Sage Revised Reiterative Even Zernike Polynomials Neural Network Control with Modified Fish School Search Applied in SSCCRIM Impelled System

In light of fine learning ability in the existing uncertainties, a sage revised reiterative even Zernike polynomials neural network (SRREZPNN) control with modified fish school search (MFSS) method is proposed to control the six-phase squirrel cage copper rotor induction motor (SSCCRIM) impelled con...

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Main Author: Chih-Hong Lin
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Mathematics
Subjects:
Online Access:https://www.mdpi.com/2227-7390/8/10/1760
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spelling doaj-1db4715f414d41cc8cf592a2d76fca332020-11-25T03:56:52ZengMDPI AGMathematics2227-73902020-10-0181760176010.3390/math8101760Sage Revised Reiterative Even Zernike Polynomials Neural Network Control with Modified Fish School Search Applied in SSCCRIM Impelled SystemChih-Hong Lin0Department of Electrical Engineering, National United University, Miaoli 360, TaiwanIn light of fine learning ability in the existing uncertainties, a sage revised reiterative even Zernike polynomials neural network (SRREZPNN) control with modified fish school search (MFSS) method is proposed to control the six-phase squirrel cage copper rotor induction motor (SSCCRIM) impelled continuously variable transmission assembled system for obtaining the brilliant control performance. This control construction can carry out the SRREZPNN control with the cozy learning law, and the indemnified control with an assessed law. In accordance with the Lyapunov stability theorem, the cozy learning law in the revised reiterative even Zernike polynomials neural network (RREZPNN) control can be extracted, and the assessed law of the indemnified control can be elicited. Besides, the MFSS can find two optimal values to adjust two learning rates with raising convergence. In comparison, experimental results are compared to some control systems and are expressed to confirm that the proposed control system can realize fine control performance.https://www.mdpi.com/2227-7390/8/10/1760even Zernike polynomials neural networkfish school searchLyapunov stability theoremsix-phase squirrel cage copper rotor induction motor
collection DOAJ
language English
format Article
sources DOAJ
author Chih-Hong Lin
spellingShingle Chih-Hong Lin
Sage Revised Reiterative Even Zernike Polynomials Neural Network Control with Modified Fish School Search Applied in SSCCRIM Impelled System
Mathematics
even Zernike polynomials neural network
fish school search
Lyapunov stability theorem
six-phase squirrel cage copper rotor induction motor
author_facet Chih-Hong Lin
author_sort Chih-Hong Lin
title Sage Revised Reiterative Even Zernike Polynomials Neural Network Control with Modified Fish School Search Applied in SSCCRIM Impelled System
title_short Sage Revised Reiterative Even Zernike Polynomials Neural Network Control with Modified Fish School Search Applied in SSCCRIM Impelled System
title_full Sage Revised Reiterative Even Zernike Polynomials Neural Network Control with Modified Fish School Search Applied in SSCCRIM Impelled System
title_fullStr Sage Revised Reiterative Even Zernike Polynomials Neural Network Control with Modified Fish School Search Applied in SSCCRIM Impelled System
title_full_unstemmed Sage Revised Reiterative Even Zernike Polynomials Neural Network Control with Modified Fish School Search Applied in SSCCRIM Impelled System
title_sort sage revised reiterative even zernike polynomials neural network control with modified fish school search applied in ssccrim impelled system
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2020-10-01
description In light of fine learning ability in the existing uncertainties, a sage revised reiterative even Zernike polynomials neural network (SRREZPNN) control with modified fish school search (MFSS) method is proposed to control the six-phase squirrel cage copper rotor induction motor (SSCCRIM) impelled continuously variable transmission assembled system for obtaining the brilliant control performance. This control construction can carry out the SRREZPNN control with the cozy learning law, and the indemnified control with an assessed law. In accordance with the Lyapunov stability theorem, the cozy learning law in the revised reiterative even Zernike polynomials neural network (RREZPNN) control can be extracted, and the assessed law of the indemnified control can be elicited. Besides, the MFSS can find two optimal values to adjust two learning rates with raising convergence. In comparison, experimental results are compared to some control systems and are expressed to confirm that the proposed control system can realize fine control performance.
topic even Zernike polynomials neural network
fish school search
Lyapunov stability theorem
six-phase squirrel cage copper rotor induction motor
url https://www.mdpi.com/2227-7390/8/10/1760
work_keys_str_mv AT chihhonglin sagerevisedreiterativeevenzernikepolynomialsneuralnetworkcontrolwithmodifiedfishschoolsearchappliedinssccrimimpelledsystem
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