Yang Jian, Chu Hairong, Guo Lihong, Ge Xinhong
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun 130033, China.
School of Optoelectronics, University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2025 Mar 19;25(6):1924. doi: 10.3390/s25061924.
With the development of UAV technology, the composition of UAVs has become increasingly complex, interconnected, and tightly coupled. Fault features are characterized by weakness, nonlinearity, coupling, and uncertainty. A promising approach is the use of deep learning methods, which can effectively extract useful diagnostic information from weak, coupled, nonlinear data from inputs with background noise. However, due to the diversity of flight environments and missions, the distribution of the obtained sample data varies. The types of fault data and corresponding labels under different conditions are unknown, and it is time-consuming and expensive to label sample data. These challenges reduce the performance of traditional deep learning models in anomaly detection. To overcome these challenges, a novel weighted-transfer domain-adaptation network (WTDAN) method is introduced to realize the online anomaly detection and fault diagnosis of UAV electromagnetic-sensitive flight data. The method is based on unsupervised transfer learning, which can transfer the knowledge learnt from existing datasets to solve problems in the target domain. The method contains three novel multiscale modules: a feature extractor, used to extract multidimensional features from the input; a domain discriminator, used to improve the imbalance of the data distribution between the source domain and the target domain; and a label classifier, used to classify data categories for the target domain. Multilayer domain adaptation is used to reduce the distance between the source domain datasets and the target domain datasets distributions. The WTDAN assigns different weights to the source domain samples in order to weight the different contributions of source samples to solve the problem during the training process. The dataset adopts not only open datasets from the website but also test datasets from experiments to evaluate the transferability of the proposed WTDAN model. The experimental results show that, under the condition of fewer anomalous target data samples, the proposed method had a classification accuracy of up to 90%, which is higher than that of the other compared methods, and performed with superior transferability on the cross-domain datasets. The capability of fault diagnosis can provide a novel method for online anomaly detection and the prognostics and health management (PHM) of UAVs, which, in turn, would improve the reliability, repairability, and safety of UAV systems.
随着无人机技术的发展,无人机的组成日益复杂、相互连接且紧密耦合。故障特征具有微弱性、非线性、耦合性和不确定性。一种很有前景的方法是使用深度学习方法,该方法能够从带有背景噪声的输入中的微弱、耦合、非线性数据中有效提取有用的诊断信息。然而,由于飞行环境和任务的多样性,所获取的样本数据分布各异。不同条件下故障数据的类型及其相应标签未知,且对样本数据进行标注既耗时又昂贵。这些挑战降低了传统深度学习模型在异常检测中的性能。为克服这些挑战,引入了一种新颖的加权迁移域自适应网络(WTDAN)方法,以实现无人机电磁敏感飞行数据的在线异常检测和故障诊断。该方法基于无监督迁移学习,能够迁移从现有数据集学到的知识来解决目标域中的问题。该方法包含三个新颖的多尺度模块:一个特征提取器,用于从输入中提取多维特征;一个域判别器,用于改善源域和目标域之间数据分布的不平衡;以及一个标签分类器,用于对目标域的数据类别进行分类。采用多层域自适应来减小源域数据集和目标域数据集分布之间的距离。WTDAN为源域样本分配不同权重,以便对源样本的不同贡献进行加权,从而在训练过程中解决问题。数据集不仅采用来自网站的开放数据集,还采用来自实验的测试数据集,以评估所提出的WTDAN模型的可迁移性。实验结果表明,在异常目标数据样本较少的情况下,所提出的方法分类准确率高达90%,高于其他对比方法,并且在跨域数据集上具有卓越的可迁移性。故障诊断能力可为无人机的在线异常检测以及预测与健康管理(PHM)提供一种新颖方法,进而提高无人机系统的可靠性、可修复性和安全性。