Advancing predictive maintenance: a deep learning approach to sensor and event-log data fusion

IF 1.6 4区 工程技术 Q3 INSTRUMENTS & INSTRUMENTATION
Zengkun Liu, Justine Hui
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Abstract

Purpose

This study aims to introduce an innovative approach to predictive maintenance by integrating time-series sensor data with event logs, leveraging the synergistic potential of deep learning models. The primary goal is to enhance the accuracy of equipment failure predictions, thereby minimizing operational downtime.

Design/methodology/approach

The methodology uses a dual-model architecture, combining the patch time series transformer (PatchTST) model for analyzing time-series sensor data and bidirectional encoder representations from transformers for processing textual event log data. Two distinct fusion strategies, namely, early and late fusion, are explored to integrate these data sources effectively. The early fusion approach merges data at the initial stages of processing, while late fusion combines model outputs toward the end. This research conducts thorough experiments using real-world data from wind turbines to validate the approach.

Findings

The results demonstrate a significant improvement in fault prediction accuracy, with early fusion strategies outperforming traditional methods by 2.6% to 16.9%. Late fusion strategies, while more stable, underscore the benefit of integrating diverse data types for predictive maintenance. The study provides empirical evidence of the superiority of the fusion-based methodology over singular data source approaches.

Originality/value

This research is distinguished by its novel fusion-based approach to predictive maintenance, marking a departure from conventional single-source data analysis methods. By incorporating both time-series sensor data and textual event logs, the study unveils a comprehensive and effective strategy for fault prediction, paving the way for future advancements in the field.

推进预测性维护:传感器和事件日志数据融合的深度学习方法
目的本研究旨在通过整合时间序列传感器数据和事件日志,利用深度学习模型的协同潜力,为预测性维护引入一种创新方法。该方法采用双模型架构,将用于分析时间序列传感器数据的补丁时间序列变压器(PatchTST)模型与用于处理文本事件日志数据的变压器双向编码器表示相结合。为了有效整合这些数据源,我们探索了两种不同的融合策略,即早期融合和后期融合。早期融合方法在处理的初始阶段合并数据,而后期融合则在处理结束时合并模型输出。研究结果表明,早期融合策略显著提高了故障预测准确率,比传统方法高出 2.6% 到 16.9%。后期融合策略虽然更加稳定,但强调了整合不同数据类型进行预测性维护的好处。该研究提供了基于融合的方法优于单一数据源方法的实证证据。 原创性/价值这项研究以其基于融合的预测性维护新方法而与众不同,标志着与传统单一数据源分析方法的不同。通过将时间序列传感器数据和文本事件日志相结合,该研究揭示了一种全面而有效的故障预测策略,为该领域未来的发展铺平了道路。
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来源期刊
Sensor Review
Sensor Review 工程技术-仪器仪表
CiteScore
3.40
自引率
6.20%
发文量
50
审稿时长
3.7 months
期刊介绍: Sensor Review publishes peer reviewed state-of-the-art articles and specially commissioned technology reviews. Each issue of this multidisciplinary journal includes high quality original content covering all aspects of sensors and their applications, and reflecting the most interesting and strategically important research and development activities from around the world. Because of this, readers can stay at the very forefront of high technology sensor developments. Emphasis is placed on detailed independent regular and review articles identifying the full range of sensors currently available for specific applications, as well as highlighting those areas of technology showing great potential for the future. The journal encourages authors to consider the practical and social implications of their articles. All articles undergo a rigorous double-blind peer review process which involves an initial assessment of suitability of an article for the journal followed by sending it to, at least two reviewers in the field if deemed suitable. Sensor Review’s coverage includes, but is not restricted to: Mechanical sensors – position, displacement, proximity, velocity, acceleration, vibration, force, torque, pressure, and flow sensors Electric and magnetic sensors – resistance, inductive, capacitive, piezoelectric, eddy-current, electromagnetic, photoelectric, and thermoelectric sensors Temperature sensors, infrared sensors, humidity sensors Optical, electro-optical and fibre-optic sensors and systems, photonic sensors Biosensors, wearable and implantable sensors and systems, immunosensors Gas and chemical sensors and systems, polymer sensors Acoustic and ultrasonic sensors Haptic sensors and devices Smart and intelligent sensors and systems Nanosensors, NEMS, MEMS, and BioMEMS Quantum sensors Sensor systems: sensor data fusion, signals, processing and interfacing, signal conditioning.
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