Evaluating the Role of Data Enrichment Approaches Towards Rare Event Analysis in Manufacturing
Chathurangi Shyalika, Ruwan Wickramarachchi, Fadi El Kalach, Ramy, Harik, and Amit Sheth

TL;DR
This paper investigates how data enrichment techniques improve rare event detection in manufacturing, demonstrating up to 48% F1 score enhancement and analyzing model interpretability for better understanding of rare failure predictions.
Contribution
It evaluates the effectiveness of data augmentation and sampling methods combined with various machine learning models for rare event prediction in manufacturing.
Findings
Data enrichment improves F1 score by up to 48%.
Time series augmentation preserves patterns and enhances model performance.
Model interpretability methods provide insights into rare event predictions.
Abstract
Rare events are occurrences that take place with a significantly lower frequency than more common regular events. In manufacturing, predicting such events is particularly important, as they lead to unplanned downtime, shortening equipment lifespan, and high energy consumption. The occurrence of events is considered frequently-rare if observed in more than 10% of all instances, very-rare if it is 1-5%, moderately-rare if it is 5-10%, and extremely-rare if less than 1%. The rarity of events is inversely correlated with the maturity of a manufacturing industry. Typically, the rarity of events affects the multivariate data generated within a manufacturing process to be highly imbalanced, which leads to bias in predictive models. This paper evaluates the role of data enrichment techniques combined with supervised machine-learning techniques for rare event detection and prediction. To address…
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Taxonomy
TopicsTechnology Assessment and Management · Manufacturing Process and Optimization
