School of Information Science and Technology, Northwest University, Xi'an 710127, China.
The 7th Research Institute of Electronics Technology Group Corporation, Guangzhou 510310, China.
Sensors (Basel). 2022 Sep 6;22(18):6722. doi: 10.3390/s22186722.
The timely detection of equipment failure can effectively avoid industrial safety accidents. The existing equipment fault diagnosis methods based on single-mode signal not only have low accuracy, but also have the inherent risk of being misled by signal noise. In this paper, we reveal the possibility of using multi-modal monitoring data to improve the accuracy of equipment fault prediction. The main challenge of multi-modal data fusion is how to effectively fuse multi-modal data to improve the accuracy of fault prediction. We propose a multi-modal learning framework for fusion of low-quality monitoring data and high-quality monitoring data. In essence, low-quality monitoring data are used as a compensation for high-quality monitoring data. Firstly, the low-quality monitoring data is optimized, and then the features are extracted. At the same time, the high-quality monitoring data is dealt with by a low complexity convolutional neural network. Moreover, the robustness of the multi-modal learning algorithm is guaranteed by adding noise to the high-quality monitoring data. Finally, different dimensional features are projected into a common space to obtain accurate fault sample classification. Experimental results and performance analysis confirm the superiority of the proposed algorithm. Compared with the traditional feature concatenation method, the prediction accuracy of the proposed multi-modal learning algorithm can be improved by up to 7.42%.
及时检测设备故障可以有效避免工业安全事故。现有的基于单模态信号的设备故障诊断方法不仅准确性低,而且存在被信号噪声误导的固有风险。本文揭示了使用多模态监测数据提高设备故障预测准确性的可能性。多模态数据融合的主要挑战是如何有效地融合多模态数据以提高故障预测的准确性。我们提出了一种用于融合低质量监测数据和高质量监测数据的多模态学习框架。本质上,低质量监测数据可用作高质量监测数据的补偿。首先,优化低质量监测数据,然后提取特征。同时,通过低复杂度卷积神经网络处理高质量监测数据。此外,通过向高质量监测数据添加噪声来保证多模态学习算法的稳健性。最后,将不同维度的特征投影到公共空间中,以获得准确的故障样本分类。实验结果和性能分析证实了所提出算法的优越性。与传统的特征拼接方法相比,所提出的多模态学习算法的预测准确性可提高 7.42%。