A decision support system for selective cleaning

Cleaning (pre-commercial thinning) costs have increased relative to logging and regeneration costs, creating a desire for rationalisation. Cleaning with robots may be a solution, but automating stem selections requires a decision support system (DSS) capable of rendering acceptable re...

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Main Authors: Vestlund, Karin, Nordfjell, Tomas, Eliasson, Lars, Karlsson, Anders
Format: Article
Language:English
Published: Finnish Society of Forest Science 2006-01-01
Series:Silva Fennica
Online Access:https://www.silvafennica.fi/article/343
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spelling doaj-b526a24099db43f39efbba44a45ea3492020-11-25T02:27:37ZengFinnish Society of Forest ScienceSilva Fennica2242-40752006-01-0140210.14214/sf.343A decision support system for selective cleaningVestlund, KarinNordfjell, TomasEliasson, LarsKarlsson, Anders Cleaning (pre-commercial thinning) costs have increased relative to logging and regeneration costs, creating a desire for rationalisation. Cleaning with robots may be a solution, but automating stem selections requires a decision support system (DSS) capable of rendering acceptable results. The aims were to develop a DSS for automation of individual stem selections in practical cleaning, and to test, using simulations, if it renders acceptable results. Data on 17 young forest stands were used to develop a DSS that selects stems by species, position (including distance and density parameters), diameter, and damage. Six simulations were run, following the DSS, with different target settings for density, percentage of deciduous stems and minimum distance between stems. The results depend on the initial state of the stands, but generally met the requested targets in an acceptable way. On average, the density results deviated by â20% to +6% from the target values, the amount of deciduous stems shifted towards the target values, and the proportion of stems with defined damaged decreased from initially 14â90% to 4â13%. The mean diameter at breast height increased and the minimum allowed distance between stems was never violated. The simulation results indicate that the DSS is operational. However, for implementation in robotics a crucial problem is to automatically perceive the selected attributes, so additional simulations with erroneous data were run. Correct measurements of diameters are less crucial than to find the majority of the trees and the majority of trees with damages.https://www.silvafennica.fi/article/343
collection DOAJ
language English
format Article
sources DOAJ
author Vestlund, Karin
Nordfjell, Tomas
Eliasson, Lars
Karlsson, Anders
spellingShingle Vestlund, Karin
Nordfjell, Tomas
Eliasson, Lars
Karlsson, Anders
A decision support system for selective cleaning
Silva Fennica
author_facet Vestlund, Karin
Nordfjell, Tomas
Eliasson, Lars
Karlsson, Anders
author_sort Vestlund, Karin
title A decision support system for selective cleaning
title_short A decision support system for selective cleaning
title_full A decision support system for selective cleaning
title_fullStr A decision support system for selective cleaning
title_full_unstemmed A decision support system for selective cleaning
title_sort decision support system for selective cleaning
publisher Finnish Society of Forest Science
series Silva Fennica
issn 2242-4075
publishDate 2006-01-01
description Cleaning (pre-commercial thinning) costs have increased relative to logging and regeneration costs, creating a desire for rationalisation. Cleaning with robots may be a solution, but automating stem selections requires a decision support system (DSS) capable of rendering acceptable results. The aims were to develop a DSS for automation of individual stem selections in practical cleaning, and to test, using simulations, if it renders acceptable results. Data on 17 young forest stands were used to develop a DSS that selects stems by species, position (including distance and density parameters), diameter, and damage. Six simulations were run, following the DSS, with different target settings for density, percentage of deciduous stems and minimum distance between stems. The results depend on the initial state of the stands, but generally met the requested targets in an acceptable way. On average, the density results deviated by â20% to +6% from the target values, the amount of deciduous stems shifted towards the target values, and the proportion of stems with defined damaged decreased from initially 14â90% to 4â13%. The mean diameter at breast height increased and the minimum allowed distance between stems was never violated. The simulation results indicate that the DSS is operational. However, for implementation in robotics a crucial problem is to automatically perceive the selected attributes, so additional simulations with erroneous data were run. Correct measurements of diameters are less crucial than to find the majority of the trees and the majority of trees with damages.
url https://www.silvafennica.fi/article/343
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