Local prediction of stand structure using linear prediction theory in Scots pine-dominated stands in Finland

This study produced a family of models for eight standard stand characteristics, frequency and basal area-based diameter distributions, and a height curve for stands in Finland dominated by Scots pine (Pinus sylvestris L.). The data consisted of 752 National Forest Inventory-based sam...

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Main Author: Siipilehto, Jouni
Format: Article
Language:English
Published: Finnish Society of Forest Science 2011-01-01
Series:Silva Fennica
Online Access:https://www.silvafennica.fi/article/99
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spelling doaj-0488a00a131f4501accc5907169e7db32020-11-25T02:54:16ZengFinnish Society of Forest ScienceSilva Fennica2242-40752011-01-0145410.14214/sf.99Local prediction of stand structure using linear prediction theory in Scots pine-dominated stands in FinlandSiipilehto, Jouni This study produced a family of models for eight standard stand characteristics, frequency and basal area-based diameter distributions, and a height curve for stands in Finland dominated by Scots pine (Pinus sylvestris L.). The data consisted of 752 National Forest Inventory-based sample plots, measured three times between 1976 and 2001. Of the data, 75% were randomly selected for modelling and 25% left out for model evaluation. Base prediction models were constructed as functions of stand age, location and site providing strongly average expectations. These expectations were then calibrated with the known stand variables using linear prediction theory when estimating the best linear unbiased predictor (BLUP). Three stand variables, typically assessed in Finnish forest management planning fieldwork, were quite effective for calibrating the expectation for the unknown variable. In the case of optional distributions, it was essential to choose the weighting of the diameter distribution model such that the available input variables and the model applied were based on the same scale (e.g. arithmetic stand variables for frequency distribution). Additional input variables generally improved the accuracy of the validated characteristics, but the improvements in the predicted distributions were most noteworthy when the arithmetic mean and basal area-weighted median were simultaneously included in the BLUP estimation. The BLUP method provided a flexible approach for characterising relationships among stand variables, alternative size distributions and the heightâdiameter curve. Models are intended for practical use in the MOTTI simulator.https://www.silvafennica.fi/article/99
collection DOAJ
language English
format Article
sources DOAJ
author Siipilehto, Jouni
spellingShingle Siipilehto, Jouni
Local prediction of stand structure using linear prediction theory in Scots pine-dominated stands in Finland
Silva Fennica
author_facet Siipilehto, Jouni
author_sort Siipilehto, Jouni
title Local prediction of stand structure using linear prediction theory in Scots pine-dominated stands in Finland
title_short Local prediction of stand structure using linear prediction theory in Scots pine-dominated stands in Finland
title_full Local prediction of stand structure using linear prediction theory in Scots pine-dominated stands in Finland
title_fullStr Local prediction of stand structure using linear prediction theory in Scots pine-dominated stands in Finland
title_full_unstemmed Local prediction of stand structure using linear prediction theory in Scots pine-dominated stands in Finland
title_sort local prediction of stand structure using linear prediction theory in scots pine-dominated stands in finland
publisher Finnish Society of Forest Science
series Silva Fennica
issn 2242-4075
publishDate 2011-01-01
description This study produced a family of models for eight standard stand characteristics, frequency and basal area-based diameter distributions, and a height curve for stands in Finland dominated by Scots pine (Pinus sylvestris L.). The data consisted of 752 National Forest Inventory-based sample plots, measured three times between 1976 and 2001. Of the data, 75% were randomly selected for modelling and 25% left out for model evaluation. Base prediction models were constructed as functions of stand age, location and site providing strongly average expectations. These expectations were then calibrated with the known stand variables using linear prediction theory when estimating the best linear unbiased predictor (BLUP). Three stand variables, typically assessed in Finnish forest management planning fieldwork, were quite effective for calibrating the expectation for the unknown variable. In the case of optional distributions, it was essential to choose the weighting of the diameter distribution model such that the available input variables and the model applied were based on the same scale (e.g. arithmetic stand variables for frequency distribution). Additional input variables generally improved the accuracy of the validated characteristics, but the improvements in the predicted distributions were most noteworthy when the arithmetic mean and basal area-weighted median were simultaneously included in the BLUP estimation. The BLUP method provided a flexible approach for characterising relationships among stand variables, alternative size distributions and the heightâdiameter curve. Models are intended for practical use in the MOTTI simulator.
url https://www.silvafennica.fi/article/99
work_keys_str_mv AT siipilehtojouni localpredictionofstandstructureusinglinearpredictiontheoryinscotspinedominatedstandsinfinland
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