不同方法绘制的军用交通地图的比较

K. Pokonieczny, Wojciech Dawid, Sylwia Borkowska
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引用次数: 0

摘要

本文介绍了军用交通通航性地图开发自动化系统的基础。该系统的基础是确定1km × 1km大小的方形原野的可通行性指数(IOP)。它是利用从军事和民用空间数据库获得的土地覆盖要素数据来定义的。为了确定交通可通性,使用了各种方法:人工神经网络(多层感知器和自组织地图)和GIS多准则空间分析。对军用(矢量地图2级)和民用空间数据库(Corine土地覆盖和开放街道地图)进行了测试。本文对常用方法进行了比较。除了基本的统计分析(IOPs平均值、Pearson相关矩阵等)外,还计算了空间自相关系数(Moran I)等空间统计。关键的实验也是将生成的地图与武装部队常用的方法绘制的可通行性地图进行比较。因此,所进行的实验的结果是选择最优的可通行性地图,并回答问题:应该使用哪种方法和数据来制作最佳的可通行性地图?研究发现,使用植被粗糙度因子方法和Corine土地覆盖数据进行的研究是显示可通行性条件的最有用和最忠实的地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of the military maps of trafficability developed by different methods
This paper presents the basis of the system for automation of the military trafficability maps development. The system is based on determining the index of trafficability (IOP) for square primary fields of 1 km by 1 km size. It is defined with use of data on land cover elements, obtained from both military and civilian spatial databases. To determine the trafficability, various methods have been used: artificial neural networks (multilayer perceptron and Self Organizing Maps) and GIS multi-criteria spatial analyses. Tests were performed for both military (Vector Map Level 2) and civilian spatial databases (Corine Land Cover and Open Street Map). The article presents a comparison of used methods. In addition to the basic statistical analyses (average value of IOPs, Pearson's correlation matrices, etc.), spatial statistics such as spatial autocorrelation coefficients (Moran I) were calculated. The key experiment was also to compare generated maps to the map of trafficability made by the methods commonly used in the Armed Forces. The result of conducted experiments is therefore choosing the optimal map of trafficability and the answer to the question: which method and data should be used for the best trafficability map elaboration? It was found that the most useful and most faithful map showing the conditions of trafficability is the study elaborated using the Vegetation Roughness Factor method and using Corine Land Cover data.
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