Resilient fast nonlinear blind deconvolution with uniform initialization for the bearing fault diagnosis

Hao Ma, Baokun Han, Jinrui Wang, Zongzhen Zhang, Huaiqian Bao
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Abstract

[Formula: see text] The extraction of defective bearing feature under sudden load variations and mutual interference among components is a challenging task. The key is to overcome the strong background noise and random shock disturbances. Fast nonlinear blind deconvolution (FNBD) with superior noise adaptability is considered as a powerful tool to tackle the challenge. However, the reliability of FNBD is reduced by misdiagnosis under random shock interference and computational instability. In addition, extraction performance of FNBD is affected by the setting of complex parameters. To address above issues and broaden the applicability of FNBD, resilient fast nonlinear blind deconvolution (RFNBD) is proposed. First, the impact of filter initialization on the extraction accuracy and stability of FNBD is studied. The results indicate that the FNBD converges to components in the signal that are close to the center frequency of the initial filter, and the robustness of FNBD is limited by the original initialization mode. Based on this, a novel initialization pattern is proposed to improve the robustness under random shock interference and computational stability. Subsequently, the inferior filter elimination strategy is introduced to enhance the extraction efficiency and intelligence of RFNBD. Finally, the superior robustness under variable parameters and extraction performance under strong interference of RFNBD is demonstrated by simulation and experiment. In the XJTU-SY datasets, the proposed RFNBD extracted fault characteristic frequency and its first four harmonics from 16,384 sampling points 11 min earlier than the traditional method.
用于轴承故障诊断的具有统一初始化的弹性快速非线性盲解卷法
[公式:见正文] 在载荷突变和部件间相互干扰的情况下提取轴承缺陷特征是一项具有挑战性的任务。关键是要克服强背景噪声和随机冲击干扰。快速非线性盲解卷积(FNBD)具有卓越的噪声适应能力,被认为是应对这一挑战的有力工具。然而,在随机冲击干扰和计算不稳定的情况下,FNBD 的可靠性会因误诊而降低。此外,复杂参数的设置也会影响 FNBD 的提取性能。为解决上述问题并扩大 FNBD 的应用范围,提出了弹性快速非线性盲解卷法(RFNBD)。首先,研究了滤波器初始化对 FNBD 提取精度和稳定性的影响。结果表明,FNBD 会收敛到信号中接近初始滤波器中心频率的成分,而 FNBD 的鲁棒性受到原始初始化模式的限制。在此基础上,提出了一种新的初始化模式,以提高随机冲击干扰下的鲁棒性和计算稳定性。随后,引入了劣质滤波器消除策略,以提高 RFNBD 的提取效率和智能性。最后,通过仿真和实验证明了 RFNBD 在多变参数下的卓越鲁棒性和强干扰下的提取性能。在 XJTU-SY 数据集中,所提出的 RFNBD 比传统方法提前 11 分钟从 16,384 个采样点中提取出故障特征频率及其前四次谐波。
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