弱监督:预见性维修调查

Antonio M. Martínez‐Heredia, Sebastián Ventura
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引用次数: 0

摘要

工业4.0中实现的维护进步产生了大量数据,需要为训练数据集提供完整、准确和精确的标签,以与相应的地面事实保持一致。这些标签作为早期异常检测的注释。提供来自弱标签的高质量注释,并在注释工作和准确性之间取得平衡是关键任务。因此,研究人员将注意力集中在弱监督学习方法上,这种方法在处理各种维护应用中以不完整、不精确和错误标签为特征的数据集方面显示出有效性。在本调查中,作者旨在通过对弱监督学习的预测性维护进行全面检查,对相关工作进行分类,以解决现有文献中的空白。此外,调查还讨论了挑战并确定了开放的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weak Supervision: A Survey on Predictive Maintenance
The maintenance advancements achieved in Industry 4.0 generate large amounts of data, necessitating complete, accurate, and precise labels for training datasets to align with corresponding ground truth. These labels serve as annotations for early anomaly detection. Delivering high‐quality annotations derived from weak labels and striking a balance between annotation efforts and accuracy are critical tasks. Consequently, researchers have focused their attention on Weakly Supervised Learning methods, which have shown effectiveness in handling datasets characterized by incomplete, imprecise, and erroneous labels across various maintenance applications. In this survey, the authors aim to address a gap in the existing literature by conducting a comprehensive examination of Weakly Supervised Learning for Predictive Maintenance, categorizing related works. Furthermore, the survey discusses challenges and identifies open research lines.
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