Faculty of Printing, Packaging Engineering and Digital Media Technology, Xi'an University of Technology, Xi'an 710048, China.
School of Mechanical and Precision Instrument Engineering, Xi'an University of Technology, Xi'an 710048, China.
Sensors (Basel). 2022 Aug 31;22(17):6570. doi: 10.3390/s22176570.
With the continuous development of artificial intelligence, data-driven fault diagnosis methods are gradually attracting widespread attention. However, in practical industrial applications, noise in the working environment is inevitable. This leads to the fact that the performance of traditional intelligent diagnosis methods is hardly sufficient to satisfy the requirements. In this paper, a developed intelligent diagnosis framework is proposed to overcome this deficiency. The main contributions of this paper are as follows: Firstly, a fault diagnosis model is established using EfficientNet, which achieves optimal diagnosis performance with limited computing resources. Secondly, an attention mechanism is introduced into the basic model for accurately establishing the relationship between fault features and fault modes, while improving the diagnosis accuracy in complex noise environments. Finally, to explain the proposed method, the weights and features of the model are visualized, and further attempts are made to analyze the reasons for the high performance of the model. The comprehensive experiment results reveal the superiority of the proposed method in terms of accuracy and stability in comparison with other benchmark diagnosis approaches. The diagnostic accuracy under actual working conditions is 86.24%.
随着人工智能的不断发展,数据驱动的故障诊断方法逐渐引起广泛关注。然而,在实际工业应用中,工作环境中的噪声是不可避免的。这导致传统智能诊断方法的性能几乎无法满足要求。本文提出了一种先进的智能诊断框架来克服这一缺陷。本文的主要贡献如下:首先,使用 EfficientNet 建立了故障诊断模型,在有限的计算资源下实现了最优的诊断性能。其次,在基本模型中引入注意力机制,准确建立故障特征与故障模式之间的关系,同时提高了复杂噪声环境下的诊断精度。最后,为了说明所提出的方法,对模型的权重和特征进行了可视化,并进一步尝试分析模型高性能的原因。综合实验结果表明,与其他基准诊断方法相比,该方法在准确性和稳定性方面具有优越性。实际工作条件下的诊断准确率为 86.24%。