Active inspection with knowledge distillation for cost-effective fault prediction in manufacturing process
Junbong Heo, Minhyeok Son, Jaewoong Shim

TL;DR
This paper introduces a cost-effective method for fault prediction in manufacturing by using knowledge distillation and active inspection to reduce reliance on expensive advanced inspections.
Contribution
A novel framework combining knowledge distillation and active inspection to optimize inspection costs while maintaining high prediction accuracy.
Findings
Knowledge distillation from advanced to basic models improves prediction accuracy with lower inspection costs.
Active inspection with the distilled model further enhances cost-effectiveness during inference.
Real-world semiconductor data validates the framework's effectiveness in practical settings.
Abstract
Manufacturing processes involve various inspections aimed at identifying faulty products before they reach the final stages. These inspections are typically categorized into basic, conducted for all products, and advanced, conducted only for selected sampled products due to cost constraints. Recent advancements have leveraged inspection data to train machine learning models that predict potential faults in manufactured products. However, models using only basic inspection results, referred to as the basic model, often underperform compared to those that also use advanced inspection results, referred to as the advanced model, due to limited information. In this study, we propose a novel approach to train a basic model using knowledge distillation from an advanced model, achieving high prediction accuracy with reduced inspection costs. Additionally, we incorporate this distilled basic…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Explainable Artificial Intelligence (XAI) · Advanced Neural Network Applications
