Kaçar, S.Balli, T.Yetkin, E.F.2025-02-152025-02-15202409798350365887https://doi.org/10.1109/UBMK63289.2024.10773396https://hdl.handle.net/20.500.12469/7190In this study, we aim to test the usability of Change Point Detection (CPD) algorithms (specifically the Pruned Exact Linear Time-PELT) to facilitate the utilization of large volumes of data within predictive mechanisms in the industry. We proposed an efficient CPD parameter selection mechanism for defect diagnosis using time-series vibration data from critical assets. We emphasized the practical algorithm PELT to ensure broad industrial applicability. Our experimental analysis, using synthetic and actual vibration data, demonstrated the practical applicability and effectiveness of PELT algorithm for automatic segmentation. The numerical results show the potential of CPD methodologies for improving predictive maintenance operations by providing an automatic segmentation mechanism. This pipeline proposes a way to increase the operational efficiency and scalability of predictive maintenance approaches, enhancing maintenance procedures and ensuring the long-term reliability of industrial systems. © 2024 IEEE.eninfo:eu-repo/semantics/closedAccessChange Point Detection (Cpd)Cost-Effective SolutionsFault DetectionHybrid Monitoring SystemOperational EfficiencyPredictive MaintenanceReal-Time MonitoringScalabilityVibration DataAutomatic Segmentation of Time Series Data With Pelt Algorithm for Predictive Maintenance in the Flat Steel IndustryConference Object90290710.1109/UBMK63289.2024.107733962-s2.0-85215521309N/AN/A