Using X-ray CT Scanned Reconstructed Logs to Predict Knot Characteristics and Tree Value

Research Highlights: Stand density was connected with wood quality and lumber production to develop a predictive model to better estimate tree value. Background and Objectives: The available standing wood volume in British Columbia (BC), Canada has consistently decreased since 1990. Better understan...

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Bibliographic Details
Main Authors: Airu Ji, Julie Cool, Isabelle Duchesne
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Forests
Subjects:
Online Access:https://www.mdpi.com/1999-4907/12/6/720
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spelling doaj-727544da2c7843a2a287ee190e994b352021-06-30T23:02:51ZengMDPI AGForests1999-49072021-06-011272072010.3390/f12060720Using X-ray CT Scanned Reconstructed Logs to Predict Knot Characteristics and Tree ValueAiru Ji0Julie Cool1Isabelle Duchesne2The Department of Wood Science, Faculty of Forestry, The University of British Columbia, 2424 Main Mall, Vancouver, BC V6T 1Z4, CanadaThe Department of Wood Science, Faculty of Forestry, The University of British Columbia, 2424 Main Mall, Vancouver, BC V6T 1Z4, CanadaThe Canadian Wood Fibre Centre, Natural Resources Canada, 1055 Du P.E.P.S. Street, P.O. Box 10380, Québec, QC G1V 4C7, CanadaResearch Highlights: Stand density was connected with wood quality and lumber production to develop a predictive model to better estimate tree value. Background and Objectives: The available standing wood volume in British Columbia (BC), Canada has consistently decreased since 1990. Better understanding the link between stand growth conditions, knot characteristics, the sawmilling process and product quality is essential in making informed forest management decisions and efficiently utilizing wood. The overall objective was to investigate and predict the impact of tree growth as affected by stand density on knot characteristics, lumber volume and value recoveries for two conifer species, two types of sawmills and three economic scenarios. Materials and Methods: Seventy-two amabilis fir and western hemlock trees were harvested from three stands located on Vancouver Island, BC. Sawlogs were scanned using an X-ray computed tomography (CT) scanner and images were processed to extract knot characteristics and reconstruct three-dimensional (3D) log models. The effects of three diameter at breast height (DBH) classes (30, 40 and 50 cm) and three stand densities on knot characteristics, including knot volume, number of knots, average knot area and knot/tree volume ratio, as well as the simulated lumber volume and value recoveries from two types of sawmills (i.e., Coastal and Interior) under three economic scenarios (i.e., baseline, optimistic, and pessimistic) were investigated. Results: As expected, the knot characteristics of both species increased with the DBH. The difference of knot distribution between amabilis fir and western hemlock suggests that the latter is more sensitive to growth site conditions. The sawmilling simulations revealed that the Coastal mill produced a lower lumber volume due to the type of products manufactured and the primary breakdown patterns being used. Conclusions: The developed linear mixed effects models based on the knot characteristics and tree features could predict the value of a standing tree and can be used for estimating preharvest stand value of similar Coastal Hem-Fir forests.https://www.mdpi.com/1999-4907/12/6/720CT scanningprediction modelsknot characteristicssawmilling simulationbreakdown optimizationamabilis fir
collection DOAJ
language English
format Article
sources DOAJ
author Airu Ji
Julie Cool
Isabelle Duchesne
spellingShingle Airu Ji
Julie Cool
Isabelle Duchesne
Using X-ray CT Scanned Reconstructed Logs to Predict Knot Characteristics and Tree Value
Forests
CT scanning
prediction models
knot characteristics
sawmilling simulation
breakdown optimization
amabilis fir
author_facet Airu Ji
Julie Cool
Isabelle Duchesne
author_sort Airu Ji
title Using X-ray CT Scanned Reconstructed Logs to Predict Knot Characteristics and Tree Value
title_short Using X-ray CT Scanned Reconstructed Logs to Predict Knot Characteristics and Tree Value
title_full Using X-ray CT Scanned Reconstructed Logs to Predict Knot Characteristics and Tree Value
title_fullStr Using X-ray CT Scanned Reconstructed Logs to Predict Knot Characteristics and Tree Value
title_full_unstemmed Using X-ray CT Scanned Reconstructed Logs to Predict Knot Characteristics and Tree Value
title_sort using x-ray ct scanned reconstructed logs to predict knot characteristics and tree value
publisher MDPI AG
series Forests
issn 1999-4907
publishDate 2021-06-01
description Research Highlights: Stand density was connected with wood quality and lumber production to develop a predictive model to better estimate tree value. Background and Objectives: The available standing wood volume in British Columbia (BC), Canada has consistently decreased since 1990. Better understanding the link between stand growth conditions, knot characteristics, the sawmilling process and product quality is essential in making informed forest management decisions and efficiently utilizing wood. The overall objective was to investigate and predict the impact of tree growth as affected by stand density on knot characteristics, lumber volume and value recoveries for two conifer species, two types of sawmills and three economic scenarios. Materials and Methods: Seventy-two amabilis fir and western hemlock trees were harvested from three stands located on Vancouver Island, BC. Sawlogs were scanned using an X-ray computed tomography (CT) scanner and images were processed to extract knot characteristics and reconstruct three-dimensional (3D) log models. The effects of three diameter at breast height (DBH) classes (30, 40 and 50 cm) and three stand densities on knot characteristics, including knot volume, number of knots, average knot area and knot/tree volume ratio, as well as the simulated lumber volume and value recoveries from two types of sawmills (i.e., Coastal and Interior) under three economic scenarios (i.e., baseline, optimistic, and pessimistic) were investigated. Results: As expected, the knot characteristics of both species increased with the DBH. The difference of knot distribution between amabilis fir and western hemlock suggests that the latter is more sensitive to growth site conditions. The sawmilling simulations revealed that the Coastal mill produced a lower lumber volume due to the type of products manufactured and the primary breakdown patterns being used. Conclusions: The developed linear mixed effects models based on the knot characteristics and tree features could predict the value of a standing tree and can be used for estimating preharvest stand value of similar Coastal Hem-Fir forests.
topic CT scanning
prediction models
knot characteristics
sawmilling simulation
breakdown optimization
amabilis fir
url https://www.mdpi.com/1999-4907/12/6/720
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