Xuefang Xu
Personal Homepage
Personal Profile

共发表学术论文44篇,其中以第一作者/通讯作者发表SCI/EI共21篇,其中中科院一区8篇,二区TOP论文3篇、卓越科技期刊论文1篇(并入选封面文章)、ESI高被引论文1篇,授权国家发明专利2项,主持在研河北省自然科学基金青年基金项目、全国重点实验室开放基金、教育部重点实验室开放基金、燕山大学基础创新科研培育项目、秦皇岛市科技发展计划、军工类横向等项目。

[1] Xuefang Xu, Xu Yang, Changbo He, Peiming Shi, Changchun Hua. Adversarial Domain Adaptation Model Based on LDTW for Extreme Partial Transfer Fault Diagnosis of Rotating Machines.IEEE Transactions on Instrumentation and Measurement.2024.(中科院 2 TOP 期刊,IF:5.6)

[2] Xuefang Xu, Shuo Bao, Haidong Shao, et al. A multi-sensor fused incremental broad learning with D-Sheory for online fault diagnosis of rotating machinery. Advanced Engineering Informatics. 2024.(中科院 1 TOP 期刊,IF:8.8);

[3] Shiting Hu, Xuefang Xu*, Mengdi Li, et al. Incremental forecaster using C–C algorithm to phase space reconstruction and broad learning network for short-term wind speed prediction[J]. Engineering Applications of Artificial Intelligence, 2024, 128: 107461.(中科院2 区 TOP 期刊,所指导学生为第一作者)

[4] Bo Li, Xuefang Xu*, Hang Tan, Peiming Shi, Zijian Qiao. Cyclogram: an effective method for selecting frequency bands for fault diagnosis of rolling element bearings[J]. Measurement Science and Technology, 2023, 34(9): 094003. (SCI 影响因子: 2.4,中科院3区期刊,所指导学生为第一作者);

[5] Shengmao Lin, Shu Wang, Xuefang Xu*, Ruixiong Li, Peiming Shi. GAOformer: An adaptive spatiotemporal feature fusion transformer utilizing GAT and optimizable graph matrixes for offshore wind speed prediction[J]. Energy, 2024: 130404. (SCI影响因子:9.0, 中科院1TOP期刊,所指导学生为第一作者)

[6]Xuefang Xu, Shuo Bao, Pengfei Liang, et al. A broad learning model guided by global and local receptive causal features for online incremental machinery fault diagnosis. Expert Systems with Applications.2024. (中科院 1 TOP 期刊,IF:8.5);

[7] Xuefang Xu, Bo Li, Zijian Qiao, et al. Caputo-Fabrizio fractional order derivative stochastic resonance enhanced by ADOF and its application in fault diagnosis of wind turbine drivetrain. Renewable Energy.2023.119398. (中科院 1 TOP 期刊,IF:8.7);

[8] Xuefang Xu, Bo Li, Wenyue Zhang, et al. Caputo–Fabrizio fractional stochastic resonance with graphene potential enhanced by NLOF and its applications in fault diagnosis of rotating machinery[J]. Nonlinear Dynamics, 2023: 1-27. (中科院 2 TOP 期刊,IF:5.6);

[9] Xuefang Xu, Shiting Hu, Peiming Shi, Huaishuang Shao, Ruixiong Li, Zhi Li. Natural phase space reconstruction-based broad learning system for short-term wind speed prediction: Case studies of an offshore wind farm[J]. Energy, 2023, 262: 125342. (SCI 影响因子: 8.857, 中科院 1 TOP 期刊)

[10]  Xuefang Xu, Shiting Hu, Huaishuang Shao, Peiming Shi, Ruixiong Li, Deguang Li. A spatio-temporal forecasting model using optimally weighted graph convolutional network and gated recurrent unit for wind speed of different sites distributed in an offshore wind farm[J]. Energy, 2023, 284: 128565. (SCI 影响因子: 8.857, 中科院 1 TOP 期刊)

[11]  Xuefang Xu, Yaguo Lei, Zeda Li. An incorrect data detection method for big data cleaning of machinery condition monitoring[J]. IEEE Transactions on Industrial Electronics, 2020, 67(3): 2326-2336. (SCI 影响因子: 8.162, ESI高被引, 中科院 1 区 TOP 期刊)

[12] Xuefang Xu, Zijian Qiao, Yaguo Lei. Repetitive transient extraction for machinery fault diagnosis using multiscale fractional order entropy infogram[J]. Mechanical Systems and Signal Processing, 2018, 103: 312-326. (SCI 影响因子: 8.934, 中科院 1 区 TOP 期刊)

[13] Xuefang Xu, et al. Intelligent Fault Diagnosis for variable working conditions based on the SAAFN and the BICP [J]. IEEE Sensors Journal, 2024.(SCI 影响因子: 4.3 中科院 2 )

[14] 雷亚国, 许学方, 蔡潇, 李乃鹏, 孔德同, 张勇铭. 面向机械装备健康监测的数据质量保障方法研究[J]. 机械工程学报, 2021, 57(4): 1-9. (中国科技期刊卓越行动计划入选期刊, 中国机械工程学会会刊, 被选为期刊封面文章




  • Education Background
  • Work Experience
  • 西安交通大学
  • 机械工程
  • 博士研究生
  • 硕士学位

  • 西安交通大学
  • 动力工程
  • 研究生
  • 硕士学位

  • Social Affiliations
  • Research Focus
  • 担任MSSP、IEEE TII、IEEE TIE、TIM、ISA transactions、IEEE sensors journal、EAAI、MST、Frontiers in Nuclear Engineering等20余个学术权威期刊审稿人

  • 中国振动工程学会会员

  • 河北振动工程学会会员

Personal information

Lecturer (University)
Supervisor of Master's Candidates

Degree : Doctor

Alma Mater : 西安交通大学

Education Level : 博士研究生毕业

School/Department : 电气工程学院

Date of Employment : 2021-07-01

Discipline : Measurement Technology and Instruments

Business Address : 燕山大学西校区电气A馆205-1

Email :

Telephone :

email :

You are visitors

The Last Update Time : ..


Copyright © 2018 Yanshan University

MOBILE Version