Open Heterogeneous Data for Condition Monitoring of Multi Faults in Rotating Machines Used in Different Operating Conditions

IF 1.4 Q2 ENGINEERING, MULTIDISCIPLINARY International Journal of Prognostics and Health Management Pub Date : 2023-08-24 DOI:10.36001/ijphm.2023.v14i2.3497
M. Soualhi, A. Soualhi, K. Nguyen, K. Medjaher, C. Guy, Razik Hubert
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Abstract

Rotating machines are widely used in several fields such as railways, renewable energies, robotics, etc. This diversity of application implies a large variety of faults of critical components susceptible to fail. For this purpose, prognostics and health management (PHM) is deployed to effectively monitor these components through the detection, diagnostics as well as prognostics of faults. In the literature, there exist numerous methods to ensure the above monitoring activities. However, few of them consider different failure types using heterogeneous data and various operating conditions. Also, there are no dominant methods that can be generalized for monitoring. For this reason, the genericity of these methods and their applicability in several systems is a crucial issue. To help researchers to achieve the above challenges, this paper presents a detailed description of data sources from experimental test benches. These data-sets correspond to different case studies that monitor the health states of multiple critical components in various operating conditions using numerous sensors.
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面向不同工况下旋转机械多故障状态监测的开放异构数据
旋转机械广泛应用于铁路、可再生能源、机器人等多个领域。这种应用的多样性意味着易发生故障的关键部件存在多种故障。为此,部署了预测和健康管理(PHM),通过故障的检测、诊断和预测来有效监控这些组件。在文献中,存在许多方法来确保上述监测活动。然而,他们中很少有人使用异构数据和各种操作条件来考虑不同的故障类型。此外,没有可以推广用于监测的主要方法。因此,这些方法的通用性及其在几个系统中的适用性是一个关键问题。为了帮助研究人员实现上述挑战,本文对实验测试台的数据源进行了详细描述。这些数据集对应于不同的案例研究,这些案例研究使用大量传感器监测不同操作条件下多个关键部件的健康状态。
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来源期刊
CiteScore
2.90
自引率
9.50%
发文量
18
审稿时长
9 weeks
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