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基于S变换谱核密度估计的齿轮故障诊断
引用本文:郭远晶,魏燕定,金晓航,杨友东. 基于S变换谱核密度估计的齿轮故障诊断[J]. 仪器仪表学报, 2017, 38(6): 1432-1439
作者姓名:郭远晶  魏燕定  金晓航  杨友东
作者单位:浙江工业大学之江学院绍兴312030,浙江大学 浙江省先进制造技术重点研究实验室杭州310027,浙江工业大学 特种装备制造与先进加工技术教育部重点实验室杭州310014,浙江工业大学之江学院绍兴312030
基金项目:国家自然科学基金(51275453,51505424)、浙江省自然科学基金(LQ17E050006,LY15E050019)项目资助
摘    要:针对齿轮在故障损伤状态下的振动信号,提出一种基于S变换谱二维核密度估计的冲击特征提取方法,以实现齿轮的故障诊断。该方法首先对包含冲击特征的振动信号进行S变换;然后将S变换谱乘以一个系数后圆整,得到一个整数矩阵;最后以S变换谱的时间和频率构成一个二维随机变量,以整数矩阵中的元素值作为二维随机变量各个采样样本的个数,对二维随机变量进行核密度估计,并最终得到一个二维核密度函数。该核密度函数相当于由S变换谱经过一次平滑去噪的过程获得,其中的噪声得到了有效的抑制,而冲击特征则得到了加强与突显。仿真振动信号和齿轮箱故障振动信号的分析结果表明,该方法能够有效地强化并提取出振动信号中周期性的冲击特征,从而实现齿轮箱相关故障的诊断。

关 键 词:齿轮;故障诊断;S变换;二维核密度估计;冲击特征

Gear fault diagnosis based on kernel density estimation of S transform spectrum
Guo Yuanjing,Wei Yanding,Jin Xiaohang and Yang Youdong. Gear fault diagnosis based on kernel density estimation of S transform spectrum[J]. Chinese Journal of Scientific Instrument, 2017, 38(6): 1432-1439
Authors:Guo Yuanjing  Wei Yanding  Jin Xiaohang  Yang Youdong
Abstract:An impact feature extraction method, based on two dimensional kernel density estimation for S transform spectrum, is proposed to analyze the vibration signal for gear fault diagnosis. In this approach, S transform is used to process the vibration signal, firstly. Secondly, the obtained S transform spectrum is multiplied by a factor and then rounded to obtain an integer matrix. Finally, the time and the frequency of the S transform spectrum are used to construct a two dimensional random variable, and the elements in the integer matrix are taken as the corresponding sample number of the two dimensional random variable. The kernel density of the two dimensional random variable is consequently estimated and a two dimensional kernel density function is obtained. Specifically, the kernel density function is acquired by the smoothing and denoising procedure of the S transform spectrum, in which the noise is effectively suppressed while the impulse signature is enhanced. By means of the processing of the simulated vibration signal and the gearbox fault vibration signals, results show that the proposed method can extract the periodic impact characteristics from the vibration signal effectively, which means the proposed method can be used for gearbox fault diagnosis.
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