Engineering

Engineering

ISSN Print: 1947-3931
ISSN Online: 1947-394X
www.scirp.org/journal/eng
E-mail: eng@scirp.org
"An Improved Kernel K-Mean Cluster Method and Its Application in Fault Diagnosis of Roller Bearing"
written by Ling-Li Jiang, Yu-Xiang Cao, Hua-Kui Yin, Kong-Shu Deng,
published by Engineering, Vol.5 No.1, 2013
has been cited by the following article(s):
  • Google Scholar
  • CrossRef
[1] Experimental Research on Machinery Fault Simulator (MFS): A Review
2020
[2] Study of Fault Diagnosis for Rolling Bearing Based on Clustering Algorithms
2020
[3] Contribution à l'étude du diagnostic des défauts mécaniques par classification non supervisée
2020
[4] A Clustering Algorithm Application in Parkinson Disease based on k-means Method
2020
[5] 基于长短期记忆神经网络的数据中心空调系统传感器故障诊断
2018
[6] IDENTIFIKASI PENYAKIT RETINOPATI DIABETIKA MENGGUNAKAN ALGORITMA KERNEL K-MEANS
2018
[7] 非晶态合金与氢相互作用的研究进展
2017
[8] RT-OPTICS: real-time classification based on OPTICS method to monitor bearings faults
Journal of Intelligent Manufacturing, 2017
[9] Analysis and Interpretation of Bearing Vibration Data Using Principal Component Analysis and Self-Organizing Map.
2016
[10] Diagnóstico de fallos en procesos industriales empleando técnicas de aprendizaje basadas en métodos kernel
2016
[11] Analysis and interpretation of bearing vibration data using principal component analysis and self-organizing map
International Journal of Advanced Design & Manufacturing Technology, 2016
[12] Interface of Mo–Cu laminated composites by solid-state bonding
2015
[13] Manufacturing technology and application trends of titanium clad steel plates
2015
[14] Preparation of high emissivity and low absorbance thermal control coatings on Ti alloys by plasma electrolytic oxidation
2014
[15] 基于用户行为模型和蚁群聚类的协同过滤推荐算法
微型电脑应用, 2014
Free SCIRP Newsletters
Copyright © 2006-2024 Scientific Research Publishing Inc. All Rights Reserved.
Top