中国安全科学学报 ›› 2024, Vol. 34 ›› Issue (S1): 212-218.doi: 10.16265/j.cnki.issn1003-3033.2024.S1.0031

• 安全工程技术 • 上一篇    下一篇

基于红外图像和目标检测的露天矿火灾探测技术

于海成(), 田羽, 李庆健, 李新鹏, 薛国庆, 张玉华   

  1. 国家能源集团 宝日希勒能源有限公司露天煤矿, 内蒙古 呼伦贝尔 021008
  • 收稿日期:2024-03-12 修回日期:2024-05-15 出版日期:2024-12-02
  • 作者简介:

    于海成 (1991—),男,河北昌黎人,本科,助理工程师,主要从事机电管理方面的工作。E-mail:

    田 羽, 工程师;

    李庆健, 工程师;

    李新鹏, 工程师;

    薛国庆, 工程师;

    张玉华, 工程师。

Fire detection technology in open-pit mines based on infrared images and target detection

YU Haicheng(), TIAN Yu, LI Qingjian, LI Xinpeng, XUE Guoqing, ZHANG Yuhua   

  1. Open-pit Coal Mine of Baori Shiller Energy Co., Ltd., National Energy Group, Hulunbuir Inner Mongolia 021008, China
  • Received:2024-03-12 Revised:2024-05-15 Published:2024-12-02

摘要:

为及时发现露天矿煤矸自燃,避免火势蔓延而造成更大损失,对于露天矿面积大、单一检测方法无法做到全方位的煤矸自燃和火灾探测,研究基于红外热成像和深度学习的露天矿自燃和火灾探测技术。首先,提出通过红外热成像和火灾图像目标识别的方法实现不同区域的自燃和火灾探测,构建露天矿煤层自燃识别与预警系统架构;然后,利用固定在露天矿地面上的热成像设备实时拍摄未发生火灾的煤矸区域的红外图像,监测煤矸温度的变化情况;最后,利用无人机机载摄像头拍摄煤层、矸石山和周边环境的照片,并基于深度学习的YOLOv8目标检测算法构建火灾探测模型,实现火焰和烟雾图像目标的检测,从而完成火灾的检测与报警。结果表明:基于热红外图像和火焰、烟雾图像识别的联合探测技术,对于火焰的检测平均精度为70.5%、烟雾的的平均识别准确率为74%,能够满足露天矿现场对于自燃和火灾的探测需求。

关键词: 红外热成像, 露天矿, 火灾探测, 煤层自燃, 深度学习

Abstract:

In order to detect the spontaneous combustion of coal gangue in open-pit mines in time and avoid greater losses caused by the spread of fire, the technology of spontaneous combustion and fire detection in open-pit mines based on infrared thermal imaging and deep learning was studied. As a result, the problem that a single detection method cannot achieve all-round spontaneous combustion and fire detection of coal gangue in large open-pit mines was solved. First, it was proposed to realize spontaneous combustion and fire detection in different areas through infrared thermal imaging and fire image target recognition, and a spontaneous combustion recognition of coal seam and early warning system architecture of open-pit mines was built. Then, thermal imaging equipment fixed on the ground of the open-pit mine was used to capture infrared images of the coal gangue area where no fire has occurred in real time and monitor the temperature changes of the coal gangue. Finally, the drone with an airborne camera was used to take photos of coal seams, waste piles, and surrounding environments, and then a fire detection model was built through the YOLOv8 target detection algorithm based on deep learning, so as to realize the detection of image targets of flames and smoke, thereby completing fire detection and early warning. The results show that the joint detection technology based on thermal infrared images and flame and smoke image recognition has an average detection accuracy of 70.5% for flames and an average recognition accuracy of 74% for smoke, which can meet the detection needs of spontaneous combustion and fire in open-pit mines.

Key words: infrared thermal imaging, open-pit mine, fire detection, spontaneous combustion of coal seam, deep learning

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