Hu Yawei, Wei Ran, Yang Yang, Li Xuanlin, Huang Zhifu, Liu Yongbin, He Changbo, Lu Huitian
College of Electrical Engineering and Automation, Anhui University, Hefei 230601, China.
Anhui NARI Jiyuan Electric Co., Ltd., Hefei 230601, China.
Sensors (Basel). 2022 Mar 21;22(6):2407. doi: 10.3390/s22062407.
Predicting the degradation of mechanical components, such as rolling bearings is critical to the proper monitoring of the condition of mechanical equipment. A new method, based on a long short-term memory network (LSTM) algorithm, has been developed to improve the accuracy of degradation prediction. The model parameters are optimized via improved particle swarm optimization (IPSO). Regarding how this applies to the rolling bearings, firstly, multi-dimension feature parameters are extracted from the bearing's vibration signals and fused into responsive features by using the kernel joint approximate diagonalization of eigen-matrices (KJADE) method. Then, the between-class and within-class scatter (SS) are calculated to develop performance degradation indicators. Since network model parameters influence the predictive accuracy of the LSTM model, an IPSO algorithm is used to obtain the optimal prediction model via the LSTM model parameters' optimization. Finally, the LSTM model, with said optimal parameters, was used to predict the degradation trend of the bearing's performance. The experiment's results show that the proposed method can effectively identify the trends of degradation and performance. Moreover, the predictive accuracy of this proposed method is greater than that of the extreme learning machine (ELM) and support vector regression (SVR), which are the algorithms conventionally used in degradation modeling.
预测诸如滚动轴承等机械部件的退化对于正确监测机械设备状况至关重要。已开发出一种基于长短期记忆网络(LSTM)算法的新方法,以提高退化预测的准确性。通过改进的粒子群优化算法(IPSO)对模型参数进行优化。关于此方法如何应用于滚动轴承,首先,从轴承振动信号中提取多维特征参数,并使用特征矩阵的核联合近似对角化(KJADE)方法将其融合为响应特征。然后,计算类间和类内散度(SS)以制定性能退化指标。由于网络模型参数会影响LSTM模型的预测精度,因此使用IPSO算法通过优化LSTM模型参数来获得最优预测模型。最后,使用具有上述最优参数的LSTM模型来预测轴承性能的退化趋势。实验结果表明,所提出的方法能够有效识别退化趋势和性能。此外,该方法的预测精度高于退化建模中常用的极限学习机(ELM)和支持向量回归(SVR)算法。