• [Oral Presentation]Enhancing Mechanical Properties Evaluation of Gangue-Based Waste Backfill with Adversarial Ensemble Robust Learning
    00
    days
    00
    hours
    00
    minutes
    00
    seconds
    00
    days
    00
    hours
    00
    minutes
    00
    seconds

    [Oral Presentation]Enhancing Mechanical Properties Evaluation of Gangue-Based Waste Backfill with Adversarial Ensemble Robust Learning

    Enhancing Mechanical Properties Evaluation of Gangue-Based Waste Backfill with Adversarial Ensemble Robust Learning
    ID:33 Submission ID:302 View Protection:ATTENDEE Updated Time:2024-05-17 18:42:39 Hits:147 Oral Presentation

    Start Time:2024-05-30 19:40 (Asia/Shanghai)

    Duration:10min

    Session:[S1] Resource Development and Utilization ? [S1-2] Evening of May 30th

    No files

    Abstract
    The waste rock produced by mining pollutes the environment. However, transforming waste rock into backfill material can not only reduce pollution but also alleviate surface subsidence. The mechanical properties of backfill materials are crucial for surface protection. Therefore, in this study, a large-scale dataset based on gangue and tailings as backfill materials was established through experiments and collection. An ensemble learning model was developed to assess the nonlinear effects of 43 dimensional factors on the mechanical properties. Different backfill materials, preparation methods, and measurement errors can lead to significant differences in mechanical properties, which can easily affect the accuracy of evaluations. Hence, we proposed a heuristic adversarial perturbation method to enhance the model on differentiated data Through an iterative approach, an ensemble robust support vector regression model (ERSVR) was established. The model's robustness was studied under different integration levels, disturbance patterns, disturbance levels, and defense levels. This model can adaptively evaluate the mechanical differences of backfill materials in both coal and non-coal mining contexts. Compared to single machine learning models and conventional ensemble models, ERSVR has a mean square error of 0.05 and a correlation coefficient of 0.95, demonstrating better robustness and accuracy. This study plays a promoting role in establishing large models in the field of mining waste.
    Keywords
    Mining waste, Backfill material, Ensemble learning, Robustness, Mechanical properties
    Speaker
    Peitao SHI
    China University of Mining and Technology

    Submission Author
    培濤 時 中國礦業大學
    吉雄 張 中國礦業大學
    浩 閆 中國礦業大學
    楠 周 中國礦業大學
    Comment submit
    Verification code Change another
    All comments

    Contact us

    Abstract and Paper:Ms. Zhang
    Tel:(0086)-516-83995113
    General Affairs:Ms. Zhang
    Tel:(0086)-516-83590258
    Hotel Services:Ms. ZHANG
    Tel:15852197548
    Sponsorship and Exhibition:Mr. Li
    Tel:(0086)-516-83590246
    Log in Registration Submit Abstract Hotel
  • 成人视频