基于深度迁移学习的多源异构数据融合及其在工具磨损监测中的应用

Jihong Yan, Xiaofeng Wang, Ahad Ali
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引用次数: 2

摘要

刀具磨损监测是智能维修的重要组成部分,已引起人们的广泛关注。然而,传统的数据驱动方法假设收集的数据与训练数据具有相同的分布,这在实践中是不现实的。提出了一种基于深度迁移学习的工具磨损监测框架。基于深度学习的特征自提取和选择能力,对采集到的多源异构信号进行融合。特别是,通过集成传统的特征提取方法,提高了卷积神经网络(CNN)对结构化数据的特征提取能力。在此基础上,引入迁移学习技术,将预训练好的模型从源域迁移到目标域,从而实现跨场景的刀具磨损监测。将该框架应用于刀具的连续切削过程,实验结果证明了深度迁移学习网络在少量标记数据下进行刀具磨损监测的有效性,验证了该框架的实用性。
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Deep Transfer Learning Based Multi-source Heterogeneous data Fusion with Application to Cross-scenario Tool Wear monitoring
Tool wear monitoring is the key part of intelligent maintenance and has been attracting considerable interest. However, traditional data-driven methods assume that the collected data following identical distribution and the training data is sufficient, which is impractical in practice. This paper proposed a novel framework to realize tool wear monitoring across scenarios based on deep transfer learning. The collected multi-source heterogeneous signal is fused based on the feature self-extraction and selection capabilities of deep learning. Particularly, the feature extraction capability of convolutional neural networks (CNN) for structured data is improved by integrating traditional feature extraction methods. Furthermore, the transfer learning technique is introduced to migrate the pre-trained model from the source domain to the target domain, and thus achieving the tool wear monitoring across scenarios. The proposed framework was applied to the continuous cutting process of tools and the excellent experimental results demonstrated the effectiveness of the deep transfer learning network for tool wear monitoring with a small number of labeled data, which demonstrates the practicality of the proposed framework.
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