IMPLEMENTING OF MICROSOFT AZURE MACHINE LEARNING TECHNOLOGY FOR ELECTRIC MACHINES OPTIMIZATION

Purpose. To consider problems of electric machines optimization within a wide range of many variables variation as well as the presence of many calculation constraints in a single-criteria optimization search tasks. Results. A structural model for optimizing electric machines of arbitrary type using...

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Main Authors: V. E. Pliugin, M. Sukhonos, M. Pan, A. N. Petrenko, N. Ya. Petrenko
Format: Article
Language:English
Published: National Technical University "Kharkiv Polytechnic Institute" 2019-02-01
Series:Електротехніка і електромеханіка
Subjects:
Online Access:http://eie.khpi.edu.ua/article/view/2074-272X.2019.1.04/156168
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spelling doaj-557f0fc1289e4d028d8741ca011029732021-07-02T04:07:46ZengNational Technical University "Kharkiv Polytechnic Institute"Електротехніка і електромеханіка2074-272X2309-34042019-02-011232810.20998/2074-272X.2019.1.04IMPLEMENTING OF MICROSOFT AZURE MACHINE LEARNING TECHNOLOGY FOR ELECTRIC MACHINES OPTIMIZATIONV. E. Pliugin0M. Sukhonos1M. Pan2A. N. Petrenko3N. Ya. Petrenko4O.M. Beketov National University of Urban Economy in Kharkiv O.M. Beketov National University of Urban Economy in Kharkiv O.M. Beketov National University of Urban Economy in Kharkiv O.M. Beketov National University of Urban Economy in Kharkiv National Technical University «Kharkiv Polytechnic Institute» Purpose. To consider problems of electric machines optimization within a wide range of many variables variation as well as the presence of many calculation constraints in a single-criteria optimization search tasks. Results. A structural model for optimizing electric machines of arbitrary type using Microsoft Azure machine learning technology has been developed. The obtained results, using several optimization methods from the Microsoft Azure database are demonstrated. The advantages of cloud computing and optimization based on remote servers are shown. The results of statistical analysis of the results are given. Originality. Microsoft Azure machine learning technology was used for electrical machines optimization for the first time. Recommendations for modifying standard algorithms, offered by Microsoft Azure are given. Practical value. Significant time reduction and resources spent on the optimization of electrical machines in a wide range of variable variables. Reducing the time to develop optimization algorithms. The possibility of automatic statistical analysis of the results after performing optimization calculations. http://eie.khpi.edu.ua/article/view/2074-272X.2019.1.04/156168electrical machinesoptimizationalgorithmdata setmachine learningMicrosoft Azurecloud computing
collection DOAJ
language English
format Article
sources DOAJ
author V. E. Pliugin
M. Sukhonos
M. Pan
A. N. Petrenko
N. Ya. Petrenko
spellingShingle V. E. Pliugin
M. Sukhonos
M. Pan
A. N. Petrenko
N. Ya. Petrenko
IMPLEMENTING OF MICROSOFT AZURE MACHINE LEARNING TECHNOLOGY FOR ELECTRIC MACHINES OPTIMIZATION
Електротехніка і електромеханіка
electrical machines
optimization
algorithm
data set
machine learning
Microsoft Azure
cloud computing
author_facet V. E. Pliugin
M. Sukhonos
M. Pan
A. N. Petrenko
N. Ya. Petrenko
author_sort V. E. Pliugin
title IMPLEMENTING OF MICROSOFT AZURE MACHINE LEARNING TECHNOLOGY FOR ELECTRIC MACHINES OPTIMIZATION
title_short IMPLEMENTING OF MICROSOFT AZURE MACHINE LEARNING TECHNOLOGY FOR ELECTRIC MACHINES OPTIMIZATION
title_full IMPLEMENTING OF MICROSOFT AZURE MACHINE LEARNING TECHNOLOGY FOR ELECTRIC MACHINES OPTIMIZATION
title_fullStr IMPLEMENTING OF MICROSOFT AZURE MACHINE LEARNING TECHNOLOGY FOR ELECTRIC MACHINES OPTIMIZATION
title_full_unstemmed IMPLEMENTING OF MICROSOFT AZURE MACHINE LEARNING TECHNOLOGY FOR ELECTRIC MACHINES OPTIMIZATION
title_sort implementing of microsoft azure machine learning technology for electric machines optimization
publisher National Technical University "Kharkiv Polytechnic Institute"
series Електротехніка і електромеханіка
issn 2074-272X
2309-3404
publishDate 2019-02-01
description Purpose. To consider problems of electric machines optimization within a wide range of many variables variation as well as the presence of many calculation constraints in a single-criteria optimization search tasks. Results. A structural model for optimizing electric machines of arbitrary type using Microsoft Azure machine learning technology has been developed. The obtained results, using several optimization methods from the Microsoft Azure database are demonstrated. The advantages of cloud computing and optimization based on remote servers are shown. The results of statistical analysis of the results are given. Originality. Microsoft Azure machine learning technology was used for electrical machines optimization for the first time. Recommendations for modifying standard algorithms, offered by Microsoft Azure are given. Practical value. Significant time reduction and resources spent on the optimization of electrical machines in a wide range of variable variables. Reducing the time to develop optimization algorithms. The possibility of automatic statistical analysis of the results after performing optimization calculations.
topic electrical machines
optimization
algorithm
data set
machine learning
Microsoft Azure
cloud computing
url http://eie.khpi.edu.ua/article/view/2074-272X.2019.1.04/156168
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