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Deep Transfer Learning-based Fault Diagnosis of Spacecraft Attitude System

机译:基于深度转移学习的航天器姿态系统故障诊断

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In recent years, an increasingly popularity of deep learning model for intelligent state monitoring, diagnosis and prediction of spacecraft has been observed. However, in the previous studies, a major assumption accepted by default is that source domain data and target domain data have same feature distribution. Unfortunately, this assumption is mostly invalid in real application. Considering the problem that the original fault data sample is small, the noise is high and the fault signal is unlabeled, in this paper, we propose deep transfer learning-based fault diagnosis method for spacecraft system in which a new fault diagnosis framework-deep transfer network(DTN) is built, and it can generalize deep learning model to domain adaptation scenario inspired by the idea of transfer learning. In order to improve the accuracy of on-orbit spacecraft fault data detection, the proposed framework with joint distribution adaptation(JDA) is applied to exploit the distribution structure of unlabeled data in target domain by using the data with labels in source domain. By comparing with other methods, the deep transfer network based on joint distribution adaptation has better transfer performance in fault diagnosis of spacecraft.
机译:近年来,人们已经观察到用于智能状态监测,诊断和预测航天器的深度学习模型越来越受欢迎。但是,在先前的研究中,默认情况下接受的主要假设是源域数据和目标域数据具有相同的特征分布。不幸的是,这种假设在实际应用中几乎是无效的。考虑到原始故障数据样本少,噪声高,故障信号未标记等问题,本文提出了一种基于深度转移学习的航天器系统故障诊断方法,该方法采用了一种新的故障诊断框架-深度转移网络(DTN)已构建,它可以将深度学习模型推广到受迁移学习思想启发的领域适应方案中。为了提高在轨航天器故障数据检测的准确性,提出的联合分布自适应框架(JDA)被用于在源域中使用带有标签的数据来开发目标域中未标记数据的分布结构。与其他方法相比,基于联合分布自适应的深层传输网络在航天器故障诊断中具有更好的传输性能。

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