Graduate Institute of Manufacturing Technology, National Taipei University of Technology, Taipei 10608, Taiwan.
Institute for the Development and Quality, Macau, Macao 999078, China.
Sensors (Basel). 2023 Jan 22;23(3):1267. doi: 10.3390/s23031267.
Bearings are the most commonly used components in rotating machines and the ability to diagnose their faults and predict their remaining useful life (RUL) is critical for system maintenance. This paper proposes a smart system combined with a regression model to predict the RUL of bearings. The method converts the azimuth signal through low-pass filtering (LPF) and a chaotic mapping system, and uses Euclidean feature values (EFVs) to extract features in order to construct useful health indicators (HIs). In fault detection, the iterative cumulative moving average (ICMA) is used to smooth the HIs, and the Euclidean norm is used to find the time-to-start prediction (TSP). In terms of prediction, this paper uses a self-selective regression model to select the most suitable regression model to predict the RUL of the bearing. The dataset provided by the Center for Intelligent Maintenance Systems (IMS) is applied for performance evaluation; in comparison with previous research, better prediction results can be achieved by applying the proposed smart assessment system. The proposed system is also applied to the PRONOSTIA (also called FEMTO-ST) bearing dataset in this paper, demonstrating that acceptable prediction performance can be obtained.
轴承是旋转机械中最常用的部件,能够诊断其故障并预测其剩余使用寿命 (RUL) 对系统维护至关重要。本文提出了一种结合回归模型的智能系统来预测轴承的 RUL。该方法通过低通滤波 (LPF) 和混沌映射系统转换方位信号,并使用欧几里得特征值 (EFVs) 提取特征,以构建有用的健康指标 (HIs)。在故障检测中,使用迭代累积移动平均 (ICMA) 对 HIs 进行平滑处理,使用欧几里得范数找到时间启动预测 (TSP)。在预测方面,本文使用自选择回归模型选择最适合的回归模型来预测轴承的 RUL。应用智能维护系统中心 (IMS) 提供的数据集进行性能评估;与以前的研究相比,应用提出的智能评估系统可以获得更好的预测结果。本文还将所提出的系统应用于 PRONOSTIA(也称为 FEMTO-ST)轴承数据集,证明可以获得可接受的预测性能。