Development and evaluation of prediction equations for NIR instrument, measuring fat in Atlantic Salmon (salmno salar ) fillets, using multivariate methods.

Knowledge of fat in salmon is extremely important to salmon breeder and the whole salmon industry. By monitoring fat in salmon fillet, huge amount of money will be saved. Several methods are available to determine fat in salmon fillets. Stofnfiskur Iceland decided to buy the NIR instrument Qmonitor...

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Bibliographic Details
Main Author: Kristjánsson, Ólafur
Format: Master Thesis
Language:English
Published: Norwegian University of Life Sciences, Ås 2012
Subjects:
Online Access:http://hdl.handle.net/11250/186355
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spelling ftunivmob:oai:nmbu.brage.unit.no:11250/186355 2023-05-15T15:33:02+02:00 Development and evaluation of prediction equations for NIR instrument, measuring fat in Atlantic Salmon (salmno salar ) fillets, using multivariate methods. Kristjánsson, Ólafur 2012 application/pdf http://hdl.handle.net/11250/186355 eng eng Norwegian University of Life Sciences, Ås http://hdl.handle.net/11250/186355 105 VDP::Agriculture and fishery disciplines: 900::Fisheries science: 920 VDP::Technology: 500::Food science and technology: 600 Master thesis 2012 ftunivmob 2021-09-23T20:15:08Z Knowledge of fat in salmon is extremely important to salmon breeder and the whole salmon industry. By monitoring fat in salmon fillet, huge amount of money will be saved. Several methods are available to determine fat in salmon fillets. Stofnfiskur Iceland decided to buy the NIR instrument Qmonitor which was installed in there slaughter line. When applying existing prediction model to results obtained by Qmonitor the prediction of fat was wrong. Aim of this thesis is to develop a new valid prediction model which will be applied to results obtained by the NIR instrument Qmonitor when measuring fish from all families in the nucleus of Stofnfiskur for breeding purposes. This thesis will provide background of NIR, breeding and problems of modeling fat in salmon fillet. Main goal is to discuss methods needed to explore the data, develop prediction model and validate the prediction model obtained. Use of recently developed CPLS will then be introduced in order to reduce the prediction error of existing methodology when creating prediction model. All methods will be compared and there qualities and drawback discussed. Three datasets are presented in the thesis were two of them where made for this thesis and one comes from paper defining methods used when modeling QMonitor data. In the paper where the method of picking out five $14$ mm plugs from the fillet to capture the variation of fat in the fillet a RMSEP value reported was $1.96$. By using Canonical Partial Least Squares with the additional response a location of the plug, the RMSEP of the same dataset was $1.75$. On the dataset made for this thesis to develope prediction model for the QMonitor in Iceland CPLS had the best performance obtaining RMSEP value of $1.8$. Additional values which improved the prediction model where additional information about the plugs such as thickness of the plug, moisture in the plug and weight of the plug. Stofnfiskur Master Thesis Atlantic salmon Iceland Open archive Norwegian University of Life Sciences: Brage NMBU Slaughter ENVELOPE(-85.633,-85.633,-78.617,-78.617)
institution Open Polar
collection Open archive Norwegian University of Life Sciences: Brage NMBU
op_collection_id ftunivmob
language English
topic VDP::Agriculture and fishery disciplines: 900::Fisheries science: 920
VDP::Technology: 500::Food science and technology: 600
spellingShingle VDP::Agriculture and fishery disciplines: 900::Fisheries science: 920
VDP::Technology: 500::Food science and technology: 600
Kristjánsson, Ólafur
Development and evaluation of prediction equations for NIR instrument, measuring fat in Atlantic Salmon (salmno salar ) fillets, using multivariate methods.
topic_facet VDP::Agriculture and fishery disciplines: 900::Fisheries science: 920
VDP::Technology: 500::Food science and technology: 600
description Knowledge of fat in salmon is extremely important to salmon breeder and the whole salmon industry. By monitoring fat in salmon fillet, huge amount of money will be saved. Several methods are available to determine fat in salmon fillets. Stofnfiskur Iceland decided to buy the NIR instrument Qmonitor which was installed in there slaughter line. When applying existing prediction model to results obtained by Qmonitor the prediction of fat was wrong. Aim of this thesis is to develop a new valid prediction model which will be applied to results obtained by the NIR instrument Qmonitor when measuring fish from all families in the nucleus of Stofnfiskur for breeding purposes. This thesis will provide background of NIR, breeding and problems of modeling fat in salmon fillet. Main goal is to discuss methods needed to explore the data, develop prediction model and validate the prediction model obtained. Use of recently developed CPLS will then be introduced in order to reduce the prediction error of existing methodology when creating prediction model. All methods will be compared and there qualities and drawback discussed. Three datasets are presented in the thesis were two of them where made for this thesis and one comes from paper defining methods used when modeling QMonitor data. In the paper where the method of picking out five $14$ mm plugs from the fillet to capture the variation of fat in the fillet a RMSEP value reported was $1.96$. By using Canonical Partial Least Squares with the additional response a location of the plug, the RMSEP of the same dataset was $1.75$. On the dataset made for this thesis to develope prediction model for the QMonitor in Iceland CPLS had the best performance obtaining RMSEP value of $1.8$. Additional values which improved the prediction model where additional information about the plugs such as thickness of the plug, moisture in the plug and weight of the plug. Stofnfiskur
format Master Thesis
author Kristjánsson, Ólafur
author_facet Kristjánsson, Ólafur
author_sort Kristjánsson, Ólafur
title Development and evaluation of prediction equations for NIR instrument, measuring fat in Atlantic Salmon (salmno salar ) fillets, using multivariate methods.
title_short Development and evaluation of prediction equations for NIR instrument, measuring fat in Atlantic Salmon (salmno salar ) fillets, using multivariate methods.
title_full Development and evaluation of prediction equations for NIR instrument, measuring fat in Atlantic Salmon (salmno salar ) fillets, using multivariate methods.
title_fullStr Development and evaluation of prediction equations for NIR instrument, measuring fat in Atlantic Salmon (salmno salar ) fillets, using multivariate methods.
title_full_unstemmed Development and evaluation of prediction equations for NIR instrument, measuring fat in Atlantic Salmon (salmno salar ) fillets, using multivariate methods.
title_sort development and evaluation of prediction equations for nir instrument, measuring fat in atlantic salmon (salmno salar ) fillets, using multivariate methods.
publisher Norwegian University of Life Sciences, Ås
publishDate 2012
url http://hdl.handle.net/11250/186355
long_lat ENVELOPE(-85.633,-85.633,-78.617,-78.617)
geographic Slaughter
geographic_facet Slaughter
genre Atlantic salmon
Iceland
genre_facet Atlantic salmon
Iceland
op_source 105
op_relation http://hdl.handle.net/11250/186355
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