Optimum prediction model of remaining useful life for rolling element bearing based on integrating optimize health indicator (OHI) and machine learning algorithm

IF 1.4 Q2 ENGINEERING, MULTIDISCIPLINARY
V. Nistane
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引用次数: 1

Abstract

Purpose Rolling element bearings (REBs) are commonly used in rotating machinery such as pumps, motors, fans and other machineries. The REBs deteriorate over life cycle time. To know the amount of deteriorate at any time, this paper aims to present a prognostics approach based on integrating optimize health indicator (OHI) and machine learning algorithm. Design/methodology/approach Proposed optimum prediction model would be used to evaluate the remaining useful life (RUL) of REBs. Initially, signal raw data are preprocessing through mother wavelet transform; after that, the primary fault features are extracted. Further, these features process to elevate the clarity of features using the random forest algorithm. Based on variable importance of features, the best representation of fault features is selected. Optimize the selected feature by adjusting weight vector using optimization techniques such as genetic algorithm (GA), sequential quadratic optimization (SQO) and multiobjective optimization (MOO). New OHIs are determined and apply to train the network. Finally, optimum predictive models are developed by integrating OHI and artificial neural network (ANN), K-mean clustering (KMC) (i.e. OHI–GA–ANN, OHI–SQO–ANN, OHI–MOO–ANN, OHI–GA–KMC, OHI–SQO–KMC and OHI–MOO–KMC). Findings Optimum prediction models performance are recorded and compared with the actual value. Finally, based on error term values best optimum prediction model is proposed for evaluation of RUL of REBs. Originality/value Proposed OHI–GA–KMC model is compared in terms of error values with previously published work. RUL predicted by OHI–GA–KMC model is smaller, giving the advantage of this method.
基于优化健康指标和机器学习算法的滚动轴承剩余使用寿命优化预测模型
目的滚动轴承(REBs)通常用于旋转机械,如泵、电机、风扇和其他机械。REB在整个生命周期内恶化。为了了解任何时候的恶化程度,本文旨在提出一种基于优化健康指标(OHI)和机器学习算法的预测方法。设计/方法/方法建议的最佳预测模型将用于评估REB的剩余使用寿命(RUL)。首先,通过母小波变换对信号原始数据进行预处理;然后提取出主要故障特征。此外,使用随机森林算法对这些特征进行处理以提高特征的清晰度。基于特征重要性的变化,选择故障特征的最佳表示。使用遗传算法(GA)、序列二次优化(SQO)和多目标优化(MOO)等优化技术,通过调整权重向量来优化所选特征。确定了新的OHI,并将其应用于培训网络。最后,通过集成OHI和人工神经网络(ANN)、K-均值聚类(KMC)(即OHI–GA–ANN、OHI–SQO–ANN,OHI–MOO–ANN、OHI–GA–KMC、OHI-SQO–KMC和OHI–MOO–KMC)来开发最优预测模型。记录最优预测模型的性能并与实际值进行比较。最后,基于误差项值,提出了用于评估REBs的RUL的最佳预测模型。Originality/value将所提出的OHI–GA–KMC模型在误差值方面与先前发表的工作进行了比较。OHI–GA–KMC模型预测的RUL较小,具有该方法的优点。
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来源期刊
World Journal of Engineering
World Journal of Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
4.20
自引率
10.50%
发文量
78
期刊介绍: The main focus of the World Journal of Engineering (WJE) is on, but not limited to; Civil Engineering, Material and Mechanical Engineering, Electrical and Electronic Engineering, Geotechnical and Mining Engineering, Nanoengineering and Nanoscience The journal bridges the gap between materials science and materials engineering, and between nano-engineering and nano-science. A distinguished editorial board assists the Editor-in-Chief, Professor Sun. All papers undergo a double-blind peer review process. For a full list of the journal''s esteemed review board, please see below.
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