Fault Detection Based on Vibration Measurements and Variational Autoencoder-Desirability Function

IF 7.9 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Rony Ibrahim;Ryad Zemouri;Antoine Tahan;Bachir Kedjar;Arezki Merkhouf;Kamal Al-Haddad
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Abstract

In the field of electrical machines maintenance, accurate and timely diagnosis plays a crucial role in ensuring reliability and efficiency. Variational autoencoder (VAE) techniques have emerged as a promising tool for fault classification due to their robustness in handling complex data. However, the inherent nondeterministic aspect of the VAE creates a significant challenge as it leads to varying cluster locations for identical health states across different machines. This variability complicates the creation of a standardized applicable diagnostic tool and challenges for the implementation of effective real-time health monitoring and prognostics. Addressing this issue, a novel approach is proposed wherein a desirability function-based term is integrated into the cost function of the VAE. The enhancement achieved by this approach arises from the standardization of classification, guaranteeing that analogous faults are assigned to identical geolocations within a 2-D user-friendly space. This method's efficacy is validated through two separate case studies: one analyzing vibration data from two diverse designs of large existing hydrogenerators, and the other utilizing vibration data sourced from an open-access dataset focused on bearing fault. The findings of both studies show that the model can cluster 97% of similar faults into preset zones, compared with 40% when the desirability term is excluded.
基于振动测量和变异自动编码器-去可变函数的故障检测
在电机维护领域,准确及时的诊断对确保可靠性和效率起着至关重要的作用。变异自动编码器(VAE)技术因其在处理复杂数据时的鲁棒性,已成为一种很有前途的故障分类工具。然而,变异自动编码器固有的非确定性带来了巨大的挑战,因为它导致不同机器上相同健康状态的集群位置各不相同。这种可变性使创建标准化的适用诊断工具变得更加复杂,也给实施有效的实时健康监测和预报带来了挑战。针对这一问题,我们提出了一种新方法,即在 VAE 的成本函数中集成一个基于可取性功能的项。这种方法的改进之处在于实现了分类标准化,保证了在二维用户友好空间内将类似故障分配到相同的地理位置。该方法的有效性通过两个独立的案例研究得到了验证:一个案例分析了现有大型水力发电机两种不同设计的振动数据,另一个案例则利用了来自公开访问数据集的振动数据,重点关注轴承故障。这两项研究的结果表明,该模型可将 97% 的类似故障归类到预设区域,而排除可取性项后,这一比例仅为 40%。
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CiteScore
13.50
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