Search Results - "Wei, Haolin"

  • Showing 1 - 10 results of 10
Refine Results
  1. 1

    Prediction of Macroscopic Compressive Mechanical Properties for 2.5D Woven Composites Based on Artificial Neural Network by Zhou, Jie, Wei, Haolin, Wu, Zhen, Liu, Zhengliang, Zheng, Xitao

    Published in Fibers and polymers (01-08-2024)
    “…The complex modeling and computational cost are unavoidable in analysis of finite element models (FEMs) when mechanical properties of woven composite materials…”
    Get full text
    Journal Article
  2. 2

    Large HBV Surface Protein-Induced Unfolded Protein Response Dynamically Regulates p27 Degradation in Hepatocellular Carcinoma Progression by Guo, Yixiao, Shao, Jie, Zhang, Renyu, Han, Mingwei, Kong, Lingmin, Liu, Zekun, Li, Hao, Wei, Ding, Lu, Meng, Zhang, Shuai, Zhang, Cong, Wei, Haolin, Chen, Zhinan, Bian, Huijie

    “…Up to 50% of hepatocellular carcinoma (HCC) is caused by hepatitis B virus (HBV) infection, and the surface protein of HBV is essential for the progression of…”
    Get full text
    Journal Article
  3. 3
  4. 4

    A novel normalized fatigue progressive damage model for complete stress levels based on artificial neural network by Zhou, Jie, Wu, Zhen, Liu, Zhengliang, Wei, Haolin

    Published in International journal of fatigue (01-10-2024)
    “…The fatigue life model and fatigue stiffness degradation model are most crucial components in establishment of fatigue progressive damage model (FPDM). Based…”
    Get full text
    Journal Article
  5. 5

    Progressive damage analysis and experiments of open-hole composite laminates subjected to compression loads by Liu, Zhengliang, Yan, Leilei, Wu, Zhen, Zhou, Jie, Wei, Haolin, Zhang, Senlin, Ren, Xiaohui

    Published in Engineering failure analysis (01-09-2023)
    “…•The user subroutine element is suitable for prediction of displacement and stresses of thick and thin composite laminates.•The failure loads predicted by the…”
    Get full text
    Journal Article
  6. 6

    Real-time head nod and shake detection for continuous human affect recognition by Haolin Wei, Scanlon, Patricia, Yingbo Li, Monaghan, David S., O'Connor, Noel E.

    “…Human affect recognition is the field of study associated with using automatic techniques to identify human emotion or human affective state. A person's…”
    Get full text
    Conference Proceeding
  7. 7

    Id2 epigenetically controls CD8+ T-cell exhaustion by disrupting the assembly of the Tcf3-LSD1 complex by Li, Yiming, Han, Mingwei, Wei, Haolin, Huang, Wan, Chen, Zhinan, Zhang, Tianjiao, Qian, Meirui, Jing, Lin, Nan, Gang, Sun, Xiuxuan, Dai, Shuhui, Wang, Kun, Jiang, Jianli, Zhu, Ping, Chen, Liang

    Published in Cellular & molecular immunology (01-03-2024)
    “…CD8 + T-cell exhaustion is a state of dysfunction that promotes tumor progression and is marked by the generation of Slamf6 + progenitor exhausted (Tex prog )…”
    Get full text
    Journal Article
  8. 8

    Experimental Teaching Platform of Simple Harmonic Motion Based on Human-machine Engineering by Qiu, Jiyuan, Wei, Haolin, Fan, Yunting, Liu, Xueru

    “…In this paper, a simple harmonic motion experiment teaching platform based on Human-machine Engineering is proposed. Based on the phenomenon of friction…”
    Get full text
    Conference Proceeding
  9. 9

    Investigating Class-Level Difficulty Factors In Multi-Label Classification Problems by Marsden, Mark, McGuinness, Kevin, Antony, Joseph, Wei, Haolin, Redzic, Milan, Tang, Jian, Hu, Zhilan, Smeaton, Alan, O'Connor, Noel E.

    “…This work investigates the use of class-level difficulty factors in multi-label classification problems for the first time. Four class-level difficulty factors…”
    Get full text
    Conference Proceeding
  10. 10

    Investigating Class-level Difficulty Factors in Multi-label Classification Problems by Marsden, Mark, McGuinness, Kevin, Antony, Joseph, Wei, Haolin, Redzic, Milan, Tang, Jian, Hu, Zhilan, Smeaton, Alan, O'Connor, Noel E

    Published 01-05-2020
    “…This work investigates the use of class-level difficulty factors in multi-label classification problems for the first time. Four class-level difficulty factors…”
    Get full text
    Journal Article