Prediction of the Remaining Useful Life of Engines for Remanufacturing Using a Semi-supervised Deep Learning Model Trained by the Bees Algorithm
Citation
ZEYBEK, Sultan. "Prediction of the Remaining Useful Life of Engines for Remanufacturing Using a Semi-supervised Deep Learning Model Trained by the Bees Algorithm". Intelligent Production and Manufacturing Optimisation-The Bees Algorithm Approach, (2023): 383-397.Abstract
Smart and sustainable manufacturing is important for enterprises to handle global
challenges [1]. Products, systems, and components are reused, remanufactured, and
recycled instead of being disposed of in landfills, which supports a circular material
flow. In the case of remanufacturing, where the idea is that components and products
are returned to “like-new” or “better-than-new” conditions, it is mandatory to check
their quality and health status [2]. Remaining Useful Life (RUL) prediction within
the scope of predictive maintenance is a critical stage for remanufacturing decisions
on complex machines to prevent unexpected degradations. Estimation of the RUL
of a product is one of the most important tasks for Predictive Maintenance Systems
(PMS). Instead of operating reactive or preventive maintenance, predictive maintenance reduces costs and can pinpoint problems in complex machines before failure
since it can estimate the usable time of the product before the time of maintenance
or replacement.