Evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on Scots pine in northern Sweden

Nordic wood procurement is customer-oriented and involves real-time steering of the procurement according to products and markets. The development of better products and increased process efficiency is important for industrial customers. Sawmills’ demand usually covers total volume, species, lengths...

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Main Author: Holappa Jonsson, Sara
Format: Other/Unknown Material
Language:English
Swedish
Published: SLU/Department of Forest Biomaterials and Technology (from 131204) 2018
Subjects:
Online Access:https://stud.epsilon.slu.se/13767/
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spelling ftsluppsalast:oai:stud.epsilon.slu.se:13767 2023-05-15T17:25:12+02:00 Evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on Scots pine in northern Sweden Utvärdering av nyttjande av skördardata och egenskapsmodeller för ökad precision i utbytes- och egenskapsprognoser för sågtimmer av svensk tall : en fallstudie i norra Sverige Holappa Jonsson, Sara 2018 https://stud.epsilon.slu.se/13767/ eng swe eng swe SLU/Department of Forest Biomaterials and Technology (from 131204) https://stud.epsilon.slu.se/13767/ forecasting wood characteristics imputation value chain wood procurement heartwood diameter big data H3 2018 ftsluppsalast 2022-09-10T18:12:06Z Nordic wood procurement is customer-oriented and involves real-time steering of the procurement according to products and markets. The development of better products and increased process efficiency is important for industrial customers. Sawmills’ demand usually covers total volume, species, lengths, diameter, time of delivery and stock levels, but the development is moving towards a more specific demand targeting also wood characteristics. Thanks to StanForD2010 it is possible to store detailed data of harvested trees through harvester files from previously harvested stands in a standardized manner. Skogforsk has developed the tool hprImputation, which uses kMSN imputation to make yield forecasting of planned harvesting stands based on the known outcome from stored harvester data of similar stands. It is possible to combine the imputation tool with earlier developed models for forecasting wood characteristics, thereby en-abling forecasts on both stand- and log level. With the possibilities to measure qual-ity with 3D/X-ray scanners in sawmills, the forecasting precision on log level can be evaluated. The aim of this masters’ thesis was firstly to evaluate the perceived benefits of in-creased precision in yield forecasting from a value chain perspective and identify key forecasting variables for different perspectives of the value chain. Secondly, the aim was to evaluate the influence of applying the imputation method based on har-vester data and wood properties models on the forecasting precision for key varia-bles at the case company SCA. The study showed that there is a considerable need and value potential for more accurate and detailed forecasting, which would improve the management along the whole value chain from forest to sales of sawmill products. However, there is a need for development of analytical tools that enable a more standardised and transparent handling of the data. The imputation method developed by Skogforsk provided higher accuracy of fore-casting on stand level compared to traditional ... Other/Unknown Material Norra Sverige Northern Sweden Swedish University of Agricultural Sciences: Epsilon Archive for Student Projects
institution Open Polar
collection Swedish University of Agricultural Sciences: Epsilon Archive for Student Projects
op_collection_id ftsluppsalast
language English
Swedish
topic forecasting
wood characteristics
imputation
value chain
wood procurement
heartwood diameter
big data
spellingShingle forecasting
wood characteristics
imputation
value chain
wood procurement
heartwood diameter
big data
Holappa Jonsson, Sara
Evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on Scots pine in northern Sweden
topic_facet forecasting
wood characteristics
imputation
value chain
wood procurement
heartwood diameter
big data
description Nordic wood procurement is customer-oriented and involves real-time steering of the procurement according to products and markets. The development of better products and increased process efficiency is important for industrial customers. Sawmills’ demand usually covers total volume, species, lengths, diameter, time of delivery and stock levels, but the development is moving towards a more specific demand targeting also wood characteristics. Thanks to StanForD2010 it is possible to store detailed data of harvested trees through harvester files from previously harvested stands in a standardized manner. Skogforsk has developed the tool hprImputation, which uses kMSN imputation to make yield forecasting of planned harvesting stands based on the known outcome from stored harvester data of similar stands. It is possible to combine the imputation tool with earlier developed models for forecasting wood characteristics, thereby en-abling forecasts on both stand- and log level. With the possibilities to measure qual-ity with 3D/X-ray scanners in sawmills, the forecasting precision on log level can be evaluated. The aim of this masters’ thesis was firstly to evaluate the perceived benefits of in-creased precision in yield forecasting from a value chain perspective and identify key forecasting variables for different perspectives of the value chain. Secondly, the aim was to evaluate the influence of applying the imputation method based on har-vester data and wood properties models on the forecasting precision for key varia-bles at the case company SCA. The study showed that there is a considerable need and value potential for more accurate and detailed forecasting, which would improve the management along the whole value chain from forest to sales of sawmill products. However, there is a need for development of analytical tools that enable a more standardised and transparent handling of the data. The imputation method developed by Skogforsk provided higher accuracy of fore-casting on stand level compared to traditional ...
format Other/Unknown Material
author Holappa Jonsson, Sara
author_facet Holappa Jonsson, Sara
author_sort Holappa Jonsson, Sara
title Evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on Scots pine in northern Sweden
title_short Evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on Scots pine in northern Sweden
title_full Evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on Scots pine in northern Sweden
title_fullStr Evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on Scots pine in northern Sweden
title_full_unstemmed Evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on Scots pine in northern Sweden
title_sort evaluation of the increased pre-harvest forecasting precision of sawlog supply by use of historical harvester data and wood properties models : a case study on scots pine in northern sweden
publisher SLU/Department of Forest Biomaterials and Technology (from 131204)
publishDate 2018
url https://stud.epsilon.slu.se/13767/
genre Norra Sverige
Northern Sweden
genre_facet Norra Sverige
Northern Sweden
op_relation https://stud.epsilon.slu.se/13767/
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