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首页> 外文期刊>Journal of Mechanical Science and Technology >An enhanced multipoint optimal minimum entropy deconvolution approach for bearing fault detection of spur gearbox
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An enhanced multipoint optimal minimum entropy deconvolution approach for bearing fault detection of spur gearbox

机译:旋转齿轮箱轴承故障检测的增强多点最佳最小熵卷积方法

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摘要

Previous research has shown that minimum entropy deconvolution (MED) is an effective technique for detecting impulse-like signals, such as the bearing fault and gear fault signals. However, some problems still exist in this technique. With the aim of overcoming these limitations, in this paper, an enhanced MED called multipoint optimal minimum entropy deconvolution adjusted (MOMEDA) is proposed. MOMEDA can succeed in detecting multiple impulses. Unfortunately, according to some simulations and real tests in this work, the results of applying this technique to the fault signals directly were grudgingly acceptable but not very satisfactory, especially under a harsh working condition. This means that MOMEDA is a little sensitive to intensive background noise and vibration interference. To overcome this drawback, a novel mode decomposition method, named time-varying filtering for empirical mode decomposition (TVFEMD), is applied to adaptively eliminate background noise and vibration interference prior to using MOMEDA. According to this proposed method, the weak bearing fault features can be identified clearly. The proposed approach is utilized in bearing fault detection of a spur gearbox and the results show its superiority and effectiveness.
机译:以前的研究表明,最小熵折叠(MED)是用于检测脉冲状信号的有效技术,例如轴承故障和齿轮故障信号。但是,这种技术中仍存在一些问题。在本文中,提出了克服这些限制的局限性,提出了一种称为多点最佳最小熵解卷积(Momeda)的增强型MED。 Momeda可以成功地检测多种冲动。遗憾的是,根据这项工作的一些模拟和实际测试,将该技术应用于故障信号的结果直接勉强可接受,但不是非常令人满意,尤其是在恶劣的工作状态下。这意味着Momeda对密集的背景噪音和振动干扰有点敏感。为了克服该缺点,应用了用于经验模式分解(TVFEMD)的新的模式分解方法,用于自适应地消除Momeda之前的背景噪声和振动干扰。根据该方法,可以清楚地识别弱轴承故障特征。所提出的方法用于轴承齿轮箱的故障检测,结果表明其优越性和有效性。

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