堆积
卷积(计算机科学)
分段
算法
计算机科学
功能(生物学)
编码器
方位(导航)
圆卷积
分段线性函数
数学
人工智能
数学分析
物理
傅里叶变换
核磁共振
人工神经网络
分数阶傅立叶变换
进化生物学
生物
操作系统
傅里叶分析
作者
Huashan Chi,Ying-Yu Wei,Bo Yuan,Qingchao Sun,Lianjie Shu
标识
DOI:10.1088/1361-6501/ad7e39
摘要
Abstract Accurately forecasting the remaining useful life (RUL) stands as a pivotal and formidable task within the realm of prognostics and health management. However, there is limited research that considers integrating early fault diagnosis during the bearing's lifecycle with the prediction of its RUL. In this article, a comprehensive bearing prognosis framework based on piecewise function stacking convolution auto-encoder and XGBoost algorithm is proposed. To achieve this, an unsupervised piecewise function-based deep stacked convolutional auto-encoder was designed to construct the HI of the bearing for reducing the dependency on prior knowledge and furnishing a dynamic foundation for predicting RUL. The 4σ criterion based on HI's increment was proposed for determining the FOT of the bearing's operational process. Subsequently, an XGBoost algorithm model was utilized to predict the RUL of faulty bearings. The efficacy of the bearing prognosis framework was validated by two real bearing test datasets. Results indicate the employed criterion of construct HI can flexibly adjust to various operational conditions and accurately pinpoint the bearing's FOT. Furthermore, the findings demonstrate the proposed bearing prognosis framework achieves superior performance compared with several conventional anomaly detection methods.
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