基于无人机图像的隧道岩块弃渣识别与分析OA
UAV image-based identification and block size analysis of tunnel muck using deep learning
钻爆法隧道施工会产生大量岩块弃渣,高效、精准地分析其块度特征是提升资源化利用水平的关键.针对传统人工测量方法效率低、覆盖范围有限的问题,采用无人机影像采集与深度学习相结合的方法,智能提取岩块轮廓,对青海省当顺隧道弃渣场的岩块分布规律与资源化潜力展开研究.结果表明:岩块直径中值为300 mm,最大直径超过1 500 mm;由坡顶向坡脚岩块的直径和形态均发生了变化,岩块直径逐渐由细变粗,岩块形态则由次圆状渐变为棱角状;最新倾倒区岩块较好地保持了爆破原始状态,直径超过1 000 mm的岩块占比偏高,建议通过优化装药结构与孔距等方式予以控制.基于岩块的重力分选特征,提出分区资源化利用策略:坡顶与坡面区的中细粒料宜直接用作填料或筑路材料,坡脚区大块岩石则经破碎后再利用.研究成果可为隧道弃渣的高效资源化与爆破参数优化提供技术依据.
Drill-and-blast tunneling generates large volumes of rock spoil,and efficient and accurate characterization of block size distribution is critical for enhancing resource utilization.However,traditional manual measurement methods are time-consuming and limited in spatial coverage.To address these limitations,a UAV-based image acquisition approach combined with deep learning was employed to automatically extract rock block contours.The block size distribution and resource utilization potential of tunnel spoil were investigated using a case study from Dangshun Tunnel spoil yard in Qinghai Province,China.The results show that the median block diameter is approximately 300 mm,with maximum sizes exceeding 1 500 mm.Both the size and morphology of rock blocks exhibit systematic spatial variation along the slope,with particle size gradually increasing from fine to coarse from the slope crest to the slope toe,while block shape transitioning progressively from subrounded to angular.In recently dumped areas,rock blocks largely preserve their original blast-induced fragmentation features,with a relatively high proportion of large fragments exceeding 1 000 mm in size.This suggests that optimization of charging structure and blasthole spacing is necessary.Based on gravity-induced sorting characteristics,a zoned resource utilization strategy is proposed in which medium-and fine-grained materials at the crest and slope face zones can be directly used as fill or road construction materials,whereas coarse blocks accumulated at the slope toe should be crushed for recycling.The findings provide a technical basis for efficient resource utilization of tunnel spoil and optimization of blasting design in tunnel engineering.
刘世纲;余漾;韩宇舟;张学民;张燕勇;游钰阳;周贤舜
中交一航局第三工程有限公司,辽宁 大连 116010中交一航局第三工程有限公司,辽宁 大连 116010中南大学土木工程学院,湖南 长沙 410083中南大学土木工程学院,湖南 长沙 410083中南大学土木工程学院,湖南 长沙 410083中南大学土木工程学院,湖南 长沙 410083深圳大学土木与交通工程学院,广东 深圳 518060||深圳大学极端环境岩土和隧道工程智能建养全国重点实验室,广东 深圳 518060
交通工程
隧道工程隧道弃渣岩块识别任意分割模型块度级配几何特征资源利用
tunnel engineeringtunnel muckrock identificationsegment anything model(SAM)block size distributiongeometric featuresresource utilization
《深圳大学学报(理工版)》 2026 (3)
309-315,7
National Natural Science Foundation of China(52378425)CCCC First Harbor Engineering Co.Ltd.Technology Project(105049901C-2024-JSFW-41)Shenzhen Stability Support Plan(20231122095154003) 国家自然科学基金资助项目(52378425)中交第一航务工程局有限公司科技资助项目(105049901C-2024-JSFW-41)深圳市高等院校稳定支持计划资助项目(20231122095154003)
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