摘要
针对电机驱动系统故障难以捕捉、特征精细刻画难和诊断准确性差等重难点问题,提出了一种融合堆叠降噪自编码器和前馈神经网络(stacked denoising autoencoder-feedforward neural network, SDAE-FFNN)模型。模拟仿真三相逆变器开路故障的不同类型;提取永磁同步电机输出的三相定子电流作为故障特征提取的对象;融合多种频域特征提取方法提取非线性特征并整合形成高维数据集;采用SDAE-FFNN模型实现对三相逆变器开路故障识别;对比传统深度网络模型,验证算法可行性。实验结果表明,SDAE-FFNN模型完成了有效故障分类识别,平均识别准确率高达98.8021%,优于传统深度学习方法。
As the power source of electric vehicles,the safety of the motor drive system is the key factor affecting the reliability and safety of the vehicle,and it is also one of the key technologies restricting the development of electric vehicles.Motor drive system is an electromechanical coupling system,and its fault occurrence mechanism involves many factors,so the fault diagnosis of motor is more complicated than that of other equipment.Stacked Denoising Autoencoder-Feedforward Neural Network(SDAE-FFNN)model was proposed to solve the problems of the motor drive system,such as difficulty in capturing fault signals,difficulty in precise feature characterization and poor fault diagnosis accuracy.Based on the simple structure and high efficiency of feedforward neural network,the last layer network of stack noise reduction autoencoder is replaced by feedforward neural network,which reduces the scale of neural network and improves the efficiency of the model.Additionally,this method makes full use of the relationship between the deep features of nonlinear empirical features and improves the accuracy of model fault diagnosis and recognition.Specifically,firstly,this paper simulates different types of open-circuit faults of three-phase inverter,and extracts three-phase stator current output of permanent magnet synchronous motor as the fault research object.Secondly,due to the high reliability design principle of the inverter,the fault data is distributed in a long-tail and the number of fault features is insufficient.Thus,multi-feature fusion methods,such as fast Fourier transform,short-time Fourier transform,Gabor transform,wavelet transform,empirical mode decomposition and linear regular transform,are used to integrate and form high-dimensional fault feature data sets.Then,the input signal with noise is reconstructed through the SDAE-FFNN model,which makes the model have good robustness and makes the deep features have the ability to prevent overfitting.Finally,the proposed model method is used to identify the open circuit fault of the three-phase inverter of the permanent magnet synchronous motor drive system.In order to verify the effectiveness of the proposed method,the paper compares the fault diagnosis with the single feature extraction method and the traditional deep network algorithm,and verifies the superiority of the proposed method.The experimental results show that the fault recognition rate of single feature extraction method is much lower than that of multi-feature extraction fusion method.At the same time,the method presented in this paper can effectively complete the fault classification identification,and the average recognition accuracy is as high as 98.8021%,which is better than the traditional deep learning method.
作者
冯莉
罗洪林
许水清
FENG Li;LUO Honglin;XU Shuiqing(College of Traffic&Transportation,Chongqing Jiaotong University,Chongqing 400074,China;School of Electrical Engineering and Automation,Heifei University of Technology,Hefei 230009,China)
出处
《重庆理工大学学报(自然科学)》
北大核心
2023年第8期99-108,共10页
Journal of Chongqing University of Technology:Natural Science
基金
国家重点研发计划课题(2020YFB2009405)
工业控制技术国家重点实验室开放课题(ICT2022B08)
重庆交通大学研究生科研创新项目(2022S0032)。
关键词
永磁同步电机
三相逆变器
堆叠降噪自编码器
前馈神经网络
故障诊断
permanent magnet synchronous motor
three-phase inverter
stacked denoising autoencoder
feedforward neural network
fault diagnosis