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A Multivariate Linear Mixed-Effects Model for the Generalization of Sample Tree Heights and Crown Ratios in the Finnish National Forest Inventory

机译:芬兰国家森林清单中样本树高和树冠比的广义多元线性混合效应模型

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摘要

The aim of this article was to develop a prediction model that could use the geographically representative but locally sparse sample tree data of the Finnish National Forest Inventory (FNFI) efficiently and account for the correlation structures in these data when generalizing sample tree characteristics over tally trees by species. The sample tree characteristics modeled were tree height and the ratio of live crown length to tree height. These are needed for all FNFI tally trees to obtain their stem volumes and biomasses. As a result, a multivariate linear mixed-effects model with species-specific parameters designed for the multiresponse FNFI data was developed. The fixed parts of the two linear models of the simultaneous system consist of both tree and stand-level independent variables such as dbh, mensurable stand characteristics, and site quality indicators. Because of the hierarchically correlated data, the intercepts and the slopes (i.e., the coefficients associated with tree characteristics) in the two models were assumed to vary randomly over clusters and forest stands within them. The random coefficients were also associated with components for random species effects. The selected formulation of the random parts of the models makes it possible to obtain localized species-specific curves for clusters and forest stands even with one measured sample tree. The results show that the multivariate mixed-effects model with species-specific components is a stable, efficient predictor and well applicable to locally sparse but geographically representative data of the FNFI type. [PUBLICATION ABSTRACT]
机译:本文的目的是开发一个预测模型,该模型可以有效地使用芬兰国家森林清单(FNFI)的具有地域代表性但局部稀疏的样本树数据,并在对统计树的样本树特征进行概括时考虑这些数据中的相关结构。按物种。建模的样本树特征是树高和活树冠长度与树高的比率。所有FNFI理货树都需要这些,以获取其茎干量和生物量。结果,开发了具有针对多响应FNFI数据设计的具有物种特定参数的多元线性混合效应模型。同步系统的两个线性模型的固定部分包括树木和林分级别的独立变量,例如dbh,可测量的林分特性和场地质量指标。由于存在与数据层次相关的数据,因此假设两个模型中的截距和坡度(即与树木特征相关的系数)在簇和其中的林分之间随机变化。随机系数还与随机物种效应的成分相关。选择模型随机部分的公式,即使使用一棵测量的样本树,也可以获得集群和林分的局部特定物种曲线。结果表明,具有物种特定成分的多元混合效应模型是一种稳定,有效的预测因子,非常适用于FNFI类型的局部稀疏但具有地理代表性的数据。 [出版物摘要]

著录项

  • 来源
    《Forest Science》 |2009年第6期|p.480-493|共14页
  • 作者

    Kalle Eerikäinen;

  • 作者单位

    Kalle Eerikäinen, Finnish Forest Research Institute, Joensuu Research Unit, Yliopistokatu 6, FI-80100 Joensuu, Finland - Phone: +358-10-211-3165, Fax: +358-10-21 1-31 13, kalle.eerikainen@metla.fiAcknowledgments: This work was carried out in the Joensuu Research Unit of the Finnish Forest Research Institute as part of the project "National Forest Inventory 10" (Project ID: 3401). I am grateful to Dr. Kari T. Korhonen, Dr. Juha Lappi, and Mr. Jaakko Heinonen for their support and valuable comments. Thanks are also due to Drs. Jari Miina and Risto Ojansuu for inspiring discussions. I also thank Mr. Juho Pitkanen for his help with the data compilation, and Dr. Jarno Tuimala for his assistance in using the supercomputer Murska of the Finnish G? Center for Science (CSC). Finally, I wish to thank Mr. Malcolm Hicks for revising my English.Manuscript received March 30, 2008, accepted June 10, 2009 Copyright © 2009 by the Society of American Foresters,;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 13:45:58

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