Machine Training of the System of Functional Diagnostics of the Shaft Lifting Machine

The aim of the work is to increase the accuracy of functional diagnostics of a mine hoist by us-ing the method of information-extreme machine teaching with a hierarchical data structure. The tasks set forth in the work were to develop a categorical model; to carry out synthesis based on its hierarch...

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Main Authors: Dovbysh A. S., Zimovets V. I., Zuban Y. A., Prikhodchenko A. S.
Format: Article
Language:English
Published: Academy of Sciences of Moldova 2019-08-01
Series:Problems of the Regional Energetics
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Online Access:http://journal.ie.asm.md/assets/files/08_02_43_2019.pdf
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author Dovbysh A. S.
Zimovets V. I.
Zuban Y. A.
Prikhodchenko A. S.
author_facet Dovbysh A. S.
Zimovets V. I.
Zuban Y. A.
Prikhodchenko A. S.
author_sort Dovbysh A. S.
collection DOAJ
description The aim of the work is to increase the accuracy of functional diagnostics of a mine hoist by us-ing the method of information-extreme machine teaching with a hierarchical data structure. The tasks set forth in the work were to develop a categorical model; to carry out synthesis based on its hierarchical machine teaching algorithm for a functional diagnosis system; and to optimize the system of acceptance tolerance. Functional diagnostics necessitates the analysis of a large number of diagnostic features and recognition classes that characterize not only possible mal-functions, but also intermediate technical conditions of nodes and assemblies of a complex ma-chine. The proposed algorithm is developed in the framework of the so-called information-extreme intellectual data analysis technology based on maximizing the information ability of the system in the process of machine teaching. The main idea of the proposed method is to adapt the input mathematical description of the functional diagnostics system to the maximum reliability of diagnostic solutions in the process of machine teaching. The implementation of the pro-posed method of the information-extremal machine teaching is carried out by the example of functional diagnostics of a multi-rope mine hoist. The most significant result is the increase in the reliability of diagnostic solutions when using the hierarchical machine teaching algorithm of the functional diagnostics system as compared with the linear classifier. In addition, the crucial rules based on the optimal geometrical parameters of hyperspherical containers of recognition classes make it possible to take highly reliable diagnostic decisions in real time.
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institution Kabale University
issn 1857-0070
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publisher Academy of Sciences of Moldova
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series Problems of the Regional Energetics
spelling doaj-art-4cbd60d8de0e4561a92cb66aa02490d42025-08-20T03:58:23ZengAcademy of Sciences of MoldovaProblems of the Regional Energetics1857-00702019-08-014328810210.5281/zenodo.3367060Machine Training of the System of Functional Diagnostics of the Shaft Lifting MachineDovbysh A. S.0Zimovets V. I.1Zuban Y. A.2Prikhodchenko A. S.3Sumy State University Sumy, UkraineSumy State University Sumy, UkraineSumy State University Sumy, UkraineSumy State University Sumy, UkraineThe aim of the work is to increase the accuracy of functional diagnostics of a mine hoist by us-ing the method of information-extreme machine teaching with a hierarchical data structure. The tasks set forth in the work were to develop a categorical model; to carry out synthesis based on its hierarchical machine teaching algorithm for a functional diagnosis system; and to optimize the system of acceptance tolerance. Functional diagnostics necessitates the analysis of a large number of diagnostic features and recognition classes that characterize not only possible mal-functions, but also intermediate technical conditions of nodes and assemblies of a complex ma-chine. The proposed algorithm is developed in the framework of the so-called information-extreme intellectual data analysis technology based on maximizing the information ability of the system in the process of machine teaching. The main idea of the proposed method is to adapt the input mathematical description of the functional diagnostics system to the maximum reliability of diagnostic solutions in the process of machine teaching. The implementation of the pro-posed method of the information-extremal machine teaching is carried out by the example of functional diagnostics of a multi-rope mine hoist. The most significant result is the increase in the reliability of diagnostic solutions when using the hierarchical machine teaching algorithm of the functional diagnostics system as compared with the linear classifier. In addition, the crucial rules based on the optimal geometrical parameters of hyperspherical containers of recognition classes make it possible to take highly reliable diagnostic decisions in real time.http://journal.ie.asm.md/assets/files/08_02_43_2019.pdfinformation-extreme intellectual technologyamachine learning
spellingShingle Dovbysh A. S.
Zimovets V. I.
Zuban Y. A.
Prikhodchenko A. S.
Machine Training of the System of Functional Diagnostics of the Shaft Lifting Machine
Problems of the Regional Energetics
information-extreme intellectual technology
a
machine learning
title Machine Training of the System of Functional Diagnostics of the Shaft Lifting Machine
title_full Machine Training of the System of Functional Diagnostics of the Shaft Lifting Machine
title_fullStr Machine Training of the System of Functional Diagnostics of the Shaft Lifting Machine
title_full_unstemmed Machine Training of the System of Functional Diagnostics of the Shaft Lifting Machine
title_short Machine Training of the System of Functional Diagnostics of the Shaft Lifting Machine
title_sort machine training of the system of functional diagnostics of the shaft lifting machine
topic information-extreme intellectual technology
a
machine learning
url http://journal.ie.asm.md/assets/files/08_02_43_2019.pdf
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AT zimovetsvi machinetrainingofthesystemoffunctionaldiagnosticsoftheshaftliftingmachine
AT zubanya machinetrainingofthesystemoffunctionaldiagnosticsoftheshaftliftingmachine
AT prikhodchenkoas machinetrainingofthesystemoffunctionaldiagnosticsoftheshaftliftingmachine