Kamat Pooja Vinayak, Sugandhi Rekha, Kumar Satish
Symbiosis Institute of Technology, Symbiosis International (Deemed University), Pune, India.
Department of CSE and IT, MIT School of Engineering, MIT-ADT University, Pune, India.
PeerJ Comput Sci. 2021 Nov 26;7:e795. doi: 10.7717/peerj-cs.795. eCollection 2021.
Remaining Useful Life (RUL) estimation of rotating machinery based on their degradation data is vital for machine supervisors. Deep learning models are effective and popular methods for forecasting when rotating machinery such as bearings may malfunction and ultimately break down. During healthy functioning of the machinery, however, RUL is ill-defined. To address this issue, this study recommends using anomaly monitoring during both RUL estimator training and operation. Essential time-domain data is extracted from the raw bearing vibration data, and deep learning models are used to detect the onset of the anomaly. This further acts as a trigger for data-driven RUL estimation. The study employs an unsupervised clustering approach for anomaly trend analysis and a semi-supervised method for anomaly detection and RUL estimation. The novel combined deep learning-based anomaly-onset aware RUL estimation framework showed enhanced results on the benchmarked PRONOSTIA bearings dataset under non-varying operating conditions. The framework consisting of Autoencoder and Long Short Term Memory variants achieved an accuracy of over 90% in anomaly detection and RUL prediction. In the future, the framework can be deployed under varying operational situations using the transfer learning approach.
基于旋转机械的退化数据来估计其剩余使用寿命(RUL),对机器管理人员而言至关重要。深度学习模型是预测诸如轴承等旋转机械何时可能出现故障并最终损坏的有效且常用的方法。然而,在机械正常运行期间,RUL的定义并不明确。为解决这一问题,本研究建议在RUL估计器训练和运行过程中都使用异常监测。从原始轴承振动数据中提取关键时域数据,并使用深度学习模型来检测异常的开始。这进一步作为数据驱动的RUL估计的触发因素。该研究采用无监督聚类方法进行异常趋势分析,并采用半监督方法进行异常检测和RUL估计。基于深度学习的新型异常起始感知RUL估计框架在非变化运行条件下的基准PRONOSTIA轴承数据集上显示出了更好的结果。由自动编码器和长短期记忆变体组成的框架在异常检测和RUL预测方面达到了90%以上的准确率。未来,该框架可使用迁移学习方法在不同运行情况下进行部署。