Deep learning with geographical post-processing optimization: an integrated framework for detecting qanat activity states

IF 2.5 1区 地球科学 Q1 ANTHROPOLOGY
Journal of Archaeological Science Pub Date : 2026-04-01 Epub Date: 2026-02-28 DOI:10.1016/j.jas.2026.106526
Xingjian Fu , Lei Luo , Feng Li , Jia Yang , Jie Shao , Ran Tu , Jinhui Fan , Zhihong Luo , Zhi Zhang
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引用次数: 0

Abstract

As ancient underground water systems that sustained civilizations in arid regions for millennia, qanats represent both remarkable hydraulic heritage and vital water sources, with the Persian Qanat (inscribed on the World Heritage List in 2016) requiring dynamic monitoring for effective protection and management. This study overcomes limitations of prior spatial-distribution-focused research by constructing the first multi-region annotated dataset from very high-resolution resolution Google Earth satellite imagery across Iran, Afghanistan, Morocco and China, classifying 8,587 active and 17,383 inactive qanat samples. Our YOLO11-based model (enhanced with C3k2 backbone and C2PSA attention) integrates a novel post-processing framework where DBSCAN clustering removed 90.8% of outliers – collectively achieving 97.16% precision (9.5% improvement over baseline) and 76.56% recall. Applied to 11 Persian Qanat World Heritage Sites, the system identified 41,781 shafts in 889 qanats, including 15,742 active and 26,039 inactive qanats, revealing key patterns: 6/km2 density, 169 m (SD = 46.3 m) spacing, and 95% occurrence in bare/sparsely vegetated areas on gentle slopes (mean 2.5°). This high-precision dataset enables prioritized conservation of inactive qanats as cultural relics and sustainable management of active systems, demonstrating how AI-geospatial integration can revolutionize archaeological monitoring in arid landscapes.
深度学习与地理后处理优化:探测坎儿井活动状态的集成框架
坎儿井是干旱地区千年文明赖以生存的古老地下水系统,既是非凡的水利遗产,也是重要的水源。波斯坎儿井(2016年列入《世界遗产名录》)需要动态监测,才能得到有效的保护和管理。该研究克服了以往以空间分布为中心的研究的局限性,利用伊朗、阿富汗、摩洛哥和中国的高分辨率谷歌地球卫星图像构建了第一个多区域注释数据集,对8,587个活跃样本和17,383个非活跃样本进行了分类。我们基于yolo11的模型(增强了C3k2骨干和C2PSA关注)集成了一个新的后处理框架,其中DBSCAN聚类去除了90.8%的异常值,总体上达到97.16%的精度(比基线提高9.5%)和76.56%的召回率。该系统应用于11个波斯坎泉世界遗产,在889个坎泉中确定了41,781个竖井,其中包括15,742个活跃的坎泉和26,039个不活跃的坎泉,揭示了关键模式:密度为6/km2,间距为169 m (SD = 46.3 m), 95%发生在平缓斜坡(平均2.5°)的光秃/稀疏植被地区。该高精度数据集可以优先保护非活动坎儿井作为文物,并对活动系统进行可持续管理,展示了人工智能地理空间集成如何彻底改变干旱景观中的考古监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Archaeological Science
Journal of Archaeological Science 地学-地球科学综合
CiteScore
6.10
自引率
7.10%
发文量
112
审稿时长
49 days
期刊介绍: The Journal of Archaeological Science is aimed at archaeologists and scientists with particular interests in advancing the development and application of scientific techniques and methodologies to all areas of archaeology. This established monthly journal publishes focus articles, original research papers and major review articles, of wide archaeological significance. The journal provides an international forum for archaeologists and scientists from widely different scientific backgrounds who share a common interest in developing and applying scientific methods to inform major debates through improving the quality and reliability of scientific information derived from archaeological research.
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