Machine remaining useful life prediction method based on global-local attention compensation network

IF 9.4 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Reliability Engineering & System Safety Pub Date : 2024-11-14 DOI:10.1016/j.ress.2024.110652
Zhixiang Chen
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Abstract

Accurate remaining useful life (RUL) prediction is essential for ensuring the safe operation of machinery. The extraction of high-level features that contain both global dependencies and local refinements can effectively improve the accuracy of RUL predictions. In order to extract high-level features, this paper proposes a global-local attention compensation network (GLACN) for RUL prediction. The proposed network integrates a global interaction-feature (GIF) mechanism, a long short-term memory network (LSTM), and a local attention enhanced residual compensation (LAERC) mechanism. Initially, the GIF mechanism is used to processed selected signals from multiple sensors to facilitate global information interaction and allocate channel attention weights. Subsequently, the LSTM is employed to extract global temporal features and establish long-term dependencies among them. Finally, the global temporal features extracted by LSTM are further refined by LAERC to mine local features. To address the potential weakening of long-term dependencies during feature refinement, the global temporal features from the last hidden layer of LSTM are utilized as compensation, concatenated with refined features to generate final features. The effectiveness of the designed model for RUL prediction is tested by two benchmark datasets. The results illustrate that the prediction performance of the GLACN outperforms some of some state-of-the-art (SOTA) methods.
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基于全局-局部注意力补偿网络的机器剩余使用寿命预测方法
准确的剩余使用寿命(RUL)预测是保证机械安全运行的必要条件。对包含全局依赖和局部细化的高级特征的提取可以有效地提高RUL预测的准确性。为了提取高级特征,本文提出了一种用于RUL预测的全局-局部注意补偿网络(GLACN)。该网络集成了全局交互特征(GIF)机制、长短期记忆网络(LSTM)和局部注意增强剩余补偿(LAERC)机制。首先,利用GIF机制对来自多个传感器的选定信号进行处理,以促进全局信息交互和分配通道关注权。然后,利用LSTM提取全局时间特征并建立它们之间的长期依赖关系。最后,LSTM提取的全局时间特征通过LAERC进一步细化,挖掘局部特征。为了解决特征精化过程中可能弱化长期依赖关系的问题,利用LSTM最后一层隐藏层的全局时态特征作为补偿,与精化特征连接生成最终特征。通过两个基准数据集验证了所设计模型在RUL预测中的有效性。结果表明,GLACN的预测性能优于一些最先进的(SOTA)方法。
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来源期刊
Reliability Engineering & System Safety
Reliability Engineering & System Safety 管理科学-工程:工业
CiteScore
15.20
自引率
39.50%
发文量
621
审稿时长
67 days
期刊介绍: Elsevier publishes Reliability Engineering & System Safety in association with the European Safety and Reliability Association and the Safety Engineering and Risk Analysis Division. The international journal is devoted to developing and applying methods to enhance the safety and reliability of complex technological systems, like nuclear power plants, chemical plants, hazardous waste facilities, space systems, offshore and maritime systems, transportation systems, constructed infrastructure, and manufacturing plants. The journal normally publishes only articles that involve the analysis of substantive problems related to the reliability of complex systems or present techniques and/or theoretical results that have a discernable relationship to the solution of such problems. An important aim is to balance academic material and practical applications.
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