复杂地形混交林地表燃料负荷的四种空间插值方法比较

IF 2.7 3区 农林科学 Q2 ECOLOGY
C. Hoffman, J. Ziegler, W. Tinkham, J. Hiers, A. Hudak
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引用次数: 0

摘要

森林和其他火灾易发生态系统的空间异质性模式越来越被认为是预测火灾行为和随后火灾影响的关键。考虑到跨尺度采样连续空间模式的困难,统计方法通常从地块到景观进行缩放。本研究比较了四种空间插值方法(SIM)绘制精细尺度燃料负荷图的性能:分类(CL)、多元线性回归(LR)、普通克里格法(OK)和回归克里格(RK)。这些方法代表了常用的SIMs,并展示了非地质统计学、地质统计学和混合方法的多样性。模型是为17.6公顷的场地开发的,使用了从空间映射的树木、用密集的光负荷图网络采样的地表燃料和地形变量得出的指标的组合。这种比较的结果表明,所有的估计都产生了无偏的空间预测。回归克里格法优于其他方法,这些方法要么仅依赖于点观测的插值,要么使用辅助信息开发精细尺度表面燃料图的基于回归的方法。虽然我们的分析发现,地表燃料负荷与物种组成、森林结构和地形相关,但这种关系相对较弱,表明其他变量和空间相互作用可以显著改善地表燃料地图绘制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Four Spatial Interpolation Methods for Modeling Fine-Scale Surface Fuel Load in a Mixed Conifer Forest with Complex Terrain
Patterns of spatial heterogeneity in forests and other fire-prone ecosystems are increasingly recognized as critical for predicting fire behavior and subsequent fire effects. Given the difficulty in sampling continuous spatial patterns across scales, statistical approaches are common to scale from plot to landscapes. This study compared the performance of four spatial interpolation methods (SIM) for mapping fine-scale fuel loads: classification (CL), multiple linear regression (LR), ordinary kriging (OK), and regression kriging (RK). These methods represent commonly used SIMs and demonstrate a diversity of non-geostatistical, geostatistical, and hybrid approaches. Models were developed for a 17.6-hectare site using a combination of metrics derived from spatially mapped trees, surface fuels sampled with an intensive network of photoload plots, and topographic variables. The results of this comparison indicate that all estimates produced unbiased spatial predictions. Regression kriging outperformed the other approaches that either relied solely on interpolation from point observations or regression-based approaches using auxiliary information for developing fine-scale surface fuel maps. While our analysis found that surface fuel loading was correlated with species composition, forest structure, and topography, the relationships were relatively weak, indicating that other variables and spatial interactions could significantly improve surface fuel mapping.
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来源期刊
Fire-Switzerland
Fire-Switzerland Multiple-
CiteScore
3.10
自引率
15.60%
发文量
182
审稿时长
11 weeks
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