Given the scarcity of anomalies in real-world applications, the majority of literature has been focusing on modeling normality. The learned representations enable anomaly detection as the normality model is trained to capture certain key underlying data regularities under normal circumstances. In practical settings, particularly industrial time series anomaly detection, we often encounter situations where a large amount of normal operation data is available along with a small number of anomaly events collected over time. This practical situation calls for methodologies to leverage these small number of anomaly events to create a better anomaly detector. In this paper, we introduce two methodologies to address the needs of this practical situation and compared them with recently developed state of the art techniques. Our proposed methods anchor on representative learning of normal operation with autoregressive (AR) model along with loss components to encourage representations that separate normal versus few positive examples. We applied the proposed methods to two industrial anomaly detection datasets and demonstrated effective performance in comparison with approaches from literature. Our study also points out additional challenges with adopting such methods in practical applications.
翻译:鉴于现实世界应用中的异常现象很少,大多数文献都注重于模拟正常现象,学习到的表现形式有助于发现异常现象,因为正常模式是经过训练的,以掌握正常情况下某些关键的基本数据规律。在实际环境中,特别是工业时间序列异常现象探测,我们经常遇到的情况是,随着一段时间收集到的少量异常事件,可以提供大量正常运行数据,这种实际情况要求采用各种方法,利用这些少量异常事件来创造更好的异常现象探测器。在本文件中,我们引入了两种方法,以满足这种实际情况的需要,并将它们与最近开发的先进技术进行比较。我们提出的方法是,以有代表性地学习与自动递减模型进行正常运行的典型做法为基础,同时进行损失部分,鼓励将正常与少数积极例子分开的典型表现。我们将拟议方法应用于两个工业异常现象探测数据集,并与文献中的方法相比,展示了有效的表现。我们的研究还提出了在实际应用中采用这类方法的额外挑战。