Shi Junren, Gao Jun, Xiang Sheng
School of Automation, Chongqing University of Posts and Telecommunications, Chongqing 400044, China.
School of Computer Science and Technology, Chongqing University of Posts and Telecommunications, Chongqing 400044, China.
Sensors (Basel). 2023 Jul 5;23(13):6163. doi: 10.3390/s23136163.
Accurate prediction of machine RUL plays a crucial role in reducing human casualties and economic losses, which is of significance. The ability to handle spatiotemporal information contributes to improving the prediction performance of machine RUL. However, most existing models for spatiotemporal information processing are not only complex in structure but also lack adaptive feature extraction capabilities. Therefore, a lightweight operator with adaptive spatiotemporal information extraction ability named Involution GRU (Inv-GRU) is proposed for aero-engine RUL prediction. Involution, the adaptive feature extraction operator, is replaced by the information connection in the gated recurrent unit to achieve adaptively spatiotemporal information extraction and reduce the parameters. Thus, Inv-GRU can well extract the degradation information of the aero-engine. Then, for the RUL prediction task, the Inv-GRU-based deep learning (DL) framework is firstly constructed, where features extracted by Inv-GRU and several human-made features are separately processed to generate health indicators (HIs) from multi-raw data of aero-engines. Finally, fully connected layers are adopted to reduce the dimension and regress RUL based on the generated HIs. By applying the Inv-GRU-based DL framework to the Commercial Modular Aero Propulsion System Simulation (C-MAPSS) datasets, successful predictions of aero-engines RUL have been achieved. Quantitative comparative experiments have demonstrated the advantage of the proposed method over other approaches in terms of both RUL prediction accuracy and computational burden.
准确预测机器的剩余使用寿命(RUL)对于减少人员伤亡和经济损失起着至关重要的作用,具有重要意义。处理时空信息的能力有助于提高机器RUL的预测性能。然而,大多数现有的用于处理时空信息的模型不仅结构复杂,而且缺乏自适应特征提取能力。因此,针对航空发动机RUL预测,提出了一种具有自适应时空信息提取能力的轻量级算子——卷积门控循环单元(Inv-GRU)。卷积,即自适应特征提取算子,被门控循环单元中的信息连接所取代,以实现自适应时空信息提取并减少参数。因此,Inv-GRU能够很好地提取航空发动机的退化信息。然后,针对RUL预测任务,首先构建基于Inv-GRU的深度学习(DL)框架,其中将Inv-GRU提取的特征和几个人为特征分别进行处理,以从航空发动机的多源原始数据中生成健康指标(HI)。最后,采用全连接层进行降维和基于生成的HI回归RUL。通过将基于Inv-GRU的DL框架应用于商用模块化航空推进系统仿真(C-MAPSS)数据集,成功实现了对航空发动机RUL的预测。定量对比实验证明了所提方法在RUL预测精度和计算负担方面优于其他方法。