Automatic Feature Extraction for Bearings' Degradation Assessment using Minimally Pre-processed Time series and Multi-modal Feature Learning

A. L. Alfeo, M. G. Cimino, G. Gagliardi
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引用次数: 1

Abstract

: Maintenance activities can be better planned by employing machine learning technologies to monitor an asset’s health conditions. However, the variety of observable measures (e.g. temperature, vibration) and behaviours characterizing the health degradation process results in time-consuming manual feature extraction to ensure accurate degradation stage recognitions. Indeed, approaches able to provide automatic feature extraction from multiple and heterogeneous sources are more and more required in the field of predictive maintenance. This is-sue can be addressed in a data-driven fashion by using feature learning technology, enabling the transformation of minimally processed time series into informative features. Given its capability of discovering meaningful patterns in data while enabling data fusion, many feature learning approaches are based on deep learning technology (e.g. autoencoders). In this work, an architecture based on autoencoders is used to automatically extract degradation-representative features from minimally preprocessed time series of vibration and temperature data. Different autoencoder architectures are implemented to compare different data fusion strategies. The proposed approach is tested considering both the recognition performances and the quality of the learned features with a publicly available real-world dataset about bearings’ progressive degradation. The proposed approach is also compared against manual feature extraction and the state-of-the-art technology in feature learning.
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基于最小预处理时间序列和多模态特征学习的轴承退化评估自动特征提取
通过采用机器学习技术监测资产的健康状况,可以更好地规划维护活动。然而,表征健康退化过程的各种可观察测度(如温度、振动)和行为导致需要耗时的手动特征提取,以确保准确识别退化阶段。事实上,在预测性维护领域,越来越需要能够从多个异构源中提供自动特征提取的方法。这个问题可以通过使用特征学习技术以数据驱动的方式解决,从而实现将最小处理时间序列转换为信息特征。鉴于其在数据融合中发现有意义模式的能力,许多特征学习方法都是基于深度学习技术(例如自编码器)。在这项工作中,基于自编码器的架构用于从最小预处理的振动和温度数据时间序列中自动提取退化代表性特征。实现了不同的自编码器架构来比较不同的数据融合策略。在一个公开可用的关于轴承逐步退化的真实数据集上,考虑了识别性能和学习特征的质量,对所提出的方法进行了测试。并将该方法与人工特征提取和最先进的特征学习技术进行了比较。
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