Modelling Soluble Solids Content Accumulation in ‘Braeburn’ Apples

Optical sensor data can be used to determine changes in anthocyanins, chlorophyll and soluble solids content (SSC) in apple production. In this study, visible and near-infrared spectra (729 to 975 nm) were transformed to SSC values by advanced multivariate calibration models i.e., partial least squa...

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Main Authors: Konni Biegert, Daniel Stöckeler, Roy J. McCormick, Peter Braun
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Plants
Subjects:
Online Access:https://www.mdpi.com/2223-7747/10/2/302
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spelling doaj-96439f674dcf4f5cb40c1621621b3eae2021-02-06T00:00:56ZengMDPI AGPlants2223-77472021-02-011030230210.3390/plants10020302Modelling Soluble Solids Content Accumulation in ‘Braeburn’ ApplesKonni Biegert0Daniel Stöckeler1Roy J. McCormick2Peter Braun3Kompetenzzentrum Obstbau Bodensee, Fachgebiet Ertragsphysiologie, 88213 Ravensburg, GermanyTUM School of Life Sciences, Technische Universität München, 85354 Freising, GermanyKompetenzzentrum Obstbau Bodensee, Fachgebiet Ertragsphysiologie, 88213 Ravensburg, GermanyInstitut für Obstbau, Hochschule Geisenheim University, 65366 Geisenheim, GermanyOptical sensor data can be used to determine changes in anthocyanins, chlorophyll and soluble solids content (SSC) in apple production. In this study, visible and near-infrared spectra (729 to 975 nm) were transformed to SSC values by advanced multivariate calibration models i.e., partial least square regression (PLSR) in order to test the substitution of destructive chemical analyses through non-destructive optical measurements. Spectral field scans were carried out from 2016 to 2018 on marked ‘Braeburn’ apples in Southwest Germany. The study combines an in-depth statistical analyses of longitudinal SSC values with horticultural knowledge to set guidelines for further applied use of SSC predictions in the orchard to gain insights into apple carbohydrate physiology. The PLSR models were investigated with respect to sample size, seasonal variation, laboratory errors and the explanatory power of PLSR models when applied to independent samples. As a result of Monte Carlo simulations, PLSR modelled SSC only depended to a minor extent on the absolute number and accuracy of the wet chemistry laboratory calibration measurements. The comparison between non-destructive SSC determinations in the orchard with standard destructive lab testing at harvest on an independent sample showed mean differences of 0.5% SSC over all study years. SSC modelling with longitudinal linear mixed-effect models linked high crop loads to lower SSC values at harvest and higher SSC values for fruit from the top part of a tree.https://www.mdpi.com/2223-7747/10/2/302Vis/NIRrepeated longitudinal measurementsapple maturationprecision horticulture
collection DOAJ
language English
format Article
sources DOAJ
author Konni Biegert
Daniel Stöckeler
Roy J. McCormick
Peter Braun
spellingShingle Konni Biegert
Daniel Stöckeler
Roy J. McCormick
Peter Braun
Modelling Soluble Solids Content Accumulation in ‘Braeburn’ Apples
Plants
Vis/NIR
repeated longitudinal measurements
apple maturation
precision horticulture
author_facet Konni Biegert
Daniel Stöckeler
Roy J. McCormick
Peter Braun
author_sort Konni Biegert
title Modelling Soluble Solids Content Accumulation in ‘Braeburn’ Apples
title_short Modelling Soluble Solids Content Accumulation in ‘Braeburn’ Apples
title_full Modelling Soluble Solids Content Accumulation in ‘Braeburn’ Apples
title_fullStr Modelling Soluble Solids Content Accumulation in ‘Braeburn’ Apples
title_full_unstemmed Modelling Soluble Solids Content Accumulation in ‘Braeburn’ Apples
title_sort modelling soluble solids content accumulation in ‘braeburn’ apples
publisher MDPI AG
series Plants
issn 2223-7747
publishDate 2021-02-01
description Optical sensor data can be used to determine changes in anthocyanins, chlorophyll and soluble solids content (SSC) in apple production. In this study, visible and near-infrared spectra (729 to 975 nm) were transformed to SSC values by advanced multivariate calibration models i.e., partial least square regression (PLSR) in order to test the substitution of destructive chemical analyses through non-destructive optical measurements. Spectral field scans were carried out from 2016 to 2018 on marked ‘Braeburn’ apples in Southwest Germany. The study combines an in-depth statistical analyses of longitudinal SSC values with horticultural knowledge to set guidelines for further applied use of SSC predictions in the orchard to gain insights into apple carbohydrate physiology. The PLSR models were investigated with respect to sample size, seasonal variation, laboratory errors and the explanatory power of PLSR models when applied to independent samples. As a result of Monte Carlo simulations, PLSR modelled SSC only depended to a minor extent on the absolute number and accuracy of the wet chemistry laboratory calibration measurements. The comparison between non-destructive SSC determinations in the orchard with standard destructive lab testing at harvest on an independent sample showed mean differences of 0.5% SSC over all study years. SSC modelling with longitudinal linear mixed-effect models linked high crop loads to lower SSC values at harvest and higher SSC values for fruit from the top part of a tree.
topic Vis/NIR
repeated longitudinal measurements
apple maturation
precision horticulture
url https://www.mdpi.com/2223-7747/10/2/302
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