[1]刘宗宇,廖雪超.基于特征融合的机械核心部件剩余寿命预测[J].计算机技术与发展,2025,(03):165-171.[doi:10.20165/j.cnki.ISSN1673-629X.2024.0350]
 LIU Zong-yu,LIAO Xue-chao.RUL Prediction of Mechanical Core Components Based on Feature Fusion[J].,2025,(03):165-171.[doi:10.20165/j.cnki.ISSN1673-629X.2024.0350]
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基于特征融合的机械核心部件剩余寿命预测()

《计算机技术与发展》[ISSN:1006-6977/CN:61-1281/TN]

卷:
期数:
2025年03期
页码:
165-171
栏目:
新型计算应用系统
出版日期:
2025-03-10

文章信息/Info

Title:
RUL Prediction of Mechanical Core Components Based on Feature Fusion
文章编号:
1673-629X(2025)03-0165-07
作者:
刘宗宇12廖雪超12
1. 武汉科技大学 计算机科学与技术学院,湖北 武汉 430065;
2. 智能信息处理与实时工业系统湖北省重点实验室,湖北 武汉 430065
Author(s):
LIU Zong-yu12LIAO Xue-chao12
1. School of Computer Science and Technology,Wuhan University of Science and Technology,Wuhan 430065,China;
2. Hubei Province Key Laboratory of Intelligent Information Processing and Real-time Industrial System,Wuhan 430065,China
关键词:
预测性维护剩余寿命预测特征提取特征融合深度学习自注意力机制
Keywords:
predictive maintenanceRULfeature extractionfeature fusiondeep learningself-attention mechanism
分类号:
TP390
DOI:
10.20165/j.cnki.ISSN1673-629X.2024.0350
摘要:
工程机械设备的预测性维护能确保设备高效运行和维护计划的合理安排,其关键在于准确预测设备系统或核心部件的剩余寿命。 针对工程机械设备预测性维护中的特征提取和预测精度难题,该文提出了基于特征融合的 Informer 机械设备核心部件剩余寿命预测框架。 首先,采用按寿命比例的训练样本构造方法优化数据利用率,采用巴特沃斯高通滤波器和小波降噪对原始数据进行滤波和降噪,并对原始数据进行特征扩展来提取关键特征,使用 XGBoost 算法进行特征选择。 然后,按设备类型将特征选择后的数据分类,设计了基于 Informer 的机械核心部件剩余寿命预测模型进行分类训练。使用公开数据集对模型进行验证,与其他预测模型的预测结果进行比较,验证了基于特征融合的 Informer 预测模型能够实现最准确的预测。
Abstract:
Predictive maintenance of engineering machinery equipment can ensure the efficient operation of the equipment and the rational arrangement of maintenance plans,with the key lying in accurately predicting the RUL of equipment systems or core components. To address the challenges of feature extraction and prediction accuracy in predictive maintenance of engineering machinery equipment,we propose an Informer- based framework for the prediction of the RUL of core components of mechanical equipment based on feature fusion. Firstly,an optimized data utilization method is adopted to construct training samples according to the proportion of life. Bartlett high-pass filter and wavelet denoising are used to filter and denoise the raw data,and feature extension is performed to extract key features from the raw data. The XGBoost algorithm is used for feature selection. Then,the selected data is classified by equipment type,and an Informer-based predictive model for the RUL of mechanical core components is designed for classification training. The model is validated using public datasets,demonstrating that the Informer predictive model based on feature fusion achieves the highest prediction accuracy compared to other models.

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[1]骆正山,杜丹*.油田注水管道内腐蚀剩余寿命预测研究[J].计算机技术与发展,2024,34(12):179.[doi:10.20165/j.cnki.ISSN1673-629X.2024.0278]
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更新日期/Last Update: 2025-03-10