Cargando…
Agricultural Parameters and Essential Oil Content Composition Prediction of Aniseed, Based on Growing Year, Locality and Fertilization Type—An Artificial Neural Network Approach
SIMPLE SUMMARY: The artificial neural network (ANN) model was developed to predict and optimize the aniseed parameters including: plant height, umbel diameter, number of umbels, number of seeds, 1000-seed weight, yield per plant, plant weight, harvest index, yield per ha, essential oil yield, germin...
Autores principales: | , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
MDPI
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9694612/ https://www.ncbi.nlm.nih.gov/pubmed/36362877 http://dx.doi.org/10.3390/life12111722 |
_version_ | 1784837844018135040 |
---|---|
author | Pezo, Lato Lončar, Biljana Šovljanski, Olja Tomić, Ana Travičić, Vanja Pezo, Milada Aćimović, Milica |
author_facet | Pezo, Lato Lončar, Biljana Šovljanski, Olja Tomić, Ana Travičić, Vanja Pezo, Milada Aćimović, Milica |
author_sort | Pezo, Lato |
collection | PubMed |
description | SIMPLE SUMMARY: The artificial neural network (ANN) model was developed to predict and optimize the aniseed parameters including: plant height, umbel diameter, number of umbels, number of seeds, 1000-seed weight, yield per plant, plant weight, harvest index, yield per ha, essential oil yield, germination energy, total germination and essential oil content; as well as the content of obtained essential oil, such as: limonene, cis-dihydro carvone, methyl chavicol, carvone, cis-anethole, trans-anethole, β-elemene, α-himachalene, trans-β-farnesene, γ-himachalene, trans-muurola-4(14),5-diene, α-zingiberene, β-himachalene, β-bisabolene, trans-pseudoisoeugenyl 2-methylbutyrate and epoxy-pseudoisoeugenyl 2-methylbutyrate), according to growing year, locality and fertilization type. ABSTRACT: Predicting yield is essential for producers, stakeholders and international interchange demand. The majority of the divergence in yield and essential oil content is associated with environmental aspects, including weather conditions, soil variety and cultivation techniques. Therefore, aniseed production was examined in this study. The categorical input variables for artificial neural network modelling were growing year (two successive growing years), growing locality (three different locations in Vojvodina Province, Serbia) and fertilization type (six different treatments). The output variables were morphological and quality parameters, with agricultural importance such as plant height, umbel diameter, number of umbels, number of seeds per umbel, 1000-seed weight, seed yield per plant, plant weight, harvest index, yield per ha, essential oil (EO) yield, germination energy, total germination, EO content, as well as the share of EOs compounds, including limonene, cis-dihydro carvone, methyl chavicol, carvone, cis-anethole, trans-anethole, β-elemene, α-himachalene, trans-β-farnesene, γ-himachalene, trans-muurola-4(14),5-diene, α-zingiberene, β-himachalene, β-bisabolene, trans-pseudoisoeugenyl 2-methylbutyrate and epoxy-pseudoisoeugenyl 2-methylbutyrate. The ANN model predicted agricultural parameters accurately, showing r(2) values between 0.555 and 0.918, while r(2) values for the forecasting of essential oil content were between 0.379 and 0.908. According to global sensitivity analysis, the fertilization type was a more influential variable to agricultural parameters, while the location site was more influential to essential oils content. |
format | Online Article Text |
id | pubmed-9694612 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | MDPI |
record_format | MEDLINE/PubMed |
spelling | pubmed-96946122022-11-26 Agricultural Parameters and Essential Oil Content Composition Prediction of Aniseed, Based on Growing Year, Locality and Fertilization Type—An Artificial Neural Network Approach Pezo, Lato Lončar, Biljana Šovljanski, Olja Tomić, Ana Travičić, Vanja Pezo, Milada Aćimović, Milica Life (Basel) Article SIMPLE SUMMARY: The artificial neural network (ANN) model was developed to predict and optimize the aniseed parameters including: plant height, umbel diameter, number of umbels, number of seeds, 1000-seed weight, yield per plant, plant weight, harvest index, yield per ha, essential oil yield, germination energy, total germination and essential oil content; as well as the content of obtained essential oil, such as: limonene, cis-dihydro carvone, methyl chavicol, carvone, cis-anethole, trans-anethole, β-elemene, α-himachalene, trans-β-farnesene, γ-himachalene, trans-muurola-4(14),5-diene, α-zingiberene, β-himachalene, β-bisabolene, trans-pseudoisoeugenyl 2-methylbutyrate and epoxy-pseudoisoeugenyl 