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基于GCN−GRU的瓦斯浓度时空分布预测

秦嘉欣 葛淑伟 龙凤琪 张永茜 李雪

秦嘉欣,葛淑伟,龙凤琪,等. 基于GCN−GRU的瓦斯浓度时空分布预测[J]. 工矿自动化,2023,49(5):82-89, 111.  doi: 10.13272/j.issn.1671-251x.2022060105
引用本文: 秦嘉欣,葛淑伟,龙凤琪,等. 基于GCN−GRU的瓦斯浓度时空分布预测[J]. 工矿自动化,2023,49(5):82-89, 111.  doi: 10.13272/j.issn.1671-251x.2022060105
QIN Jiaxin, GE Shuwei, LONG Fengqi, et al. Spatiotemporal distribution prediction of gas concentration based on GCN-GRU[J]. Journal of Mine Automation,2023,49(5):82-89, 111.  doi: 10.13272/j.issn.1671-251x.2022060105
Citation: QIN Jiaxin, GE Shuwei, LONG Fengqi, et al. Spatiotemporal distribution prediction of gas concentration based on GCN-GRU[J]. Journal of Mine Automation,2023,49(5):82-89, 111.  doi: 10.13272/j.issn.1671-251x.2022060105

基于GCN−GRU的瓦斯浓度时空分布预测

doi: 10.13272/j.issn.1671-251x.2022060105
基金项目: 国家自然科学基金重点资助项目(61936008)。
详细信息
    作者简介:

    秦嘉欣(1997—),女,陕西宝鸡人,硕士研究生,研究方向为机器学习、深度学习,E-mail:durta_qin@163.com

  • 中图分类号: TD712

Spatiotemporal distribution prediction of gas concentration based on GCN-GRU

  • 摘要: 在煤矿井下复杂环境下,传统瓦斯浓度预测模型的预测精度较低,虽然通过引入各种优化算法对传统瓦斯浓度预测模型进行优化,提高了瓦斯浓度预测精度,但仅从时间维度进行建模,忽略了瓦斯浓度的空间特性,易导致重要先验知识丢失,影响预测效果。针对上述问题,提出一种基于图卷积神经网络(GCN)和门控循环单元(GRU)的瓦斯浓度时空分布预测模型。首先,对瓦斯浓度历史数据进行预处理,根据各采集节点间的空间距离,构建瓦斯浓度空间节点图,用于对节点间复杂的依赖关系进行建模。然后,在每个采样时间点,将瓦斯浓度和节点间的距离权重参数作为输入,获得瓦斯的空间节点图结构后,通过GCN进行空间特征自适应学习和图卷积运算,得到瓦斯浓度的空间特征,再将瓦斯浓度的空间特征信息转化为序列数据,输入到GRU。最后,GRU对时间序列下各时刻组成的瓦斯空间特征信息进行处理,通过基于序列到序列模型和自动编码器,生成模型预测结果。试验结果表明:① GCN−GRU模型能够较为准确地预测瓦斯浓度的总体变化趋势,预测结果与实际数据的拟合度优于历史平均(HA)模型和支持向量回归(SVR)模型。② GCN−GRU模型的均方根误差较HA模型、SVR模型、移动平均自回归(ARIMA)模型分别降低了0.5%,71.4%,37.9%,平均绝对误差分别降低了10.5%,82.4%,82.4%,准确率分别提高了0.06%,17.7%,13.8%,表明GCN−GRU模型具有较强的鲁棒性,且泛化性能较好。③ GCN−GRU模型较HA模型、SVR模型、ARIMA模型更能关注到前序重要特征的影响。这主要是由于GRU的2个门关注了数据的时间特征,GRU在保留门控功能的基础上,减少训练参数,在一定程度上提高了模型训练效率,降低了训练时长。

     

  • 图  1  采掘工作面瓦斯浓度变化

    Figure  1.  Change of gas concentration of mining working face

    图  2  瓦斯运移扩散运动模型

    Figure  2.  Gas diffusion movement model

    图  3  瓦斯传感器现场布置

    Figure  3.  Field layout of gas sensors

    图  4  图结构的瓦斯浓度数据

    Figure  4.  Gas concentration data of graph structure

    图  5  瓦斯浓度预测模型整体框架

    Figure  5.  The overall framework of gas prediction model

    图  6  图信号传递过程

    Figure  6.  Graph signal transmission process

    图  7  GRU模型结构

    Figure  7.  GRU model structure

    图  8  序列到序列模型内部结构

    Figure  8.  Internal structure of the sequence-to-sequence model

    图  9  模型参数对预测结果的影响

    Figure  9.  Influence of model parameters on prediction results

    图  10  本文模型的损失函数曲线

    Figure  10.  Loss function curve of the proposed model

    图  11  不同模型预测结果对比

    Figure  11.  Comparison of prediction results of different models

    表  1  各模型性能指标

    Table  1.   Performance indexes of each model

    模型均方根误差平均绝对误差准确率/%R2
    HA0.039 30.023 279.890.794 7
    SVR0.067 00.061 765.760.405 1
    ARIMA0.053 90.038 368.91*
    本文模型0.039 10.021 079.940.698 1
    下载: 导出CSV
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出版历程
  • 收稿日期:  2022-06-29
  • 修回日期:  2023-05-09
  • 网络出版日期:  2022-12-01

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