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  4. A hybrid fuzzy-molecular controller enhanced with evolutionary algorithms: A case study in a one-leg mechanism
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A hybrid fuzzy-molecular controller enhanced with evolutionary algorithms: A case study in a one-leg mechanism

Journal
Journal of the Franklin Institute
ISSN
0016-0032
Date Issued
2019
Author(s)
Esparza-Duran, Noel
Type
Resource Types::text::journal::journal article
DOI
10.1016/j.jfranklin.2019.09.001
URL
https://scripta.up.edu.mx/handle/20.500.12552/4132
Abstract
Intelligent control systems are able to work well in uncertain nonlinear systems, mainly for: changes in the operating point, presence of environmental noise and disturbances, uncertainty in sensor measurements, miscalibration, uncertain model plant, and others. For instance, fuzzy controllers have been widely studied and applied. Recently, artificial organic controllers (AOC) have been proposed as an ensemble of fuzzy logic and artificial hydrocarbon networks. However, a weakness in AOC is the lack of training methods for tuning parameters for desired output responses in control. In this regard, this paper aims to introduce an evolutionary optimization method, i.e. particle swarm optimization, for tuning artificial organic controllers. Three objectives are proposed for automatic tuning of AOC: overall error, steady-state error and settling time of output response. The proposed methodology is implemented in the well-known cart-pole system. Also, the proposed method is applied on a one-leg unstable mechanism as case study. Results validate that automatic tuning of AOC over simulation systems can achieve suitable output responses with minimal overall error, steady-state error and settling time. © 2019 The Franklin Institute. Journal of the Franklin Institute, Elsevier Ltd.
Subjects

Errors

Fuzzy logic

Particle swarm optimi...

Uncertainty analysis

Environmental noise

Evolutionary optimiza...

Fuzzy controllers

Sensor measurements

Simulation systems

Steady state errors

Uncertain modeling

Uncertain nonlinear s...

How to cite
Ponce Espinosa, H. E., Acevedo Alvarado, M. y Esparza-Duran N. (2019). A hybrid fuzzy-molecular controller enhanced with evolutionary algorithms : a case study in a one-leg mechanism. Journal of the Franklin Institute, 356 (16), 9432-9450. DOI: 10.1016/j.jfranklin.2019.09.001

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