Science & Technology on Reliability and Environmental Engineering Laboratory, School of Reliability and Systems Engineering, Beihang University, Xueyuan Road No. 37, Haidian District, Beijing, China.
Science & Technology on Reliability and Environmental Engineering Laboratory, School of Reliability and Systems Engineering, Beihang University, Xueyuan Road No. 37, Haidian District, Beijing, China; Shaanxi Key Laboratory of Mechanical Product Quality Assurance and Diagnostics, School of Mechanical Engineering, Xi'an Jiaotong University, Xi'an 710049, China.
ISA Trans. 2019 Jan;84:82-95. doi: 10.1016/j.isatra.2018.10.008. Epub 2018 Oct 12.
Parameter-adaptive variational mode decomposition (VMD) has attenuated the dominant effect of prior parameters, especially the predefined mode number and balancing parameter, which heavily trouble the traditional VMD. However, parameter-adaptive VMD still encounters some problems when it is applied to the data from industry applications. On one hand, the mode number chosen using parameter-adaptive VMD is not the optimal. Numbers of redundant modes are decomposed. On another hand, parameter-adaptive VMD has much space for the improvement when it is applied to compound-fault diagnosis. To solve these issues and further enhance its performance, an improved parameter-adaptive VMD (IPAVMD) is proposed in this paper. Firstly, a new index, called ensemble kurtosis, is constructed by combining with kurtosis and the envelope spectrum kurtosis. It can simultaneously take the cyclostationary and impulsiveness into consideration. Secondly, the optimization objective function of grasshopper optimization algorithm is improved based on the ensemble kurtosis. The improved method chooses the mean value of the ensemble kurtosis of all modes rather than that of the individual mode as objective function. Thirdly, to extract all potential fault information, an iteration algorithm is used in the new method. Benefiting from these improvements, the proposed IPAVMD outperforms the traditional parameter-adaptive VMD and further expands the application to compound-fault diagnosis. It has been verified by a series of simulated signals and a real dataset from the axle box bearings of locomotive.
参数自适应变分模态分解 (VMD) 减弱了先验参数的主导作用,特别是传统 VMD 中预设的模态数量和平衡参数。然而,参数自适应 VMD 在应用于工业应用的数据时仍然存在一些问题。一方面,参数自适应 VMD 选择的模态数量不是最优的,会分解出许多冗余模态。另一方面,参数自适应 VMD 在应用于复合故障诊断时仍有很大的改进空间。为了解决这些问题并进一步提高其性能,本文提出了一种改进的参数自适应 VMD(IPAVMD)。首先,通过结合峭度和包络谱峭度,构造了一个新的指标,称为集合峭度。它可以同时考虑周期性和脉冲性。其次,基于集合峭度对 Grasshopper 优化算法的优化目标函数进行了改进。改进后的方法选择所有模态集合峭度的平均值作为目标函数,而不是单个模态的平均值。第三,为了提取所有潜在的故障信息,新方法使用了迭代算法。得益于这些改进,所提出的 IPAVMD 优于传统的参数自适应 VMD,并进一步扩展到复合故障诊断的应用。通过一系列模拟信号和机车轴箱轴承的真实数据集验证了该方法的有效性。