Zhang Long, Zhao Lijuan, Wang Chaobing, Xiao Qian, Liu Haoyang, Zhang Hao, Hu Yanqing
School of Mechatronics & Vehicle Engineering, East China Jiaotong University, Nanchang 330013, China.
Sensors (Basel). 2022 Aug 23;22(17):6330. doi: 10.3390/s22176330.
For the sake of addressing the issue of extracting multiple features embedded in a noise-heavy vibration signal for bearing compound fault diagnosis, a novel model based on improved adaptive chirp mode decomposition (IACMD) and sparse representation, namely IACMDSR, is developed in this paper. Firstly, the IACMD is employed to simultaneously separate the distinct fault types and extract multiple resonance frequencies induced by them. Next, an adaptive bilateral wavelet hyper-dictionary that digs deeper into the periodicity and waveform characteristics exhibited by the real fault impulse response is constructed to identify and reconstruct each type of fault-induced feature with the help of the orthogonal matching pursuit (OMP) algorithm. Finally, the fault characteristic frequency can be detected via an envelope demodulation analysis of the reconstructed signal. A simulation and two sets of experimental results confirm that the developed IACMDSR model is a powerful and versatile tool and consistently outperforms the leading MCKDSR and MCKDMWF models. Furthermore, the developed model has satisfactory capability in practical applications because the IACMD has no requirement for the input number of the signal components and the adaptive bilateral wavelet is powerfully matched to the real fault-induced impulse response.
为了解决在含噪振动信号中提取多种特征以进行轴承复合故障诊断的问题,本文提出了一种基于改进自适应啁啾模式分解(IACMD)和稀疏表示的新型模型,即IACMDSR。首先,采用IACMD同时分离不同的故障类型并提取由它们引起的多个共振频率。其次,构建一个自适应双边小波超字典,该字典深入挖掘实际故障脉冲响应所呈现的周期性和波形特征,并借助正交匹配追踪(OMP)算法识别和重构每种故障诱导特征。最后,通过对重构信号进行包络解调分析来检测故障特征频率。一组仿真和两组实验结果证实,所开发的IACMDSR模型是一个强大且通用的工具,始终优于领先的MCKDSR和MCKDMWF模型。此外,所开发的模型在实际应用中具有令人满意的能力,因为IACMD对信号分量的输入数量没有要求,并且自适应双边小波与实际故障诱导的脉冲响应具有很强的匹配性。