Failure diagnosis and physical interpretation of journal bearing for slurry liquid using long-term real vibration data

IF 5.7 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Goto Daiki, Inoue Tsuyoshi, Hori Takekiyo, Yabui Shota, Katayama Keiichi, Tomimatsu Shigeyuki, Heya Akira
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引用次数: 1

Abstract

Pumps are important machines used in rivers, social infrastructure, and industrial facilities. During long-term operation, journal bearings that support the pump shaft are subject to wear and peeling caused by liquids, including slurry. Wear and peeling can change the characteristics of journal bearings and cause abnormal shaft vibration. If wear and peeling progress, it can severely damage the pump. Thus, periodic maintenance and replacement are required. However, the frequency of periodic maintenance should be reduced as much as possible from a cost standpoint. Therefore, it is desirable to monitor the condition of the machine and perform maintenance only when necessary. In this study, the long-term vibration of a submerged journal bearing with slurry-containing water was monitored and recorded to identify the features that are important for condition monitoring and diagnosis and to interpret their contributions. First, an experimental test rig for a rotating shaft system was developed and long-term vibration data and changes in wear were recorded. A machine learning model (support vector machine (SVM)) was trained to predict the wear and damage conditions of the bearings, and its effectiveness was verified. In addition, two important features were selected as major contributors to the wear and peeling phenomena of journal bearings. These important features were interpreted using partial dependence (PD), Individual Conditional Expectation (ICE), and SHapley Additive exPlanations (SHAP), and the degree of contribution and characteristics of these features were clarified. Later, a reduced SVM model was trained using only these important features, and its effectiveness was clarified using another bearing’s data of wear and peeling processes.
基于长期真实振动数据的浆状流体滑动轴承故障诊断与物理解释
泵是用于河流、社会基础设施和工业设施的重要机器。在长期运行期间,支撑泵轴的轴颈轴承会受到液体(包括泥浆)引起的磨损和剥落。磨损和剥落会改变滑动轴承的特性并引起轴的异常振动。如果进行磨损和剥落,则会严重损坏泵。因此,需要定期维护和更换。然而,从成本的角度来看,应该尽可能减少定期维护的频率。因此,监测机器的状态并仅在必要时进行维护是可取的。在本研究中,监测和记录了含浆水中浸没滑动轴承的长期振动,以确定对状态监测和诊断重要的特征,并解释它们的贡献。首先,建立了旋转轴系统的实验试验台,记录了长期的振动数据和磨损变化。训练机器学习模型(支持向量机(SVM))来预测轴承的磨损和损坏状况,并验证了其有效性。此外,还选择了两个重要特征作为滑动轴承磨损和剥落现象的主要贡献者。运用部分依赖(PD)、个体条件期望(ICE)和SHapley加性解释(SHAP)对这些重要特征进行了解释,并阐明了这些特征的贡献程度和特征。然后,仅使用这些重要特征训练一个简化的SVM模型,并使用另一个轴承的磨损和剥落过程数据来阐明其有效性。
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来源期刊
CiteScore
12.80
自引率
12.10%
发文量
181
审稿时长
4.8 months
期刊介绍: Structural Health Monitoring is an international peer reviewed journal that publishes the highest quality original research that contain theoretical, analytical, and experimental investigations that advance the body of knowledge and its application in the discipline of structural health monitoring.
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