基于噪声激励生成对抗网络的多足机器人执行器故障诊断

Liling Ma, Jian Guo, Jiehao Li, Junzheng Wang
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引用次数: 2

摘要

该研究为多足机器人执行器故障检测提供了一种新的方法。其中最重要的概念是设计故障诊断生成对抗网络(FD-GAN),以充分适应数据不足的故障诊断问题。我们发现,如果没有足够的数据,基于分类和预测的方法很难学习故障模式。一个直接的解决方案是使用大量的正常数据来驱动诊断模型。我们引入频域信息并融合多传感器数据来增加特征,扩大正常数据和故障数据之间的差异。设计了一个基于gan的框架来计算增强数据属于正常类别的概率。该方法采用生成器网络作为特征提取器,采用判别器网络作为故障概率评估器,开创了GAN在故障诊断领域的新应用。在GAN的众多学习策略中,我们发现能够区分这两类数据的关键是使用具有适当判别的隐层噪声作为激励。我们还设计了一种基于二叉搜索的故障定位方法,大大提高了整个方法的搜索效率和工程价值。我们进行了大量的实验来证明我们的架构在各种路况和工作模式下的诊断有效性。我们将FD-GAN与常用的诊断方法进行了比较。结果表明,该方法具有较高的准确率和召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Noise-Excitation Generative Adversarial Network for Actuator Fault Diagnosis of Multi-legged Robot
This research provides a novel approach for detecting multi-legged robot actuator faults. The most significant concept is to design the Fault Diagnosis Generative Adversarial Network (FD-GAN) to fully adapt to the fault diagnosis problem with insufficient data. We found that it is difficult for methods based on classification and prediction to learn failure patterns without enough data. A straightforward solution is to use massive amounts of normal data to drive the diagnostic model. We introduce frequency-domain information and fuse multi-sensor data to increase the features and expand the difference between normal data and fault data. A GAN-based framework is designed to calculate the probability that the enhanced data belongs to the normal category. It uses a generator network as a feature extractor, and uses a discriminator network as a fault probability evaluator, which creates a new use of GAN in the field of fault diagnosis. Among the many learning strategies of GAN, we find that a key point that can distinguish the two types of data is to use the hidden layer noise with appropriate discrimination as the excitation. We also design a fault location method based on binary search, which greatly improves the search efficiency and engineering value of the entire method. We have conducted a lot of experiments to prove the diagnostic effectiveness of our architecture in various road conditions and working modes. We compared FD-GAN with popular diagnostic methods. The results show that our method has the highest accuracy and recall rate.
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