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A SEMI-SUPERVISED MULTICLASS ANOMALY DETECTION APPROACH FOR PARTIALLY LABELED IN-PROCESS MEASUREMENT DATA

机译:用于部分标记的过程中测量数据的半监督多种多组异常检测方法

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Machine learning and other data-driven methods have developed at a prolific rate for industrial applications due to the advent of industrial big data. However, industrial datasets may not be especially veil-suited to supervised learning approaches that require extensive domain knowledge in the complete and accurate labeling of datasets. To address these challenges, a semi-supervised learning approach is proposed that makes use of partially labeled subsets. The proposed methodology is applied to high-dimensional in-process measurement data, utilizing a convolutional autoencoder for unsupervised feature extraction. A multiclass extension for semi-supervised anomaly diagnosis is proposed that utilizes principal component analysis as the basis for anomaly scoring, and the proposed approach intersects the results of targeted one-against-all phases on partially labeled sets to classify faults. Experiments in a case study on semiconductor manufacturing measurement data are performed to explore the relationship between latent features extracted and anomaly detection performance. The application of the proposed algorithm achieves a true positive detection rate of over 90% with false positive rate under 9% for both local and global anomaly types, with these results accomplished while reducing over 99% of the original input data dimensions. In addition, the approach also allows for positive samples to be identified that were previously undetected by human experts. These results are promising for the application of the proposed semi-supervised methodology in real industrial settings.
机译:由于工业大数据的出现,机器学习和其他数据驱动方法为工业应用的多产率开发。然而,工业数据集可能尤其适用于监督在数据集的完整和准确标记中需要广泛的域知识的学习方法。为了解决这些挑战,提出了一种半监督的学习方法,以利用部分标记的子集。所提出的方法应用于高维内部测量数据,利用卷积AualEncoder进行无监督特征提取。提出了一种用于半监控异常诊断的多键延长,利用主要成分分析作为异常评分的基础,并且所提出的方法与部分标记的集合集合的目标单次相反的结果与分类故障相交。执行关于半导体制造测量数据的案例研究的实验,以探索提取的潜在特征与异常检测性能之间的关系。所提出的算法的应用实现了局部和全球异常类型的误率为9%以上的真正阳性检出率超过90%,因此在降低了超过99%的原始输入数据维度的同时完成了这些结果。此外,该方法还允许识别以前未被人类专家未被发现的正样本。这些结果对于在真正的工业环境中申请拟议的半监督方法。

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