Improving Prescriptive Maintenance by Incorporating Post-Prognostic Information Through Chance Constraints

Carrasco, Rodrigo A.; Ruz, Gonzalo

Abstract

Maintenance is one of the critical areas in operations in which a careful balance between preventive costs and the effect of failures is required. Thanks to the increasing data availability, decision-makers can now use models to better estimate, evaluate, and achieve this balance. This work presents a maintenance scheduling model which considers prognostic information provided by a predictive system. In particular, we developed a prescriptive maintenance system based on run-to-failure signal segmentation and a Long Short Term Memory (LSTM) neural network. The LSTM network returns the prediction of the remaining useful life when a fault is present in a component. We incorporate such predictions and their inherent errors in a decision support system based on a stochastic optimization model, incorporating them via chance constraints. These constraints control the number of failed components and consider the physical distance between them to reduce sparsity and minimize the total maintenance cost. We show that this approach can compute solutions for relatively large instances in reasonable computational time through experimental results. Furthermore, the decision-maker can identify the correct operating point depending on the balance between costs and failure probability.

Más información

Título según WOS: Improving Prescriptive Maintenance by Incorporating Post-Prognostic Information Through Chance Constraints
Título según SCOPUS: Improving Prescriptive Maintenance by Incorporating Post-Prognostic Information Through Chance Constraints
Título de la Revista: IEEE Access
Volumen: 10
Editorial: Institute of Electrical and Electronics Engineers Inc.
Fecha de publicación: 2022
Página final: 55932
Idioma: English
URL: https://ieeexplore.ieee.org/document/9780348
DOI:

10.1109/ACCESS.2022.3177537

Notas: ISI, SCOPUS - WOS