Autoencoders are unsupervised models which have been used for detecting anomalies in multi-sensor environments. A typical use includes training a predictive model with data from sensors operating under normal conditions and using the model to detect anomalies. Anomalies can come either from real changes in the environment (real drift) or from faulty sensory devices (virtual drift); however, the use of Autoencoders to distinguish between different anomalies has not yet been considered. To this end, we first propose the development of Bayesian Autoencoders to quantify epistemic and aleatoric uncertainties. We then test the Bayesian Autoencoder using a real-world industrial dataset for hydraulic condition monitoring. The system is injected with noise and drifts, and we have found the epistemic uncertainty to be less sensitive to sensor perturbations as compared to the reconstruction loss. By observing the reconstructed signals with the uncertainties, we gain interpretable insights, and these uncertainties offer a potential avenue for distinguishing real and virtual drifts.
翻译:自动编码器是用于探测多传感器环境中异常现象的不受监督的模型。典型的用途包括用正常条件下运行的传感器的数据培训预测模型,并利用该模型检测异常现象。异常现象可能来自环境的实际变化(实际漂移),也可能来自错误感官装置(虚拟漂移);然而,尚未考虑使用自动编码器区分不同异常现象。为此,我们首先提议开发巴耶斯自动编码器,以量化感知和感知不确定性。然后,我们用真实世界的工业数据集测试巴伊西亚自动编码器,以进行液压条件监测。该系统注入噪音和漂移,我们发现,与重建损失相比,对感官的扰动感知性不确定性不太敏感。通过观察带有不确定性的重建信号,我们获得了可解释的洞察力,这些不确定性为辨别真实和虚拟漂移提供了潜在的途径。