear adaptive observer-based fault diagnosis algorithm is proposed to diagnose the fault in the dynamic part of the non-Gaussian SDC systems based on the rational square-root B-spline approximation model [9]. The contribution of this paper is that the entropy concept is introduced to design of fault tolerant control for non-Gaussian stochastic distribution systems when the objective PDF can not be determined in advance.

Model Description
Fault Detection
Fault Diagnosis Algorithm
Fault Tolerant Control
Simulation Example
Concluding Remarks
Full Text
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