School of Electrical and Information Engineering, Anhui University of Science and Technology, Huainan 232001, China.
Guohua Energy Investment Co., Ltd., Beijing 100007, China.
Comput Intell Neurosci. 2022 Jul 16;2022:8355417. doi: 10.1155/2022/8355417. eCollection 2022.
Relying on expert diagnosis, it solves the problem of fan failure efficiency and meets the needs of automatic inspection and intelligent operation monitoring of fans. In order to make up for the deficiency of intelligent diagnosis of bearing fault based on vibration signal detection, signal transformation, and convolution neural network identification and improve the ability of intelligent diagnosis, this study designs a deep convolution neural network model and diagnosis algorithm with three pairs of convolution pooling layers and two full connection layers. The experimental verification of the proposed method is carried out based on the public data set, and the effects of three different signal transformation methods based on vibration signal through vibration gray map, short-time Fourier transform time-frequency map, and continuous wavelet transform time-frequency map on the accuracy of diagnosis model are compared and analyzed. A very accurate guarantee is received, close to 100%. The final experimental results demonstrate the effectiveness of the information on the accuracy of diagnostic testing and provide new ideas for the verification and testing of wind turbine wind energy. Compared with other machine learning algorithms, the real-time recognition of machine learning based on time-domain statistical features is lower than that of convolutional neural network methods. The effect of the scale of the trained model on the accuracy of the algorithm is discussed. A sample ratio of 50% and 70% was found to be appropriate.
依靠专家诊断,解决了风机失效率的问题,满足了风机自动检测和智能运行监测的需求。为了弥补基于振动信号检测、信号变换和卷积神经网络识别的轴承故障智能诊断的不足,提高智能诊断能力,本研究设计了一个具有三对卷积池化层和两个全连接层的深度卷积神经网络模型和诊断算法。基于公共数据集对所提出的方法进行了实验验证,并比较和分析了基于振动信号的三种不同信号变换方法(振动灰度图、短时傅里叶变换时频图和连续小波变换时频图)对诊断模型准确性的影响。收到了非常准确的保证,接近 100%。最终的实验结果证明了该方法在诊断测试准确性方面的有效性,并为风力涡轮机风能的验证和测试提供了新的思路。与其他机器学习算法相比,基于时域统计特征的机器学习的实时识别率低于卷积神经网络方法。讨论了训练模型的规模对算法精度的影响。发现样本比例为 50%和 70%是合适的。