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A Machine Learning Modeling Framework for Predictive Maintenance Based on Equipment Load Cycle: An Application in a Real World Case

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  • Arnaldo Rabello de Aguiar Vallim Filho

    (Graduate Program in Applied Computing and Graduate Program in Controllership and Corporate Finance, Mackenzie Presbyterian University, Rua da Consolacao, 896, Sao Paulo 01302-907, Brazil)

  • Daniel Farina Moraes

    (Computer Science Department, Mackenzie Presbyterian University, Rua da Consolacao, 896, Sao Paulo 01302-907, Brazil)

  • Marco Vinicius Bhering de Aguiar Vallim

    (Graduate Program in Electrical Engineering and Computing, Mackenzie Presbyterian University, Rua da Consolacao, 896, Sao Paulo 01302-907, Brazil)

  • Leilton Santos da Silva

    (EMAE—Metropolitan Company of Water & Energy, Avenida Nossa Senhora do Sabara, 5312, Sao Paulo 04447-902, Brazil)

  • Leandro Augusto da Silva

    (Graduate Program in Applied Computing and Graduate Program in Electrical Engineering and Computing, Mackenzie Presbyterian University, Rua da Consolação, 896, Sao Paulo 01302-907, Brazil)

Abstract

From a practical point of view, a turbine load cycle (TLC) is defined as the time a turbine in a power plant remains in operation. TLC is used by many electric power plants as a stop indicator for turbine maintenance. In traditional operations, a maximum time for the operation of a turbine is usually estimated and, based on the TLC, the remaining operating time until the equipment is subjected to new maintenance is determined. Today, however, a better process is possible, as there are many turbines with sensors that carry out the telemetry of the operation, and machine learning (ML) models can use this data to support decision making, predicting the optimal time for equipment to stop, from the actual need for maintenance. This is predictive maintenance, and it is widely used in Industry 4.0 contexts. However, knowing which data must be collected by the sensors (the variables), and their impact on the training of an ML algorithm, is a challenge to be explored on a case-by-case basis. In this work, we propose a framework for mapping sensors related to a turbine in a hydroelectric power plant and the selection of variables involved in the load cycle to: (i) investigate whether the data allow identification of the future moment of maintenance, which is done by exploring and comparing four ML algorithms; (ii) discover which are the most important variables (MIV) for each algorithm in predicting the need for maintenance in a given time horizon; (iii) combine the MIV of each algorithm through weighting criteria, identifying the most relevant variables of the studied data set; (iv) develop a methodology to label the data in such a way that the problem of forecasting a future need for maintenance becomes a problem of binary classification (need for maintenance: yes or no) in a time horizon. The resulting framework was applied to a real problem, and the results obtained pointed to rates of maintenance identification with very high accuracies, in the order of 98%.

Suggested Citation

  • Arnaldo Rabello de Aguiar Vallim Filho & Daniel Farina Moraes & Marco Vinicius Bhering de Aguiar Vallim & Leilton Santos da Silva & Leandro Augusto da Silva, 2022. "A Machine Learning Modeling Framework for Predictive Maintenance Based on Equipment Load Cycle: An Application in a Real World Case," Energies, MDPI, vol. 15(10), pages 1-41, May.
  • Handle: RePEc:gam:jeners:v:15:y:2022:i:10:p:3724-:d:818987
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    References listed on IDEAS

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    1. Ruiqi Tian & Santiago Gomez-Rosero & Miriam A. M. Capretz, 2023. "Health Prognostics Classification with Autoencoders for Predictive Maintenance of HVAC Systems," Energies, MDPI, vol. 16(20), pages 1-21, October.

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