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JOURNALS // Vestnik of Astrakhan State Technical University. Series: Management, Computer Sciences and Informatics // Archive

Vestn. Astrakhan State Technical Univ. Ser. Management, Computer Sciences and Informatics, 2019 Number 3, Pages 25–33 (Mi vagtu585)

This article is cited in 2 papers

COMPUTER SOFTWARE AND COMPUTING EQUIPMENT

Using machine learning methods in power equipment repair programs

V. A. Borodina, O. M. Protalinskiyb, V. F. Shursheva

a Astrakhan State Technical University, Astrakhan, Russian Federation
b National Research University “Moscow Power Engineering Institute”, Moscow, Russian Federation

Abstract: The article discusses the process of planning the repair of energy equipment. Using a decision support system is proposed because of the large number of rules of comparing flow charts of technical defects. Such a system can speed up the planning process and reduce economic costs. A conceptual model of the system has been built; further it will be presented as a multi-label classification of cross-cutting classes. The “one-vs-all” approach has been used: each flow chart can use its individual classifier. Metrics are proposed for evaluating classifiers: a portion of accurately classified objects, precision, fullness and $F$-measure. To summarize the evaluation results the concept of micro-average was chosen. A defect classification algorithm has been described. An experiment was conducted using different classification algorithms: decision trees, Bayes classifier and multilayer perceptron. The results of the experiment proved that $80$$90\%$ of the correctly classified objects were found (high values), but the average values of accuracy and fullness occurred low ($3$$7\%$). There were found sets of data, where different output data corresponded to similar input data. Thus, machine learning can be used to support decision-making, but in some cases information about the order is not complete. Defect classification can be combined with manual clarifying of results or with different algorithms.

Keywords: decision support system, asset management system, flow charts, defects, equipment, repair program, classifier.

UDC: 004.8

Received: 31.05.2019

DOI: 10.24143/2072-9502-2019-3-25-33



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