Author:
Shcherbatov I A,Turikov G N
Abstract
Abstract
An approach to forecasting of power equipment’s defects and failures is considered in this paper. The main operations of predictive analytic system for forecasting turbine’s regulation system’s defects is represented. Special attention on machine learning models tuning for explored forecast problem is paid. The following machine learning algorithms: Logistic Regression, Random Forest, Extreme Gradient Boosting, ensembles of these algorithms are explored. According to the results of optimal machine learning models determined, their comparison is done and the conclusion on the appropriateness of the use in predictive analytic system is made.
Subject
General Physics and Astronomy
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Cited by
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