论文标题
振动测量的时间聚类网络用于自我诊断的故障
Temporal clustering network for self-diagnosing faults from vibration measurements
论文作者
论文摘要
需要在操作机械中构建智能,并在受监视的信号上使用数据分析,以量化操作系统的健康状况并自我诊断任何故障的启动。内置的控制程序可以自动采取纠正措施,以避免诊断出故障时灾难性故障。本文介绍了在操作系统(即机械基础,机械套管等)或任何其他类型的时间信号上进行处理加速度测量的时间聚类网络(TCN)功能,并根据监视信号确定故障启动时确定。新功能使用:一维卷积神经网络(1D-CNN)处理测量;无监督的学习(即,在培训1D-CNN的情况下,没有不同操作条件和原始条件与受损条件的信号标记的信号);聚类(即在不同群集中对信号进行分组,反映了操作条件);以及识别与原始工作条件相关的任何集群成员的故障信号的统计分析。一项证明其运作的案例研究包括在本文中。最后,确定了进一步研究的主题。
There is a need to build intelligence in operating machinery and use data analysis on monitored signals in order to quantify the health of the operating system and self-diagnose any initiations of fault. Built-in control procedures can automatically take corrective actions in order to avoid catastrophic failure when a fault is diagnosed. This paper presents a Temporal Clustering Network (TCN) capability for processing acceleration measurement(s) made on the operating system (i.e. machinery foundation, machinery casing, etc.), or any other type of temporal signals, and determine based on the monitored signal when a fault is at its onset. The new capability uses: one-dimensional convolutional neural networks (1D-CNN) for processing the measurements; unsupervised learning (i.e. no labeled signals from the different operating conditions and no signals at pristine vs. damaged conditions are necessary for training the 1D-CNN); clustering (i.e. grouping signals in different clusters reflective of the operating conditions); and statistical analysis for identifying fault signals that are not members of any of the clusters associated with the pristine operating conditions. A case study demonstrating its operation is included in the paper. Finally topics for further research are identified.