Prediction of Remaining Useful Lifetime(RUL) in the modern manufacturing and automation workplace for machines and tools is essential in Industry 4.0. This is clearly evident as continuous tool wear, or worse, sudden machine breakdown will lead to various manufacturing failures which would clearly cause economic loss. With the availability of deep learning approaches, the great potential and prospect of utilizing these for RUL prediction have resulted in several models which are designed driven by operation data of manufacturing machines. Current efforts in these which are based on fully-supervised models heavily rely on the data labeled with their RULs. However, the required RUL prediction data (i.e. the annotated and labeled data from faulty and/or degraded machines) can only be obtained after the machine breakdown occurs. The scarcity of broken machines in the modern manufacturing and automation workplace in real-world situations increases the difficulty of getting sufficient annotated and labeled data. In contrast, the data from healthy machines is much easier to be collected. Noting this challenge and the potential for improved effectiveness and applicability, we thus propose (and also fully develop) a method based on the idea of masked autoencoders which will utilize unlabeled data to do self-supervision. In thus the work here, a noteworthy masked self-supervised learning approach is developed and utilized. This is designed to seek to build a deep learning model for RUL prediction by utilizing unlabeled data. The experiments to verify the effectiveness of this development are implemented on the C-MAPSS datasets (which are collected from the data from the NASA turbofan engine). The results rather clearly show that our development and approach here perform better, in both accuracy and effectiveness, for RUL prediction when compared with approaches utilizing a fully-supervised model.
翻译:在现代制造和自动化工作场所对机器和工具的剩余使用寿命(RUL)的预测在工业4.0中至关重要。 显而易见的是,由于连续的工具磨损,或更糟糕的是,机器突然故障将导致各种制造失败,这显然会造成经济损失。随着深层学习方法的提供,利用这些方法对RUL进行预测的巨大潜力和前景,产生了几个模型,这些模型是由制造机器的操作数据驱动的。目前基于完全监督的模型进行的努力,这些模型在很大程度上依赖其RUL标记的数据。然而,需要的RUL预测数据(即由错误和/或退化机器提供的附加说明和标签的数据)只有在机器故障发生后才能获得。在现实世界形势下,现代制造和自动化工作场所的破损机器增加了获得足够的附加说明和贴标签的数据的难度。相比之下,从健康机器的数据模型收集起来要容易得多。注意到这一挑战以及提高效力和适用性的潜力,因此,我们提议(并充分开发)一种基于掩码的机能精确性数据开发方法,从掩码的机能进行不精确的精确的计算结果。