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基于双层路由注意力机制的煤粒粒度定量分析

程德强 郑丽娟 刘敬敬 寇旗旗 江鹤

程德强,郑丽娟,刘敬敬,等. 基于双层路由注意力机制的煤粒粒度定量分析[J]. 工矿自动化,2024,50(2):9-17.  doi: 10.13272/j.issn.1671-251x.2023100002
引用本文: 程德强,郑丽娟,刘敬敬,等. 基于双层路由注意力机制的煤粒粒度定量分析[J]. 工矿自动化,2024,50(2):9-17.  doi: 10.13272/j.issn.1671-251x.2023100002
CHENG Deqiang, ZHENG Lijuan, LIU Jingjing, et al. Quantitative analysis of coal particle size based on bi-level routing attention mechanism[J]. Journal of Mine Automation,2024,50(2):9-17.  doi: 10.13272/j.issn.1671-251x.2023100002
Citation: CHENG Deqiang, ZHENG Lijuan, LIU Jingjing, et al. Quantitative analysis of coal particle size based on bi-level routing attention mechanism[J]. Journal of Mine Automation,2024,50(2):9-17.  doi: 10.13272/j.issn.1671-251x.2023100002

基于双层路由注意力机制的煤粒粒度定量分析

doi: 10.13272/j.issn.1671-251x.2023100002
基金项目: 国家自然科学基金项目(52204177,52304182);济宁市重点研发计划项目(2021KJHZ013,2023KJHZ007);徐州市推动科技创新专项资金项目(KC23401)。
详细信息
    作者简介:

    程德强(1979—),男,河南洛阳人,教授,博士,博士研究生导师,主要研究方向为图像处理、机器视觉,E-mail:chengdq@cumt.edu.cn

    通讯作者:

    江鹤(1990—),男,江苏徐州人,讲师,博士,主要研究方向为图像超分辨率重建、图像识别,E-mail: jianghe@cumt.edu.cn

  • 中图分类号: TD391.41

Quantitative analysis of coal particle size based on bi-level routing attention mechanism

  • 摘要: 煤粒粒度分布特征与煤中甲烷气体传播规律的分析密切相关。目前,基于图像分割的煤粒粒度分析方法已成为获取煤粒粒度的主流方案之一,但存在上下文信息丢失、煤粒特征融合不当造成煤粒漏分割和过分割等问题。针对上述问题,设计了一种基于双层路由注意力机制(BRA)的煤粒粒度分析模型。在残差U型网络ResNet−UNet中嵌入BRA模块,得到B−ResUNet网络模型:为减少在煤粒分割过程中出现的漏分割问题,在ResNet−UNet网络的上采样前添加BRA模块,使网络根据上一层的特征调整当前特征层的重要性,增强特征的表达能力,提高长距离信息的传递能力;为减少在煤粒分割过程中出现的过分割问题,在ResNet−UNet网络的特征拼接模块后添加BRA模块,通过动态选择和聚合重要特征,实现更有效的特征融合。对分割出的煤粒进行特征信息提取,针对实验分析中采用的煤粒数据集的煤粒粒度与细胞大小相当,为精确表征煤粒粒度,采用等效圆粒径获取煤粒粒度及粒度分布。实验结果表明:① B−ResUNet网络模型的准确率、平均交并比、召回率较ResNet−UNet基础网络分别提高了0.6%,14.3%,35.9%,准确率达99.6%,平均交并比达92.6%,召回率达94.4%,B−ResUNet网络模型在煤样中具有较好的分割效果,能够检测出较为完整的颗粒结构。② 在上采样前和特征拼接后均引入BRA模块时,网络对煤粒的边缘区域给予了足够的关注,且对一些不太重要的区域减少了关注度,从而提高了网络的计算效率。③ 煤粒的粒度大小在1~2 mm内呈相对均衡的分布趋势,粒度在1~2 mm内的煤粒占比最大为99.04%,最小为90.59%,表明基于BRA的图像处理方法在粒度分析方面具有较高的准确性。

     

  • 图  1  BRA模块结构

    Figure  1.  Structure of the BRA module

    图  2  B−ResUNet网络模型结构

    Figure  2.  Structure of B-ResUNet network model

    图  3  残差块

    Figure  3.  Residual block

    图  4  等效圆粒径原理

    Figure  4.  Principle of the equivalent circular particle size

    图  5  煤样可视化结果

    Figure  5.  Visualization of coal sample

    图  6  不同网络模型的语义分割结果

    Figure  6.  Semantic segmentation results for the different network models

    图  7  BRA模块的消融实验

    Figure  7.  Ablation experiments of the BRA module

    图  8  6组煤粒的粒度分布

    Figure  8.  Particle size distribution of six groups of coal particles

    表  1  不同网络模型评价指标对比

    Table  1.   Comparison of the evaluation indexes of different network models %

    模型 准确率 平均交并比 召回率
    PAN 98.3 62.8 27.8
    PSPNet 98.4 66.6 36.9
    U−Net 99.1 79.4 62.0
    Link−Net 97.9 68.6 60.3
    ResNet−UNet 99.0 78.3 58.5
    B−ResUNet 99.6 92.6 94.4
    下载: 导出CSV

    表  2  各网络模型性能

    Table  2.   Network performan %

    模型 准确率 平均交并比 召回率
    ResNet−UNet 99.0 78.3 58.5
    ResNet−采样BRA 99.4 87.2 79.0
    ResNet−拼接BRA 99.2 82.6 66.5
    B−ResUNet 99.6 92.6 94.4
    下载: 导出CSV

    表  3  不同方法测量粒度的准确率

    Table  3.   Accuracy of particle size measurement by different methods %

    测量方法 准确率
    第1组 第2组 第3组 第4组 第5组 第6组
    LPA方法 62.18 57.78 56.44 38.75 67.35 68.78
    形态学方法 84.50 87.83 87.82 92.0 88.48 94.29
    本文方法 97.42 97.37 89.80 95.56 96.47 96.15
    下载: 导出CSV
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出版历程
  • 收稿日期:  2023-10-03
  • 修回日期:  2024-02-05
  • 网络出版日期:  2024-03-05

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