带灵敏度惩罚的增强型元学习网络,用于跨域少量故障诊断

Hongkai Jiang, Mingzhe Mu, Wenxin Jiang, Yutong Dong, Zhenghong Wu
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引用次数: 0

摘要

大数据驱动的旋转机械智能诊断技术已得到广泛应用。但在实际应用中,故障数据有限,不同领域的故障类别也普遍不一致。这些都给开发稳健的智能诊断模型带来了挑战。为此,本文开发了一种具有灵敏度惩罚机制(EMLN-SP)的增强型元学习网络,用于在严重领域偏差的情况下进行少量故障诊断。首先,在元学习框架下引入了轻量级通道注意,建立了增强型特征编码器,提升了关键特征表达,便于在有限样本内提取通用诊断知识。其次,设计了一种边界增强损失计算方法,提高了对决策边界信息的关注度,以防止模型在少量样本的情况下陷入过拟合困境。最后,构建了灵敏度惩罚机制来调整优化方向,防止模型陷入局部最优,从而提高模型的泛化性能。三个不同域偏移的跨域诊断案例验证了 EMLN-SP 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。
An enhanced meta-learning network with sensitivity penalty for cross-domain few-shot fault diagnosis
Big data-driven rotating machine intelligent diagnostic technology has gained widespread applications. In practice, however, fault data are limited as well as inconsistencies in fault categories among different domains are widespread. These make developing robust intelligent diagnostic models a challenge. To this end, this paper develops an enhanced meta-learning network with a sensitivity penalization mechanism (EMLN-SP) for few-shot fault diagnosis in severe domain bias. First, lightweight channel attention is introduced to establish an enhanced feature encoder under meta-learning framework, which elevates the key feature expression to facilitate the extraction of generalized diagnostic knowledge within limited samples. Second, a boundary-enhanced loss calculation method is designed, which boosts the focus for decision boundary information to prevent the model from the overfitting dilemma in the case of few-shot. Finally, a sensitivity penalty mechanism is constructed to adjust the optimization direction, which prevents the model from falling into a local optimum, to boost the generalization of the model performance. The effectiveness of EMLN-SP is validated by three cross-domain diagnostic cases with diverse domain offsets.
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