哥伦比亚奥里诺quia山麓地貌、土地利用与径流:区域尺度上的分类与相关性

Q2 Social Sciences
L. Niño, Alexis J Jaramillo, Victor Villamizar, O. Rangel
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引用次数: 0

摘要

在生态系统服务管理中,将土地利用与地形物理特征联系起来,建立人类活动的调节因子并规划其分布具有重要意义。这些分析以专题制图为基础,通常由卫星图像的视觉分类生成。传统的制图技术需要较长的时间来解释和整合多个数据集,从而限制了信息的及时可用性。本文提出了一种方法来克服这些困难,实现机器学习和云计算来生成及时的专题制图和空间分析,以支持土地利用规划。研究区根据定义辫状河系和吻合河系的海拔高度划分。在谷歌Earth Engine平台上完成建模输入数据的采集、处理和分类。利用比值比及其各自的置信区间,计算了流星雨与地貌的空间相关性。地图以1:50 000的比例呈现了27个地貌单元、11种土地利用类型和6个地形等级。还报告了实现分类模型的混淆矩阵,允许评估全局,用户和生产者的准确性。自然区域的遗迹与结构环境和城市基础设施与冲积扇之间的相关性尤为突出。这些程序产生的信息对于规划土地利用和确定维持生态系统服务的优先次序至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geomorphology, Land-Use, and Hemeroby of Foothills in Colombian Orinoquia: Classification and Correlation at a Regional Scale
Abstract In the management of ecosystem services, it is significant to relate land use with the physical characteristics of the terrain, which allows establishing the conditioning factors of human activities and planning their distribution. These analyzes are based on thematic cartography, usually generated with visual classifications of satellite images. Traditional mapping techniques involve limiting the timely availability of information by taking extended periods for interpretation and integration of multiple data sets. This article presents a methodology to overcome these difficulties, implements machine learning and cloud computing to generate timely thematic cartography and spatial analysis to support land use planning. The study area was delimited according to altitudinal levels that define braided and anastomosed river systems. Acquisition, processing, and classification of input data for modeling were performed on the Google Earth Engine platform. The spatial correlation between hemeroby and geomorphology was calculated with the odds ratio and its respective confidence interval. Maps of 27 geomorphological units, 11 types of land use, and six hemeroby levels are presented at a scale of 1:50,000. Confusion matrices of implemented classification models were also reported, allowed evaluating global, user’s, and producer’s accuracy. Correlations between relict of natural areas with the structural environment and urban infrastructure with alluvial fans stand out. The information generated by these procedures is essential for planning land use and prioritizing the maintenance of ecosystem services.
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来源期刊
Papers in Applied Geography
Papers in Applied Geography Social Sciences-Urban Studies
CiteScore
2.20
自引率
0.00%
发文量
19
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