Learning control system of lifting machine motors

Process automation control by diagnostic electric motors in operation conditions allows to reduce to a minimum the damage from these consequences due to early detection of defects. The theory of diagnosticof lifting machine motors has not been completely developed yet. In practice, the control of te...

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Main Authors: V. I. Zimovets, A. S. Chirva, O. I. Marishchenko
Format: Article
Language:English
Published: Sumy State University 2016-12-01
Series:Журнал інженерних наук
Subjects:
Online Access:http://jes.sumdu.edu.ua/wp-content/uploads/2016/02/JES_2016_02_H_03.PDF
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author V. I. Zimovets
A. S. Chirva
O. I. Marishchenko
author_facet V. I. Zimovets
A. S. Chirva
O. I. Marishchenko
author_sort V. I. Zimovets
collection DOAJ
description Process automation control by diagnostic electric motors in operation conditions allows to reduce to a minimum the damage from these consequences due to early detection of defects. The theory of diagnosticof lifting machine motors has not been completely developed yet. In practice, the control of technical state of the motors is mainly performed during scheduled maintenance, which does not reveal to detect originating defects and to prevent significant damage of motors up to their complete failure. The difficulty of obtaining diagnostic information is that the main functional units of electric motors are dependent. This means that physical damage in any unit results in malfunctions of other units. The main way of increasing the efficiency of the automated control system of lifting machine motors is giving it the properties of adaptability on the basis of ideas and methods of machine learning and pattern recognition. To increase the operational reliability and service life of a mine electric lifting machines the article offers an information and machine learning algorithm for extreme functional control systems with electric hyprnspherical classifier. Normalized Shannon entropy measure was used as a criterion for functional efficiency of leaning systems of the functional control.
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series Журнал інженерних наук
spelling doaj-art-c99f5d6726e2430c839f267ad997b77a2025-08-20T01:51:21ZengSumy State UniversityЖурнал інженерних наук2312-24982414-93812016-12-0132H15H19Learning control system of lifting machine motorsV. I. Zimovets0A. S. Chirva1O. I. Marishchenko2Sumy State UniversitySumy State UniversityJSC “ULYS Systems”Process automation control by diagnostic electric motors in operation conditions allows to reduce to a minimum the damage from these consequences due to early detection of defects. The theory of diagnosticof lifting machine motors has not been completely developed yet. In practice, the control of technical state of the motors is mainly performed during scheduled maintenance, which does not reveal to detect originating defects and to prevent significant damage of motors up to their complete failure. The difficulty of obtaining diagnostic information is that the main functional units of electric motors are dependent. This means that physical damage in any unit results in malfunctions of other units. The main way of increasing the efficiency of the automated control system of lifting machine motors is giving it the properties of adaptability on the basis of ideas and methods of machine learning and pattern recognition. To increase the operational reliability and service life of a mine electric lifting machines the article offers an information and machine learning algorithm for extreme functional control systems with electric hyprnspherical classifier. Normalized Shannon entropy measure was used as a criterion for functional efficiency of leaning systems of the functional control.http://jes.sumdu.edu.ua/wp-content/uploads/2016/02/JES_2016_02_H_03.PDFinformation-extreme intellectual technologyfunctional controllearning matrixlearning algorithmfunctional efficiency criteriaelectric drivemine hoisting engine
spellingShingle V. I. Zimovets
A. S. Chirva
O. I. Marishchenko
Learning control system of lifting machine motors
Журнал інженерних наук
information-extreme intellectual technology
functional control
learning matrix
learning algorithm
functional efficiency criteria
electric drive
mine hoisting engine
title Learning control system of lifting machine motors
title_full Learning control system of lifting machine motors
title_fullStr Learning control system of lifting machine motors
title_full_unstemmed Learning control system of lifting machine motors
title_short Learning control system of lifting machine motors
title_sort learning control system of lifting machine motors
topic information-extreme intellectual technology
functional control
learning matrix
learning algorithm
functional efficiency criteria
electric drive
mine hoisting engine
url http://jes.sumdu.edu.ua/wp-content/uploads/2016/02/JES_2016_02_H_03.PDF
work_keys_str_mv AT vizimovets learningcontrolsystemofliftingmachinemotors
AT aschirva learningcontrolsystemofliftingmachinemotors
AT oimarishchenko learningcontrolsystemofliftingmachinemotors