Fault diagnosis of high-speed motorized spindles based on lumped parameter model and enhanced transfer learning

Xiangming Zhang, Zhimin Ma, Yongying Jiang
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引用次数: 0

Abstract

Condition monitoring of rotating components is crucial for ensuring the reliability and safety of mechanical systems, and artificial intelligence (AI) plays a significant role in achieving the goal. However, the high costs and complexity associated with components like high-speed motorized spindles present significant challenges in collecting complete fault samples. Therefore, we propose a new approach to tackle the challenges. The process commences with establishing a lumped parameter dynamic model for the high-speed motorized spindle. Then, the parameters such as stiffness, eccentricity, and damping in the lumped parameter model were optimized using genetic algorithm. Subsequently, simulated fault samples are acquired by introducing excitation to normal simulated signals. Finally, transfer learning techniques are utilized for intelligent fault diagnosis. The training set consists of simulated fault samples, while the testing set comprises experimental fault samples. Our approach aims to enhance the efficiency and accuracy of fault diagnosis for high-speed motorized spindles while also addressing the challenge of high cost.
基于集合参数模型和增强迁移学习的高速电动主轴故障诊断
旋转部件的状态监测对于确保机械系统的可靠性和安全性至关重要,而人工智能(AI)在实现这一目标方面发挥着重要作用。然而,与高速电动主轴等部件相关的高成本和复杂性给收集完整的故障样本带来了巨大挑战。因此,我们提出了一种新方法来应对挑战。首先要为高速电主轴建立一个集合参数动态模型。然后,使用遗传算法对该块参数模型中的刚度、偏心率和阻尼等参数进行优化。随后,通过对正常模拟信号引入激励来获取模拟故障样本。最后,利用迁移学习技术进行智能故障诊断。训练集包括模拟故障样本,测试集包括实验故障样本。我们的方法旨在提高高速电动主轴故障诊断的效率和准确性,同时应对高成本的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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