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Current and next-year cranberry yields predicted from local features and carryover effects

Wisconsin and Quebec are the world leading cranberry-producing regions. Cranberries are grown in acidic, naturally low-fertility sandy beds. Cranberry fertilization is guided by general soil and tissue nutrient tests in addition to yield target and vegetative biomass. However, other factors such as...

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Autores principales: Parent, Léon Etienne, Jamaly, Reza, Atucha, Amaya, Jeanne Parent, Elizabeth, Workmaster, Beth Ann, Ziadi, Noura, Parent, Serge-Étienne
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8109790/
https://www.ncbi.nlm.nih.gov/pubmed/33970921
http://dx.doi.org/10.1371/journal.pone.0250575
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author Parent, Léon Etienne
Jamaly, Reza
Atucha, Amaya
Jeanne Parent, Elizabeth
Workmaster, Beth Ann
Ziadi, Noura
Parent, Serge-Étienne
author_facet Parent, Léon Etienne
Jamaly, Reza
Atucha, Amaya
Jeanne Parent, Elizabeth
Workmaster, Beth Ann
Ziadi, Noura
Parent, Serge-Étienne
author_sort Parent, Léon Etienne
collection PubMed
description Wisconsin and Quebec are the world leading cranberry-producing regions. Cranberries are grown in acidic, naturally low-fertility sandy beds. Cranberry fertilization is guided by general soil and tissue nutrient tests in addition to yield target and vegetative biomass. However, other factors such as cultivar, location, and carbon and nutrient storage impact cranberry nutrition and yield. The objective of this study was to customize nutrient diagnosis and fertilizer recommendation at local scale and for next-year cranberry production after accounting for local factors and carbon and nutrient carryover effects. We collected 1768 observations from on-farm surveys and fertilizer trials in Quebec and Wisconsin to elaborate a machine learning model using minimum datasets. We tested carryover effects in a 5-year Quebec fertilizer experiment established on permanent plots. Micronutrients contributed more than macronutrients to variation in tissue compositions. Random Forest model related accurately current-year berry yield to location, cultivars, climatic indices, fertilization, and tissue and soil tests as features (classification accuracy of 0.83). Comparing compositions of defective and successful tissue compositions in the Euclidean space of tissue compositions, the general across-factor diagnosis differed from the local factor-specific diagnosis. Nutrient standards elaborated in one region could hardly be transposed to another and, within the same region, from one bed to another due to site-specific characteristics. Next-year yield and nutrient adjustment could be predicted accurately from current-year yield and tissue composition and other features, with R(2) value of 0.73 in regression mode and classification accuracy of 0.85. Compositional and machine learning methods proved to be effective to customize nutrient diagnosis and predict site-specific measures for nutrient management of cranberry stands. This study emphasized the need to acquire large experimental and observational datasets to capture the numerous factor combinations impacting current and next-year cranberry yields at local scale.
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spelling pubmed-81097902021-05-21 Current and next-year cranberry yields predicted from local features and carryover effects Parent, Léon Etienne Jamaly, Reza Atucha, Amaya Jeanne Parent, Elizabeth Workmaster, Beth Ann Ziadi, Noura Parent, Serge-Étienne PLoS One Research Article Wisconsin and Quebec are the world leading cranberry-producing regions. Cranberries are grown in acidic, naturally low-fertility sandy beds. Cranberry fertilization is guided by general soil and tissue nutrient tests in addition to yield target and vegetative biomass. However, other factors such as cultivar, location, and carbon and nutrient storage impact cranberry nutrition and yield. The objective of this study was to customize nutrient diagnosis and fertilizer recommendation at local scale and for next-year cranberry production after accounting for local factors and carbon and nutrient carryover effects. We collected 1768 observations from on-farm surveys and fertilizer trials in Quebec and Wisconsin to elaborate a machine learning model using minimum datasets. We tested carryover effects in a 5-year Quebec fertilizer experiment established on permanent plots. Micronutrients contributed more than macronutrients to variation in tissue compositions. Random Forest model related accurately current-year berry yield to location, cultivars, climatic indices, fertilization, and tissue and soil tests as features (classification accuracy of 0.83). Comparing compositions of defective and successful tissue compositions in the Euclidean space of tissue compositions, the general across-factor diagnosis differed from the local factor-specific diagnosis. Nutrient standards elaborated in one region could hardly be transposed to another and, within the same region, from one bed to another due to site-specific characteristics. Next-year yield and nutrient adjustment could be predicted accurately from current-year yield and tissue composition and other features, with R(2) value of 0.73 in regression mode and classification accuracy of 0.85. Compositional and machine learning methods proved to be effective to customize nutrient diagnosis and predict site-specific measures for nutrient management of cranberry stands. This study emphasized the need to acquire large experimental and observational datasets to capture the numerous factor combinations impacting current and next-year cranberry yields at local scale. Public Library of Science 2021-05-10 /pmc/articles/PMC8109790/ /pubmed/33970921 http://dx.doi.org/10.1371/journal.pone.0250575 Text en © 2021 Parent et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Parent, Léon Etienne
Jamaly, Reza
Atucha, Amaya
Jeanne Parent, Elizabeth
Workmaster, Beth Ann
Ziadi, Noura
Parent, Serge-Étienne
Current and next-year cranberry yields predicted from local features and carryover effects
title Current and next-year cranberry yields predicted from local features and carryover effects
title_full Current and next-year cranberry yields predicted from local features and carryover effects
title_fullStr Current and next-year cranberry yields predicted from local features and carryover effects
title_full_unstemmed Current and next-year cranberry yields predicted from local features and carryover effects
title_short Current and next-year cranberry yields predicted from local features and carryover effects
title_sort current and next-year cranberry yields predicted from local features and carryover effects
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8109790/
https://www.ncbi.nlm.nih.gov/pubmed/33970921
http://dx.doi.org/10.1371/journal.pone.0250575
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