作者
Anil Kumar, Govind Vashishtha, CP Gandhi, Yuqing Zhou, Adam Glowacz, Jiawei Xiang
发表日期
2021/2/1
期刊
IEEE Transactions on Instrumentation and Measurement
卷号
70
页码范围
1-10
出版商
IEEE
简介
This work presents the development of novel convolutional neural network (NCNN) for effective identification of bearing defects from small samples. For effective feature learning from small training data, cost function of convolution neural network (CNN) is modified by adding additional sparsity cost in the existing cost function. A novel trigonometric cross-entropy function is developed to compute the sparsity cost. The proposed cost function introduces sparsity by avoiding unnecessary activation of neurons in the hidden layers of CNN. For identification of bearing defects from small training samples, NCNN-based transfer learning is applied in the following manner. First, the raw vibration signals as well as envelope signals from source domain machine are obtained. Thereafter, these envelope signals are applied to NCNN for the learning of features from the big training data acquitted from the source domain. After …
引用总数
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A Kumar, G Vashishtha, CP Gandhi, Y Zhou… - IEEE Transactions on Instrumentation and …, 2021