基于栅格的空间分层算法

R J. Pub Date : 2021-11-17 DOI:10.31223/x50s57
B. Fuentes, Minerva J. Dorantes, John R. Tipton
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引用次数: 1

摘要

景观的空间分层允许开展有效的抽样调查,将领域知识纳入数据驱动的建模框架,并产生与景观过程的响应现象的空间变异性有关的信息。这项工作将rassta包作为一系列算法的集合,专门用于景观的空间分层,跨地理空间的景观对应度量的计算,以及这些度量在空间采样和环境现象建模中的应用。通过参考几项得益于景观分层惯例的研究,介绍了景观分层的理论背景。rassta的功能通过代码示例展示,并辅以其输出的地理可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
rassta: Raster-Based Spatial Stratification Algorithms
Spatial stratification of landscapes allows for the development of efficient sampling surveys,the inclusion of domain knowledge in data-driven modeling frameworks, and the production of information relating the spatial variability of response phenomena to that of landscape processes. This work presents the rassta package as a collection of algorithms dedicated to the spatial stratification of landscapes, the calculation of landscape correspondence metrics across geographic space, and the application of these metrics for spatial sampling and modeling of environmental phenomena. The theoretical background of rassta is presented through references to several studies which have benefited from landscape stratification routines. The functionality of rassta is presented through code examples which are complemented with the geographic visualization of their outputs.
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