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高校地质学报 ›› 2026, Vol. 32 ›› Issue (02): 179-191.DOI: 10.16108/j.issn1006-7493.2025029

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基于深度学习的全新世中期古水坝智能识别: 以良渚古城及其周边地区为例

王奕然1,董少春1*,王晓琪2,尹宏伟1,张依欣3,张 涛3   

  1. 1. 南京大学 地球科学与工程学院,南京 210023;
    2. 南京大学 历史学院,南京 210023;
    3. 浙江省文物考古研究所,杭州 310014
  • 出版日期:2026-04-20 发布日期:2026-04-20

Intelligent Identification of Mid-Holocene Ancient Dams Based on Deep Learning: A Case Study of Liangzhu Ancient City and Its Surrounding Areas

WANG Yiran1,DONG Shaochun1*,WANG Xiaoqi2,YIN Hongwei1,ZHANG Yixin3,ZHANG Tao3   

  1. 1. School of Earth Sciences and Engineering, Nanjing University, Nanjing 210023, China;
    2. School of History, Nanjing University, Nanjing 210023, China;
    3. Zhejiang Provincial Institute of Cultural Relics and Archaeology, Hangzhou 310014, China
  • Online:2026-04-20 Published:2026-04-20

摘要: 新世中期以来,长江中下游地区多个古代文明为应对环境变化,营建了以防洪和灌溉为主要目的的古水坝。然而由于侵蚀、沉积及人类活动,传统考古学方法难以快速识别和发现这些古水坝,限制了水利考古的发展。文章提出了一种利用历史遥感影像和深度学习技术建立大尺度范围内高效识别古水坝的方法,并以良渚古城及其周边地区的古水坝为例进行评估。该方法收集了20世纪40~70年代的航拍与卫星影像,对该地区已确认的132座古水坝进行标注,并选择YOLOv5架构为基本架构,引入广义交并比(GIoU)损失函数、坐标注意力机制及补充检测层对模型进行优化。结果表明,优化后的模型对研究区古水坝的召回率为70%,精确度可至68%,较传统目视解译和田野考古方法的效率和准确率都大幅提高。该方法为大范围古文明的水利设施普查提供了自动化工具,对揭示古代水利设施的时空演化特征,揭示气候变化背景下古人兴建水利工程主动响应环境变化的人地关系模式以及理解古代文明发展进程具有重要意义。

关键词: 古水坝, 历史遥感影像, 深度学习, 良渚文化

Abstract: Since the Middle Holocene, multiple ancient civilizations in the middle and lower reaches of the Yangtze River have constructed ancient dams for flood control and irrigation as a response to environmental changes. However, due to erosion, sedimentation and human activities, it is difficult for traditional archaeological methods to quickly identify and discover these ancient dams, which restricts the development of hydraulic archaeology. This paper proposes an efficient method for large-scale identification of ancient dams based on historical remote sensing images and deep learning technology, and evaluates the method by taking the ancient dams in Liangzhu Ancient City and its surrounding areas as research cases. This method collects aerial and satellite images from the 1940s to 1970s, labels 132 confirmed ancient dams in the study area, selects the YOLOv5 as the basic architecture, and optimizes the model by introducing the Generalized Intersection over Union (GIoU) loss function, coordinate attention mechanism and supplementary detection layer. The results show that the optimized model achieves a recall rate of 70% and a precision of 68% for ancient dams in the study area, which is significantly higher in efficiency and accuracy than traditional visual interpretation and field archaeological methods. This method provides an automatic tool for large-scale census of ancient water conservancy facilities, and is of great significance for revealing the spatio-temporal evolution characteristics of ancient water conservancy facilities, clarifying the human-land relationship model in which ancient people actively responded to environmental changes by constructing water conservancy projects under the background of climate change, and understanding the development process of ancient civilizations. 

Key words: ancient dams, historical remote sensing images, deep learning, Liangzhu Culture

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