基于多尺度特征提取的多步骤损失元学习方法,用于少发故障诊断

Zhenheng Xu, Zhong Liu, Bing Tian, Q. Lv, Hu Liu
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摘要

现有的深度学习(DL)算法基于大量训练数据,在处理少量故障诊断时,它们在有效提取故障特征方面面临挑战。模型无关元学习(MAML)也面临着一些挑战,包括单卷积核的基本卷积神经网络(CNN)全面提取故障特征的能力有限,以及内外双层循环导致的模型训练不稳定性。针对这些问题,本文提出了一种基于多尺度特征提取(MFEML)的多步骤损失元学习方法。首先,设计了改进的多尺度特征提取模块(IMFEM),以解决 CNN 特征提取能力不足的问题。其次,利用多步损失重构元损失,解决了 MAML 训练不稳定的问题。最后,两个数据集的实验结果证明了 MFEML 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。
A multi-step loss meta-learning method based on multi-scale feature extraction for few-shot fault diagnosis
Existing deep learning (DL) algorithms are based on a large amount of training data and they face challenges in effectively extracting fault features when dealing with few-shot fault diagnoses. Model-agnostic meta-learning (MAML) also faces some challenges, including the limited capability of the basic convolutional neural network (CNN) with a single convolutional kernel to extract fault features comprehensively, as well as the instability of model training due to the inner and outer double-layer loops. To address these issues, this paper presents a multi-step loss meta-learning method based on multi-scale feature extraction (MFEML). Firstly, an improved multi-scale feature extraction module (IMFEM) is designed to solve the problem of the insufficient feature extraction capability of the CNN. Secondly, the multi-step loss is used to reconstruct the meta-loss to address the issue of MAML training instability. Finally, the experimental results of two datasets demonstrate the effectiveness of the MFEML.
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