Auxiliary-feature-embedded causality-inspired dynamic penalty networks for open-set domain generalization diagnosis scenario

IF 8 1区 工程技术 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Ning Jia , Weiguo Huang , Chuancang Ding , Yifan Huangfu , Juanjuan Shi , Zhongkui Zhu
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引用次数: 0

Abstract

Domain generalization techniques are often used to address the distribution differences between training and testing data. Existing studies are mostly based on the assumption that the label spaces of the training and testing data are consistent. However, as complex industrial equipment operates, unknown faults may emerge in the testing data. This scenario is referred to as open-set domain generalization (OSDG), where traditional domain generalization diagnosis models tend to fail. Therefore, an auxiliary-feature-embedded causality-inspired dynamic penalty network (ACDPN) is proposed for OSDG diagnosis. A label reconstruction strategy and a memory dynamic penalty term are designed to enhance the model’s sensitivity to low-probability unknown classes. The dynamic penalty helps balance the model’s learning of known classes with its attention to unknown classes. To enhance the model’s generalization performance for diagnosing known classes, a causal loss under causal intervention is constructed to extract domain-invariant causal features. Meanwhile, auxiliary features that can reflect the physical characteristics of the signals are extracted to jointly drive the classification predictions of the diagnosis model, enhancing the model’s decision-making ability. In the target domain decision stage, a dual-path optimal matching strategy and a multi-class similarity quantification strategy are incorporated to enhance the model’s diagnosis performance and quantitatively predict the categories of unknown faults, thereby increasing the practical engineering value of OSDG diagnosis. Comparative experiments, ablation studies, and model interpretability analysis experiments are conducted on two multi-domain datasets, and the results demonstrate the effectiveness and superiority of the proposed method in OSDG scenario.
领域泛化技术通常用于解决训练数据和测试数据之间的分布差异。现有的研究大多基于这样一个假设,即训练数据和测试数据的标签空间是一致的。然而,随着复杂工业设备的运行,测试数据中可能会出现未知故障。这种情况被称为开放集域泛化(OSDG),传统的域泛化诊断模型往往会失败。因此,我们提出了一种用于 OSDG 诊断的辅助特征嵌入式因果关系启发动态惩罚网络(ACDPN)。为了提高模型对低概率未知类别的灵敏度,设计了一种标签重构策略和一个内存动态惩罚项。动态惩罚有助于平衡模型对已知类别的学习和对未知类别的关注。为了提高模型诊断已知类别的泛化性能,我们构建了因果干预下的因果损失,以提取领域不变的因果特征。同时,提取能反映信号物理特征的辅助特征,共同驱动诊断模型的分类预测,增强模型的决策能力。在目标域决策阶段,结合双路径最优匹配策略和多类相似性量化策略,提高模型的诊断性能,定量预测未知故障的类别,从而提高 OSDG 诊断的工程实用价值。在两个多领域数据集上进行了对比实验、烧蚀研究和模型可解释性分析实验,结果证明了所提方法在 OSDG 场景中的有效性和优越性。
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来源期刊
Advanced Engineering Informatics
Advanced Engineering Informatics 工程技术-工程:综合
CiteScore
12.40
自引率
18.20%
发文量
292
审稿时长
45 days
期刊介绍: Advanced Engineering Informatics is an international Journal that solicits research papers with an emphasis on 'knowledge' and 'engineering applications'. The Journal seeks original papers that report progress in applying methods of engineering informatics. These papers should have engineering relevance and help provide a scientific base for more reliable, spontaneous, and creative engineering decision-making. Additionally, papers should demonstrate the science of supporting knowledge-intensive engineering tasks and validate the generality, power, and scalability of new methods through rigorous evaluation, preferably both qualitatively and quantitatively. Abstracting and indexing for Advanced Engineering Informatics include Science Citation Index Expanded, Scopus and INSPEC.
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