With the high requirements of automation in the era of Industry 4.0, anomaly detection plays an increasingly important role in higher safety and reliability in the production and manufacturing industry. Recently, autoencoders have been widely used as a backend algorithm for anomaly detection. Different techniques have been developed to improve the anomaly detection performance of autoencoders. Nonetheless, little attention has been paid to the latent representations learned by autoencoders. In this paper, we propose a novel selection-and-weighting-based anomaly detection framework called SWAD. In particular, the learned latent representations are individually selected and weighted. Experiments on both benchmark and real-world datasets have shown the effectiveness and superiority of SWAD. On the benchmark datasets, the SWAD framework has reached comparable or even better performance than the state-of-the-art approaches.
翻译:随着工业时代的自动化要求很高,4.0号工业时代,异常检测在生产和制造业的更高安全和可靠性方面发挥着越来越重要的作用。最近,汽车校正被广泛用作异常检测的后端算法。开发了不同的技术来改进自动校正的异常检测性能。然而,对于自动校正所学的潜在表现却很少注意。在本文件中,我们建议建立一个新的基于选择和加权的异常检测框架,称为SWAD。特别是,所学的潜在表现是个别选择和加权的。对基准数据集和现实世界数据集的实验显示了SWAD的有效性和优越性。在基准数据集方面,SWAD框架已经达到比最新方法的可比较或甚至更好的表现。