Abstract

This article discusses issues related to the maintenance of airports’ baggage handling systems and assesses the feasibility of using predictive maintenance instead of periodic maintenance. The unique issues related to baggage handling systems are discussed — namely random noise captured by the IoT sensors due to the movement of the luggage and complex interconnected components that constitute the conveyors. The paper presents a scalable and economical maintenance 4.0 solution for such a system using data from sensors installed (on a live system in absence of historical data). Differentiating between anomaly detection and outlier detection the paper presents an algorithm that can be used to remove idle and noisy data from the datasets. Using integrated machine learning approaches, it tries to detect and diagnose incumbent defects in the early stage to avoid breakdowns. The paper proposes an automated machine-learning pipeline by processing unstructured industrial data. The performance of various machine learning algorithms on the collected data is compared. Finally, the paper discusses avenues for future research.

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