Data-Driven Predictive Maintenance for Heat Exchangers: Real-Time Monitoring and Long-Term Performance Prediction Using Integrated ML Models

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초록

This study addresses the high maintenance costs of heat exchangers in petrochemical processes by developing a deep learning-based predictive maintenance (PdM) model for performance monitoring and scheduling. Using a mathematical model, the overall heat transfer coefficient (U) was derived to evaluate heat exchanger performance, resulting in a performance indicator (DI). An artificial neural network-genetic algorithm (ANN-GA) technique was employed to create a real-time DI prediction model based on industrial process data. A long short-term memory (LSTM) model was then used to predict heat exchanger performance over 3 days using short-term operating data (12 h). The model's hyperparameters were optimized, achieving a real-time monitoring model with a mean absolute percentage error (MAPE) of 0.59% and a maintenance-cycle prediction model with an MAPE of 2.41%. This integrated system, akin to soft sensors, accurately predicted a 72-h performance profile using 12-h history data owing to our implemented data augmentation strategies, demonstrating robustness and potential for improving uptime and maintenance scheduling.

키워드

Heat exchangerPredicted maintenanceDeep learningReal-time performance monitoringMaintenance schedulingDeterioration indexPOLICY SELECTIONFUZZYOPTIMIZATIONSTRATEGIES
제목
Data-Driven Predictive Maintenance for Heat Exchangers: Real-Time Monitoring and Long-Term Performance Prediction Using Integrated ML Models
저자
Kim, HeejinSim, EunseokDela Quarme, GbadagoHwang, Sungwon
DOI
10.1007/s11814-025-00493-2
발행일
2025-08
유형
Article
저널명
Korean Journal of Chemical Engineering
42
10
페이지
2167 ~ 2180