使用最近邻技术对美国西部火灾后树木再生的模型辅助领域估计

IF 1.7 3区 农林科学 Q2 FORESTRY Canadian Journal of Forest Research Pub Date : 2023-06-30 DOI:10.1139/cjfr-2023-0007
David L. R. Affleck, George C. Gaines
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引用次数: 0

摘要

许多国家管理国家森林清查方案,以便在广泛的空间和时间范围内对森林属性进行公正的估计。然而,管理和保护决策通常需要对更精细的时空域进行可靠的估计。在美国西部,野火活动正在扩大,火灾后的再生必须应对更温暖、更干燥的气候。我们评估了K近邻(KNN)策略在美国西部11个州的森林清查和分析地块火灾后测量中估计蓄积量的潜力,以及随后在由单个州和4年期内的焚烧区域集合定义的区域内进行模型辅助(MA)估计蓄积量。特别是,我们开发并评估了一种约束KNN形式,该形式允许在简单随机采样下通过仅绘制感兴趣域外部的测量值进行无偏MA域估计。基于地理、辐射测量和气候接近测量的KNN策略被发现在小区水平上比域平均值更准确地估计种群数量。应用选定的外部KNN策略也将MA域估计的标准误差比直接域估计减少了16%,但偏差校正引入了比合成估计的显著可变性。讨论了KNN外部约束的进一步应用。
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Model-assisted domain estimation of postfire tree regeneration in the western US using nearest neighbor techniques
Many nations administer national forest inventory programs for unbiased estimation of forest attributes over broad spatial and temporal extents. However, management and conservation decisions often demand reliable estimates for finer spatiotemporal domains. In the western US, wildfire activity is expanding and postfire regeneration must contend with a warmer, drier climate. We evaluate the potential of K nearest neighbor (KNN) strategies for estimation of stocking across postfire measurements of Forest Inventory & Analysis plots in 11 western US states, and subsequently for model-assisted (MA) estimation of stocking over domains defined by aggregations of burned areas within individual states and 4-year periods. In particular, we develop and evaluate a form of constrained KNN that allows for unbiased MA domain estimation under simple random sampling by drawing only on measurements external to a domain of interest. KNN strategies based on geographically, radiometrically, and climatically proximate measurements are found to provide more accurate estimates of stocking at the plot level than domain means. Applying the selected external KNN strategy also reduced standard errors of MA domain estimates by 16% over direct domain estimators, but bias correction introduces substantial variability over synthetic estimates. Further applications of the external constraint imposed on KNN are discussed.
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来源期刊
CiteScore
4.20
自引率
9.10%
发文量
109
审稿时长
3 months
期刊介绍: Published since 1971, the Canadian Journal of Forest Research is a monthly journal that features articles, reviews, notes and concept papers on a broad spectrum of forest sciences, including biometrics, conservation, disturbances, ecology, economics, entomology, genetics, hydrology, management, nutrient cycling, pathology, physiology, remote sensing, silviculture, social sciences, soils, stand dynamics, and wood science, all in relation to the understanding or management of ecosystem services. It also publishes special issues dedicated to a topic of current interest.
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