2-methylbutyrate), according to growing year, locality and fertilization type. ABSTRACT: Predicting yield is essential for producers, stakeholders and international interchange demand. The majority of the divergence in yield and essential oil content is associated with environmental aspects, including weather conditions, soil variety and cultivation techniques. Therefore, aniseed production was examined in this study. The categorical input variables for artificial neural network modelling were growing year (two successive growing years), growing locality (three different locations in Vojvodina Province, Serbia) and fertilization type (six different treatments). The output variables were morphological and quality parameters, with agricultural importance such as plant height, umbel diameter, number of umbels, number of seeds per umbel, 1000-seed weight, seed yield per plant, plant weight, harvest index, yield per ha, essential oil (EO) yield, germination energy, total germination, EO content, as well as the share of EOs compounds, including limonene, cis-dihydro carvone, methyl chavicol, carvone, cis-anethole, trans-anethole, β-elemene, α-himachalene, trans-β-farnesene, γ-himachalene, trans-muurola-4(14),5-diene, α-zingiberene, β-himachalene, β-bisabolene, trans-pseudoisoeugenyl 2-methylbutyrate and epoxy-pseudoisoeugenyl 2-methylbutyrate. The ANN model predicted agricultural parameters accurately, showing r(2) values between 0.555 and 0.918, while r(2) values for the forecasting of essential oil content were between 0.379 and 0.908. According to global sensitivity analysis, the fertilization type was a more influential variable to agricultural parameters, while the location site was more influential to essential oils content. MDPI 2022-10-27 /pmc/articles/PMC9694612/ /pubmed/36362877 http://dx.doi.org/10.3390/life12111722 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Article Pezo, Lato Lončar, Biljana Šovljanski, Olja Tomić, Ana Travičić, Vanja Pezo, Milada Aćimović, Milica Agricultural Parameters and Essential Oil Content Composition Prediction of Aniseed, Based on Growing Year, Locality and Fertilization Type—An Artificial Neural Network Approach |
title | Agricultural Parameters and Essential Oil Content Composition Prediction of Aniseed, Based on Growing Year, Locality and Fertilization Type—An Artificial Neural Network Approach |
title_full | Agricultural Parameters and Essential Oil Content Composition Prediction of Aniseed, Based on Growing Year, Locality and Fertilization Type—An Artificial Neural Network Approach |
title_fullStr | Agricultural Parameters and Essential Oil Content Composition Prediction of Aniseed, Based on Growing Year, Locality and Fertilization Type—An Artificial Neural Network Approach |
title_full_unstemmed | Agricultural Parameters and Essential Oil Content Composition Prediction of Aniseed, Based on Growing Year, Locality and Fertilization Type—An Artificial Neural Network Approach |
title_short | Agricultural Parameters and Essential Oil Content Composition Prediction of Aniseed, Based on Growing Year, Locality and Fertilization Type—An Artificial Neural Network Approach |
title_sort | agricultural parameters and essential oil content composition prediction of aniseed, based on growing year, locality and fertilization type—an artificial neural network approach |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9694612/ https://www.ncbi.nlm.nih.gov/pubmed/36362877 http://dx.doi.org/10.3390/life12111722 |
work_keys_str_mv | AT pezolato agriculturalparametersandessentialoilcontentcompositionpredictionofaniseedbasedongrowingyearlocalityandfertilizationtypeanartificialneuralnetworkapproach AT loncarbiljana agriculturalparametersandessentialoilcontentcompositionpredictionofaniseedbasedongrowingyearlocalityandfertilizationtypeanartificialneuralnetworkapproach AT sovljanskiolja agriculturalparametersandessentialoilcontentcompositionpredictionofaniseedbasedongrowingyearlocalityandfertilizationtypeanartificialneuralnetworkapproach AT tomicana agriculturalparametersandessentialoilcontentcompositionpredictionofaniseedbasedongrowingyearlocalityandfertilizationtypeanartificialneuralnetworkapproach AT travicicvanja agriculturalparametersandessentialoilcontentcompositionpredictionofaniseedbasedongrowingyearlocalityandfertilizationtypeanartificialneuralnetworkapproach AT pezomilada agriculturalparametersandessentialoilcontentcompositionpredictionofaniseedbasedongrowingyearlocalityandfertilizationtypeanartificialneuralnetworkapproach AT acimovicmilica agriculturalparametersandessentialoilcontentcompositionpredictionofaniseedbasedongrowingyearlocalityandfertilizationtypeanartificialneuralnetworkapproach |