机械故障诊断中的开集识别

Jiawen Xu, Matthias Kovatsch, S. Lucia
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引用次数: 5

摘要

基于深度神经网络的人工智能任务已广泛应用于工业应用,如过程控制、质量检测或预测性维护。深度神经网络分类器尤其成功,因为它们为物体识别和故障诊断等许多应用提供了强大而可靠的算法。然而,大多数深度分类器应用程序无法识别超出其训练数据范围的类样本。未知类的样本(表示为开放集数据)导致性能显著下降,因为深度分类器的输出仅限于训练数据的已知类(表示为封闭集数据)。本文提出了一种在不改变神经网络结构、训练过程和训练模型的情况下识别开集样本的方法。该方法首先训练神经网络进行正常闭集故障诊断。然后利用局部离群因子在推理过程中比较测试样本和已知类样本的特征映射来识别开集样本。我们用两个公共数据集对我们的方法进行了评估,结果表明我们的方法在对开放数据集进行分类时可以将总体准确率提高40%。此外,我们还将我们的方法与最先进的开放集识别方法进行了故障诊断应用的比较,结果表明我们的方法可以获得更好的f1分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open Set Recognition for Machinery Fault Diagnosis
AI tasks based on deep neural networks have been widely applied in industrial applications, such as process control, quality inspection or predictive maintenance. Deep neural network classifiers are particularly successful, as they provide powerful and reliable algorithms for many applications such as object recognition and fault diagnosis. However, most deep classifier applications are not able to recognize class samples that are beyond the scope of their training data. Samples of unknown classes (denoted as open set data) lead to significant drops in performance, as the output of deep classifiers is limited to the known classes of the training data (denoted as closed set data). This paper presents a method to recognize open set samples without changing the neural network architecture, the training process, nor the trained models. In our method, we firstly train a neural network for normal closed set fault diagnosis. Then we compare the feature maps of testing samples and known class samples during inference using local outlier factor to recognize open set samples. We evaluate our method with two public datasets and show that our method can increase the overall accuracy by 40% when classifying open set data. Besides, we also compared our method to the state-of-the-art open set recognition approach for fault diagnosis applications and the results show that our method leads to better F1-scores.
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