刀具状态监测的多特征空间分布对齐增强域自适应方法

Zhendong Hei, Bintao Sun, Gaonghai Wang, Yongjian Lou, Yuqing Zhou
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引用次数: 0

摘要

迁移学习(TL)已成功地应用于工具状态监测(TCM)中,以解决实际工业场景中标记数据的缺乏问题。在目前的TL模型中,输入特征和输出标签联合分布中的域偏移在两个域的特征分布对齐后仍然存在,导致性能下降。提出了一种多特征空间分布对齐(MSDA)方法,包括深度域自适应相关对齐(deep CORAL)和联合最大平均差对齐(JMMD)。利用Deep CORAL学习非线性变换,通过二阶统计相关性在特征级对源域和目标域进行对齐。利用JMMD对输入特征和输出标签的联合分布进行对齐,从而改善域对齐。结合双向短期记忆网络和注意机制开发了ResNet18来提取不变性特征。采用四种传递任务进行了中医实验,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-feature spatial distribution alignment enhanced domain adaptive method for tool condition monitoring
Transfer learning (TL) has been successfully implemented in tool condition monitoring (TCM) to address the lack of labeled data in real industrial scenarios. In current TL models, the domain offset in the joint distribution of input feature and output label still exists after the feature distribution of the two domains is aligned, resulting in performance degradation. A multiple feature spatial distribution alignment (MSDA) method is proposed, Including Correlation alignment for deep domain adaptation (Deep CORAL) and Joint maximum mean difference (JMMD). Deep CORAL is employed to learn nonlinear transformations, align source and target domains at the feature level through the second-order statistical correlations. JMMD is applied to improve domain alignment by aligning the joint distribution of input features and output labels. ResNet18 combining with bidirectional short-term memory network and attention mechanism is developed to extract the invariant features. TCM experiments with four transfer tasks were conducted and demonstrated the effectiveness of the proposed method.
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