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INFILL DEFECTIVE DETECTION SYSTEM AUGMENTED BY SEMI-SUPERVISED LEARNING

机译:填充有缺陷的检测系统通过半监督学习增强

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In an effort to identify cyber-attacks on infill structures, detection systems based on supervised learning have been attempted in Additive Manufacturing (AM) security investigations. However, supervised learning requires a myriad of training data sets to achieve acceptable detection accuracy. Besides, since it is impossible to train for unprecedented defective types, the detection systems cannot guarantee robustness against unforeseen attacks. To overcome such disadvantages of supervised learning, This paper presents infill defective detection system (IDDS) augmented by semi-supervised learning. Semi-supervised learning allows classifying a sheer volume of unlabeled data sets by training a comparably small number of labeled data sets. Additionally, IDDS exploits self-training to increase the robustness against various defective types that are not pre-trained. IDDS consists of the feature extraction, pre-training, self-training. To validate the usefulness of IDDS. five defective types were designed and tested with IDDS, which was trained by only normal labeled data sets. The results are compared with the basis accuracy from the perceptron network model with supervised learning.
机译:努力识别对填筑结构的网络攻击,基于监督学习的检测系统已经尝试了添加剂制造(AM)安全调查。然而,监督学习需要无数的培训数据集来实现可接受的检测精度。此外,由于无法培训前所未有的有缺陷类型,因此检测系统不能保证对不可预见的攻击的鲁棒性。为了克服监督学习的这种缺点,本文提出了通过半监督学习增强的填充有缺陷的检测系统(IDDS)。半监督学习允许通过培训相当少量标记的数据集进行分类纯粹的未标记数据集。此外,IDDS利用自我训练来增加针对未预先培训的各种缺陷类型的鲁棒性。 IDD包括提取,培训,自我培训。验证IDD的有用性。设计并使用IDDS设计和测试了五种缺陷类型,其仅由正常标记的数据集培训。将结果与来自监督学习的Perceptron网络模型的基础准确性进行比较。

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