A Hybrid Deep Learning Framework for Fault Diagnosis in Milling Machines.

IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL
Sensors Pub Date : 2025-09-19 DOI:10.3390/s25185866
Muhammad Farooq Siddique, Wasim Zaman, Muhammad Umar, Jae-Young Kim, Jong-Myon Kim
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引用次数: 0

Abstract

This paper presents a hybrid fault-diagnosis framework for milling cutting tools designed to address three persistent challenges in industrial monitoring: noisy vibration signals, limited fault labels, and variability across operating conditions. The framework begins by removing baseline drift from raw signals to improve the signal-to-noise ratio. Logarithmic continuous wavelet scalograms are then constructed to provide precise time-frequency localization and reveal fault-related harmonics. To enhance feature clarity, a Canny edge operator is applied, suppressing minor artifacts and reducing intra-class variation so that key diagnostic structures are emphasized. Feature representation is obtained through a dual-branch encoder, where one pathway captures localized patterns while the other preserves long-range dependencies, resulting in compact and discriminative fault descriptors. These descriptors are integrated by an ensemble decision mechanism that assigns validation-guided weights to individual learners, ensuring reliable fault identification, improved robustness under noise, and stable performance across diverse operating conditions. Experimental validation on real-world cutting tool data demonstrates an accuracy of 99.78%, strong resilience to environmental noise, and consistent diagnostic performance under variable conditions. The framework remains lightweight, scalable, and readily deployable, providing a practical solution for high-precision tool fault diagnosis in data-constrained industrial environments.

铣床故障诊断的混合深度学习框架。
本文提出了一种铣削刀具混合故障诊断框架,旨在解决工业监测中的三个持续挑战:噪声振动信号、有限故障标签和操作条件的可变性。该框架首先消除原始信号的基线漂移,以提高信噪比。然后构建对数连续小波尺度图,以提供精确的时频定位并显示故障相关谐波。为了提高特征清晰度,应用了Canny边缘算子,抑制次要伪影并减少类内变化,从而强调关键的诊断结构。特征表示通过双分支编码器获得,其中一条路径捕获局部模式,而另一条路径保留远程依赖关系,从而产生紧凑和判别性的故障描述符。这些描述符由一个集成决策机制集成,该机制将验证引导的权重分配给单个学习器,确保可靠的故障识别,提高噪声下的鲁棒性,以及在不同操作条件下的稳定性能。对实际刀具数据的实验验证表明,该方法的准确率为99.78%,对环境噪声具有较强的恢复能力,并且在不同条件下具有一致的诊断性能。该框架保持轻量级、可扩展和易于部署,为数据受限的工业环境中的高精度工具故障诊断提供了实用的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Sensors
Sensors 工程技术-电化学
CiteScore
7.30
自引率
12.80%
发文量
8430
审稿时长
1.7 months
期刊介绍: Sensors (ISSN 1424-8220) provides an advanced forum for the science and technology of sensors and biosensors. It publishes reviews (including comprehensive reviews on the complete sensors products), regular research papers and short notes. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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