TY - JOUR T1 - Learning-Based Algorithm for Fault Prediction Combining Different Data Mining Techniques: A Real Case Study AU - Lucantonı, Laura AU - Cıarapıca, Filippo Emanuele AU - Bevılacqua, Maurizio PY - 2022 DA - December DO - 10.55549/epstem.1224571 JF - The Eurasia Proceedings of Science Technology Engineering and Mathematics JO - EPSTEM PB - ISRES Publishing WT - DergiPark SN - 2602-3199 SP - 55 EP - 63 VL - 21 LA - en AB - In recent years, new Data Mining (DM) algorithms and methodologies are increasingly used as anindustrial solution for manufacturing improvements. In this context, new techniques are widely required bycompanies in the field of maintenance due to the need to reduce breakdowns intervention and take advantage ofthe increasing availability of data. This paper aims to propose a new learning-based algorithm to improveknowledge extraction by combining different DM techniques from a predictive maintenance perspective. First,the J48 algorithm and Random Forest (RF) are used as a predictive model to classify a set of failure modesaccording to their influence on the Overall Equipment Effectiveness (OEE). Then, the Apriori algorithm is usedto identify the relationship among failure events belonging to the lowest OEE range for which, therefore, apredictive maintenance strategy should be defined. In order to describe the learning-based algorithm proposed inthis paper, a real case study is presented and detailed. The experimental results showed a valuable tool forknowledge extraction and the definition of a set of predictive maintenance strategies for those failures mostaffecting the process. In this way, the complexity of decision-making on maintenance strategies can be reducedmainly when dealing with a large amount of information or a challenging dataset. KW - Algorithms KW - Knowledge extraction KW - Failure prediction KW - Data mining KW - Case study UR - https://doi.org/10.55549/epstem.1224571 L1 - https://dergipark.org.tr/en/download/article-file/2853809 ER -