Deep learning promises performant anomaly detection on time-variant datasets, but greatly suffers from low availability of suitable training datasets and frequently changing tasks. Deep transfer learning offers mitigation by letting algorithms built upon previous knowledge from different tasks or locations. In this article, a modular deep learning algorithm for anomaly detection on time series datasets is presented that allows for an easy integration of such transfer learning capabilities. It is thoroughly tested on a dataset from a discrete manufacturing process in order to prove its fundamental adequacy towards deep industrial transfer learning - the transfer of knowledge in industrial applications' special environment.
翻译:深层的学习承诺在时间变化的数据集中显示异常现象,但因适当培训数据集的可用性低和任务经常变化而大大受到影响。深层的转移学习通过根据来自不同任务或地点的以往知识而设定的算法而减轻了影响。在本篇文章中,介绍了用于在时间序列数据集中发现异常现象的模块式深层学习算法,便于将这种转移学习能力整合在一起。该算法在离散的制造工艺的数据集上进行彻底测试,以证明它对于深入的工业转移学习----工业应用特殊环境中的知识转让----具有根本的适足性。