2020
DOI: 10.1109/access.2020.3034281
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Bearing Fault Diagnosis Based on Natural Adaptive Moment Estimation Algorithm and Improved Octave Convolution

Abstract: Fault diagnosis of rolling bearing has been the focus of research. Bearing signals are often accompanied by similar information, resulting in redundancy between data. Moreover, rolling bearing is often used in situations with large background noise, so extracting the characteristic value of rolling bearing signal and removing noise from the signal are of great significance. This paper presents a fault diagnosis model combining NAdam(Natural Adaptive Moment Estimation) algorithm and improved octave convolution.… Show more

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Cited by 4 publications
(2 citation statements)
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“…The review text vectorization of the model is acquired by the Word Embedding Tool [46], which maps lexical information into the semantic space and finally obtains a word vector model. Adaptive Moment Estimation [47] is used to optimize the training optimizer of the model, which is an optimizer based on a random gradient with adaptive features. In the experiment, 15 epochs were trained, each epoch was divided into 500 batches and each batch processed 128 batch sizes.…”
Section: Experimental Settingsmentioning
confidence: 99%
“…The review text vectorization of the model is acquired by the Word Embedding Tool [46], which maps lexical information into the semantic space and finally obtains a word vector model. Adaptive Moment Estimation [47] is used to optimize the training optimizer of the model, which is an optimizer based on a random gradient with adaptive features. In the experiment, 15 epochs were trained, each epoch was divided into 500 batches and each batch processed 128 batch sizes.…”
Section: Experimental Settingsmentioning
confidence: 99%
“…Ghorvei et al [28] proposed a deep subdomain adaptive CNN to extract fault features under noise and variable load conditions. Qiao et al [29] identified the fault types of bearing by optimizing and updating Adam's parameters and combining with convolutional networks. Zhang et al [30] carried out noise reduction processing on fault signals to eliminate interference components in the signals.…”
Section: Introductionmentioning
confidence: 99%