地理信息分析与构建神经网络模型预测阿尔泰东南部景观中考古遗迹的位置

Pub Date : 2022-01-01 DOI:10.21638/spbu07.2022.306
A. Glebova, I. Sergeev, Nikolay Bykov
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引用次数: 0

摘要

本文致力于利用地理信息系统和机器学习对阿尔泰东南部考古遗址的景观格局进行识别。阿尔泰东南部考古遗址信息库是作者根据文献资料和自己的实地考察建立起来的。根据某些景观特征的考古遗址分布方案:绝对高度;与水道有关的位置;山坡上;博览会;6月太阳辐射强度;12月的太阳辐射强度是根据对该领土地形的地理信息分析和现有考古数据编制的。获得的阿尔泰东南部景观中考古遗址分布的统计规律是创建和验证机器学习模型算法的基础-神经网络。在此基础上,绘制了考古遗址位置的预测图。发现新考古对象的最大可能性可以通过以下景观参数提供:距离河流不超过500-600米,坡度高达4度,高强度和夏季(6月)太阳辐射,斜坡暴露:南部,东南部和西部。阿尔泰东南部未开发的考古遗址最有可能位于中下游的河谷沿线,河流汇合处,山间盆地的边缘,或河谷漫滩上梯田的宽阔平坦地区。所获得的数据使评估景观特征对古代民族宗教建筑空间分布的贡献成为可能,并为寻找新的考古遗址提供机会。
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Geoinformation analysis with the construction of a neural network model for predicting location of archaeological monuments in the landscapes of South-Eastern Altai
The article is devoted to the identification of landscape patterns of the location of archaeological sites in the South-East Altai using GIS and machine learning. The information database of archaeological sites of South-Eastern Altai was created based on literary sources, the authors' own field research. Schemes of distribution of archaeological sites according to some landscape features: absolute height; position in relation to watercourses; slopes; exposition; solar radiation intensity in June; Intensities of solar radiation for December was created on the basis of geoinformation analysis of the relief of the territory and the available archaeological data. The obtained statistical regularities of the distribution of archaeological sites in the landscapes of South-Eastern Altai were the basis for the creation and verification of the algorithm of a machine-learning model - a neural network. Based on the results, a forecast map of the location of archaeological sites was created. The greatest probability of discovering new archaeological objects could be provided by the following landscape parameters, no further than 500-600 m from the river with a slope steepness of up to 4 degrees, with high intensity and summer (June) solar radiation and with an exposure of slopes: southern, south-eastern and western. Unexplored archaeological sites in South-East Altai are most likely located along river valleys in the middle and lower reaches, at the confluence of rivers, along the periphery of intermountain basins, or on wide flat areas of above-floodplain terraces of river valleys. The data obtained make it possible to assess the contribution of landscape features to the spatial distribution of religious buildings of ancient peoples and provide opportunities for the search for new archaeological sites.
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