测量误差对线性和非线性回归全林分产量模型估计的影响

IF 1.8 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
John M. Zobel
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引用次数: 0

摘要

全林分产量模型系统有助于预测森林属性,但其输入可能难以准确测量。本研究进行敏感性分析,以检验系统和随机测量误差对代表性方程组输出的影响。将模拟误差添加到解释变量林龄、站点索引或两者中。结果表明,一个变量的较大系统误差往往会在所有模型中产生中等到较大百分比的变化,特别是高度和体积方程(通常变化50%)。这两个变量的系统误差放大了这种影响,特别是对年轻的、生产力较低的林分。随机误差极大地增加了估计变率(一些相对标准误差约为50%),特别是在年轻年龄和低站点指数的高度和体积模型中。这些结果表明,测量误差可能在很大程度上改变预测,并增加不确定性,当使用整个林分产量模型时,强调需要仔细的船员培训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measurement error effects on estimates from linear and nonlinear regression whole‐stand yield models
Systems of whole‐stand yield models facilitate projections of forest attributes, but their inputs may be difficult to measure accurately. This study conducted sensitivity analyses to examine the effect of systematic and stochastic measurement errors on outputs from a representative system of equations. Simulated error was added to explanatory variables stand age, site index, or both. Results showed that large systematic error in one variable tended to produce moderate to large percent changes in all models, particularly the height and volume equations (often >50% change). Systematic error in both variables amplified this effect, especially for young, less productive stands. Stochastic error dramatically increased estimate variability (some relative standard errors >50%), particularly in the height and volume models at young ages and low site indices. These results suggest that measurement error may considerably alter projections and increase uncertainty when using whole‐stand yield models, highlighting the need for careful crew training.
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来源期刊
Natural Resource Modeling
Natural Resource Modeling 环境科学-环境科学
CiteScore
3.50
自引率
6.20%
发文量
28
审稿时长
>36 weeks
期刊介绍: Natural Resource Modeling is an international journal devoted to mathematical modeling of natural resource systems. It reflects the conceptual and methodological core that is common to model building throughout disciplines including such fields as forestry, fisheries, economics and ecology. This core draws upon the analytical and methodological apparatus of mathematics, statistics, and scientific computing.
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