Elvira-Ortiz David A, Saucedo-Dorantes Juan J, Osornio-Rios Roque A, Romero-Troncoso Rene de J
HSPdigital CA-Mecatronica Engineering Faculty, Autonomous University of Queretaro, San Juan del Rio 76806, Queretaro, Mexico.
Entropy (Basel). 2023 Feb 26;25(3):424. doi: 10.3390/e25030424.
Gears are reliable and robust elements that are found in any power transmission system. However, gears are prone to present incipient faults, such as wear, since they are constantly subjected to contact forces. Due to gears playing a key role in many industrial processes, it is important to develop condition monitoring strategies that ensure the proper functioning of the related power transmission system and the overall components. In this regard, the data on entropy provide relevant information that allow us to identify and quantify the effect of different wear levels in gears. Therefore, in this work, we proposed the use of seven entropy-related features to perform the identification of different wear severities in a gearbox. The novelty of this proposal lies in the use of the entropy features to carry out a high-performance characterization of the available vibration signals that are acquired from experimental tests. The novelty of this proposal lies in the fusion of three different techniques: entropy features, linear discriminant analysis, and artificial neural networks to obtain a machine learning approach for improving the detection of different wear severities in gears compared to other reported methodologies. This situation is achieved due to the high-performance characterization of the available vibration signals that are acquired from experimental tests. Additionally, the entropy features are subjected to a feature space transformation by means of linear discriminant analysis to obtain a 2D representation and, finally, the set of features extracted by linear discriminant analysis are used as inputs of a neural network-based classifier to determine the severity of wear that is present in the gears. The proposed methodology is validated and compared with a conventional statistical approach to show the improvement in the classification.
齿轮是任何动力传输系统中可靠且坚固的部件。然而,由于齿轮不断受到接触力的作用,它们容易出现早期故障,如磨损。由于齿轮在许多工业过程中起着关键作用,因此开发状态监测策略以确保相关动力传输系统和整体部件的正常运行非常重要。在这方面,熵数据提供了相关信息,使我们能够识别和量化齿轮不同磨损程度的影响。因此,在这项工作中,我们提出使用七个与熵相关的特征来识别齿轮箱中不同的磨损严重程度。该提议的新颖之处在于利用熵特征对从实验测试中获取的可用振动信号进行高性能表征。该提议的新颖之处在于融合了三种不同的技术:熵特征、线性判别分析和人工神经网络,以获得一种机器学习方法,与其他已报道的方法相比,可改进对齿轮不同磨损严重程度的检测。由于对从实验测试中获取的可用振动信号进行了高性能表征,才实现了这种情况。此外,通过线性判别分析对熵特征进行特征空间变换,以获得二维表示,最后,将线性判别分析提取的特征集用作基于神经网络的分类器的输入,以确定齿轮中存在的磨损严重程度。所提出的方法经过验证,并与传统统计方法进行比较,以展示分类方面的改进。