1. 五邑大学应急技术与管理学院,江门,529020
2. 五邑大学机械与自动化工程学院,江门,529020
3. 伍伦贡大学机械、材料、机电与生物医学工程学院,伍伦贡,2522
4. 五邑大学电子与信息工程学院,江门,529020
纸质出版:2026
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王宏民, 覃才, 林蔚, 等. 基于深度学习及声电信号跨模态融合的电弧增材制造异常检测方法[J]. 航空制造技术, 2026,69(6).
WANG Hongmin, QIN Cai, LIN Wei, et al. Anomaly Detection Method for Wire Arc Additive Manufacturing Based on Deep Learning and Cross-Modal Fusion of Acoustic and Electrical Signals[J]. Aeronautical Manufacturing Technology, 2026, 69(6).
王宏民, 覃才, 林蔚, 等. 基于深度学习及声电信号跨模态融合的电弧增材制造异常检测方法[J]. 航空制造技术, 2026,69(6). DOI: 10.16080/j.issn1671-833x.25010135.
WANG Hongmin, QIN Cai, LIN Wei, et al. Anomaly Detection Method for Wire Arc Additive Manufacturing Based on Deep Learning and Cross-Modal Fusion of Acoustic and Electrical Signals[J]. Aeronautical Manufacturing Technology, 2026, 69(6). DOI: 10.16080/j.issn1671-833x.25010135.
电弧增材制造(Wire arc additive manufacturing,WAAM)具有快速成形与适于轻量化设计的优点,在航天器关键零件制造上具有巨大潜力。针对WAAM 在生产过程中可能产生各种缺陷的问题,对WAAM 过程异常检测进行研究,提出了一种改进残差深度时序卷积网络(Improved residual deep temporal convolutional network,IRDTCN)结合基于残差增强的轻量注意力机制(Residual-enhanced lightweight attention,RELA)模块的声电信号跨模态融合无监督异常检测方法。由于WAAM 工作条件复杂,单一信号源的检测能力较为有限,因此采用基于跨模态关系分析的声电信号小波特征融合方法,结合IRD-TCN 与RELA 分析两种传感数据之间的关联变化,实现理想的检测效果。最终试验所得出的精确率、召回率、F1-score 分别达到了98.37%、97.73% 和98.10%,解决了传统数据融合 方式在WAAM 过程异常识别中准确性与鲁棒性不足的问题。
Wire arc additive manufacturing (WAAM) offers advantages such as rapid fabrication and compatibility with lightweight structural design
and thus exhibits great potential for manufacturing critical aerospace components. To address the various defects that may arise during the WAAM process
an unsupervised cross-modal anomaly detection method is introduced
integrating an improved residual deep temporal convolutional network (IRD-TCN) with a residualenhanced lightweight attention (RELA) module for the fusion of acoustic and electrical signals. Owing to the complexity of WAAM operating conditions
the detection capability of a single sensing modality is limited. Therefore
wavelet-based features from acoustic signals are fused with electrical signal features through cross-modal relational analysis
enabling IRD-TCN and RELA to identify changes in the correlation between the two sensing signals and achieve high-quality detection. Experimental results indicate that the proposed approach attains a precision of 98.37%
a recall of 97.73%
and an F1-score of 98.10%
effectively addressing the limitations of traditional data-fusion methods in terms of accuracy and robustness for anomaly identification in WAAM processes.
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