Dislocated time sequences – deep neural network for broken bearing diagnosis

IF 1.5 Q2 ENGINEERING, MULTIDISCIPLINARY
Pramudyana Agus Harlianto, T. B. Adji, N. A. Setiawan
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引用次数: 0

Abstract

Abstract One of the serious components to be maintained in rotating machinery including induction motors is bearings. Broken bearing diagnosis is a vital activity in maintaining electrical machines. Researchers have explored the use of machine learning for diagnostic purposes, both shallow and deep architecture. This study experimentally explores the progress of dislocated time sequences–deep neural network (DTS–DNN) used to improve multi-class broken bearing diagnosis by using public data from Case Western Reserve University. Deep architectures can be utilized with the purpose of simplifying or avoiding any traditional feature extraction process. DNN is utilized for avoiding the pooling operation in Convolution neural network that could remove important information. The obtained results were compared with the present techniques. The examination resulted in 99.42% average accuracy which is higher than the present techniques.
错位时间序列的深度神经网络故障诊断
摘要轴承是包括感应电动机在内的旋转机械中需要维护的重要部件之一。轴承损坏诊断是维护电机的一项重要活动。研究人员已经探索了将机器学习用于诊断目的,包括浅层和深层架构。本研究利用凯斯西储大学的公开数据,实验探索了错位时间序列-深度神经网络(DTS–DNN)用于改进多级轴承故障诊断的进展。深度架构可以用于简化或避免任何传统的特征提取过程。DNN用于避免卷积神经网络中可能去除重要信息的池化操作。将获得的结果与现有技术进行了比较。该检查的平均准确率为99.42%,高于现有技术。
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来源期刊
Open Engineering
Open Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
3.90
自引率
0.00%
发文量
52
审稿时长
30 weeks
期刊介绍: Open Engineering publishes research results of wide interest in emerging interdisciplinary and traditional engineering fields, including: electrical and computer engineering, civil and environmental engineering, mechanical and aerospace engineering, material science and engineering. The journal is designed to facilitate the exchange of innovative and interdisciplinary ideas between researchers from different countries. Open Engineering is a peer-reviewed, English language journal. Researchers from non-English speaking regions are provided with free language correction by scientists who are native speakers. Additionally, each published article is widely promoted to researchers working in the same field.
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