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Automobile Predictive Maintenance using Deep Learning
Publication year - 2021
Publication title -
international journal of artificial intelligence and machine learning
Language(s) - English
Resource type - Journals
eISSN - 2642-1585
pISSN - 2642-1577
DOI - 10.4018/ijaiml.20210701oa12
Subject(s) - predictive maintenance , preventive maintenance , computer science , class (philosophy) , proactive maintenance , binary classification , machine learning , artificial intelligence , binary number , data mining , reliability engineering , support vector machine , engineering , arithmetic , mathematics
There are three types of maintenance management policy Run-tofailure (R2F), Preventive Maintenance (PvM) and Predictive Maintenance (PdM). In both R2F and PdM we have the data related to the maintenance cycle. In case of Preventive Maintenance (PvM) complete information about maintenance cycle is not available. Among these three maintenance policies, predictive Maintenance (PdM) is becoming a very important strategy as it can help us to minimize the repair time and the associated cost with it. In this paper we have proposed PdM, which allows the dynamic decision rules for the maintenance management. PdM is achieved by training the machine learning model with the datasets. It also helps in planning of maintenance schedules. We specially focused on two models that are Binary Classification and Recurrent Neural Network. In Binary Classification we classify whether our data belongs to the failure class or the non failure class. In Binary Classification the number of cycles is entered and classification model predicts whether it belongs to the failure/non failure class.

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