一种用于产品质量估计的模糊类偏网络集成

Shanmugasivam Pillai, Naveen John Punnoose, P. Vadakkepat, A. Loh, Kee Jin Lee
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引用次数: 3

摘要

在当前的工业4.0标准下,工厂越来越多地推动自动化和以数据为中心的方法。早期产品质量评估被认为是能够显著降低制造成本和浪费的解决方案之一。然而,质量估计是一个分类问题,由于其不平衡的性质,对传统的数据驱动算法具有固有的挑战性。本文提出了一种将卷积神经网络的特征提取能力与模糊系统的领域知识特征相结合的框架。提出的方法使用类偏向个体的集合来解决数据不平衡问题,这些个体使用类加权损失函数来学习特征。实验使用基准数据集和从半导体行业获得的生产数据进行。与现有算法相比,G-Mean和ROC-AVC值得到了改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ensemble of fuzzy Class-Biased Networks for Product Quality Estimation
Factories are increasingly pushing towards automation and data-centric approaches under the current Industry 4.0 standards. Early-stage product quality estimation is identified as one of the solutions that can significantly reduce manufacturing cost and wastage. However, quality estimation is a classification problem that is inherently challenging for traditional data-driven algorithms due to its imbalanced nature. In this paper, a framework is proposed, that combines the feature extraction capabilities of convolutional neural networks and the domain knowledge characteristics of fuzzy systems. The proposed method addresses data imbalance using an ensemble of class-biased individuals, that learn features using a class-weighted loss function. Experiments were conducted using a benchmark dataset and production data acquired from the semiconductor industry. Improvements were noted for G-Mean and ROC-AVC values when compared to existing algorithms.
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