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A novel fractional order fuzzy PID controller and its optimal time domain tuning based on integral performance indices

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TLDR
A novel fractional order fuzzy Proportional-Integral-Derivative (PID) controller is proposed in this paper which works on the closed loop error and its fractional derivative as the input and has a fractional integrator in its output.
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This article is published in Engineering Applications of Artificial Intelligence.The article was published on 2012-03-01 and is currently open access. It has received 221 citations till now. The article focuses on the topics: PID controller & Open-loop controller.

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Citations
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Journal ArticleDOI

Adaptive-Fuzzy Fractional Order PID Controller-Based Active Suspension for Vibration Control

TL;DR: The active suspension system has become an integral part of a passenger vehicle as ride comfort is now an essential parameter in the performance of a vehicle.
Journal ArticleDOI

Adaptive differential evolution tuned hybrid fuzzy PD-PI controller for automatic generation control of power systems

TL;DR: In this paper, an adaptive differential evolution tuned hybrid Fuzzy Proportional Derivative-Proportional Integral structure is suggested for automatic generation control (AGC) of power syst...
Journal ArticleDOI

A simple approach to mathematical modelling of integer order and fractional order fuzzy PID controllers using one-dimensional input space and their experimental realization

TL;DR: A simple approach where each of the fuzzy P, fuzzy I, and fuzzy D components is modelled using one-dimensional input space and merged to provide the complete PID action to understand the usefulness of the proposed control schemes.
Proceedings ArticleDOI

Tuning fuzzy fractional order PID sliding-mode controller using PSO algorithm for nonlinear systems

TL;DR: A Takagi-Sugeno fuzzy logic controller is used to replace the discontinuity in the signum function, and to ensure optimal performance in the closed loop system, the PSO algorithm is used.
Journal ArticleDOI

Event-Based Implementation of Fractional Order IMC Controllers for Simple FOPDT Processes

TL;DR: Numerical results show that the proposed event-based implementation for the FO-IMC controller is suitable and provides for a smaller computational effort, thus being more suitable in various industrial applications.
References
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Journal ArticleDOI

Fractional-order systems and PI/sup /spl lambda//D/sup /spl mu//-controllers

TL;DR: In this article, a fractional-order PI/sup/spl lambda/D/sup /spl mu/controller with fractionalorder integrator and fractional order differentiator is proposed.
Book

An Introduction to Fuzzy Control

TL;DR: Fuzzy controllers are a class of knowledge based controllers using artificial intelligence techniques with origins in fuzzy logic that can be found either as stand-alone control elements or as int ...
Book

Handbook of PI and PID controller tuning rules

Aidan O'Dwyer
TL;DR: In this paper, the authors present Controller Architecture Tuning Rules for PI Controllers Tuning rules for PID Controllers Performance and Robustness Issues Glossary of Symbols Used in the Book Some Further Details on Process Modeling
Journal ArticleDOI

Frequency-band complex noninteger differentiator: characterization and synthesis

TL;DR: In this article, the state-of-the-art on generalized (or any order) derivatives in physics and engineering sciences is outlined for justifying the interest of the noninteger differentiation.
Journal ArticleDOI

Tuning and auto-tuning of fractional order controllers for industry applications

TL;DR: In this article, a method for tuning the PI λ D μ controller is proposed to fulfill five different design specifications, including gain crossover frequency, phase margin, and iso-damping property of the system.
Related Papers (5)
Frequently Asked Questions (13)
Q1. What contributions have the authors mentioned in the paper "A novel fractional order fuzzy pid controller and its optimal time domain tuning based on integral performance indices" ?

A novel fractional order ( FO ) fuzzy Proportional-Integral-Derivative ( PID ) controller has been proposed in this paper which works on the closed loop error and its fractional derivative as the input and has a fractional integrator in its output. 

More stringent multi-objective optimization criteria may be imposed on the controller tuning algorithm to achieve effective results under different circumstances as a scope of future work. 

Restricting the input scaling factors to unity is to ensure that the fuzzy inference is always between the designed universe of discourse. 

Each solution vector in the present population undergoes reproduction, crossover and mutation stochastically, in each generation, to produce a better population of solution vectors (in terms of fitness values) in the next generation. 

Thus time domain tuning is the preferred method for the tuning of such controllers which works well for a wide variety of processes. 

30 independent runs (with different seeds for random number generation) were carried out to show the consistency of the GA based controller tuning algorithm. 

Pan & Du [15] tuned a PI Dλ μ controller by minimizing the ITAE criteria using multi-parent crossover evolutionary algorithm. 

Also for fuzzy enhanced PID controllers it is well known [4] that change in output scaling factor for example has more effect on the controller performance than changes in the membership functions or fuzzification-inferencing-defuzzification mechanism. 

The proposed family of time domain integral performance indices based tuning technique is especially needed for processes, governed by highly nonlinear differential equations and not mere linear systems with actuator nonlinearities, commonly encountered in process controls. 

Various time domain integral performance indices like ITAE, ITSE, ISTES and ISTSE are considered in the problem similar to that in [43]. 

The number of fittest individuals (solution vectors) that will definitely be self replicated to the next generation is denoted in the algorithm by a parameter called the elite count. 

Hence different levels of positive control signal isrequired for different combinations of and e d e dtμμ , to reverse the course of the processoutput and make it tend towards the set point. 

The structure of the fuzzy PID used here is inherited from a combination of fuzzy PI and fuzzy PD controllers [4] with and as the input SFs and eK dK α and β as output SFs as described by Woo, Chung & Lin [6] and Yesil, Guzelkaya & Eksin [37].