Spatial correlation and temporal attention-based LSTM for remaining useful life prediction of turbofan engine

IF 5.6 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Huixin Tian, Linzheng Yang, Bingtian Ju
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引用次数: 7

Abstract

Remaining useful life (RUL) prediction has always been a core task of prognostics and health management technology, which is crucial to the reliable and safe operation of mechanical equipment. In recent years, data-driven methods have played an increasingly important role in RUL prediction. However, most methods have no effective mechanism to measure the importance of different variables at different times, and lack information extraction in the temporal dimension, which seriously affects the prediction accuracy of RUL. To solve the negative impact of these problems, this paper proposes a long short-term memory framework based on spatial correlation and temporal attention mechanism (SCTA-LSTM). Firstly, spatial correlation attention fully considers the relationship between variables, and adaptively measures the importance of different variables in input data at different times. Then, temporal attention enhances further the information extraction ability of LSTM in the temporal dimension, and finally, the fully connected network is used to predict RUL. To verify the effectiveness of the proposed SCTA-LSTM, two different turbofan engine simulation datasets from the Prognostics Center of Excellence at NASA Ams Research Center are used for modeling and testing. The experimental results show that this method outperforms other existing methods.

基于空间相关和时间关注的LSTM发动机剩余使用寿命预测
剩余使用寿命预测一直是预测和健康管理技术的核心任务,对机械设备的可靠安全运行至关重要。近年来,数据驱动方法在RUL预测中发挥着越来越重要的作用。然而,大多数方法没有有效的机制来衡量不同变量在不同时间的重要性,并且缺乏时间维度的信息提取,这严重影响了RUL的预测精度。为了解决这些问题的负面影响,本文提出了一种基于空间相关性和时间注意机制的长短期记忆框架(SCTA-LSTM)。首先,空间相关性注意充分考虑了变量之间的关系,并自适应地测量不同时间输入数据中不同变量的重要性。然后,时间注意力进一步增强了LSTM在时间维度上的信息提取能力,最后,使用全连接网络来预测RUL。为了验证所提出的SCTA-LSTM的有效性,来自NASA Ams研究中心预测卓越中心的两个不同的涡扇发动机模拟数据集被用于建模和测试。实验结果表明,该方法优于现有的其他方法。
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来源期刊
Measurement
Measurement 工程技术-工程:综合
CiteScore
10.20
自引率
12.50%
发文量
1589
审稿时长
12.1 months
期刊介绍: Contributions are invited on novel achievements in all fields of measurement and instrumentation science and technology. Authors are encouraged to submit novel material, whose ultimate goal is an advancement in the state of the art of: measurement and metrology fundamentals, sensors, measurement instruments, measurement and estimation techniques, measurement data processing and fusion algorithms, evaluation procedures and methodologies for plants and industrial processes, performance analysis of systems, processes and algorithms, mathematical models for measurement-oriented purposes, distributed measurement systems in a connected world.
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