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Bayesian Sigmoid-Type Time Series Forecasting with Missing Data for Greenhouse Crops

This paper follows an integrated approach of Internet of Things based sensing and machine learning for crop growth prediction in agriculture. A Dynamic Bayesian Network (DBN) relates crop growth associated measurement data to environmental control data via hidden states. The measurement data, having...

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Autores principales: Kocian, Alexander, Carmassi, Giulia, Cela, Fatjon, Incrocci, Luca, Milazzo, Paolo, Chessa, Stefano
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7309099/
https://www.ncbi.nlm.nih.gov/pubmed/32517314
http://dx.doi.org/10.3390/s20113246
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author Kocian, Alexander
Carmassi, Giulia
Cela, Fatjon
Incrocci, Luca
Milazzo, Paolo
Chessa, Stefano
author_facet Kocian, Alexander
Carmassi, Giulia
Cela, Fatjon
Incrocci, Luca
Milazzo, Paolo
Chessa, Stefano
author_sort Kocian, Alexander
collection PubMed
description This paper follows an integrated approach of Internet of Things based sensing and machine learning for crop growth prediction in agriculture. A Dynamic Bayesian Network (DBN) relates crop growth associated measurement data to environmental control data via hidden states. The measurement data, having (non-linear) sigmoid-type dynamics, are instances of the two classes observed and missing, respectively. Considering that the time series of the logistic sigmoid function is the solution to a reciprocal linear dynamic model, the exact expectation-maximization algorithm can be applied to infer the hidden states and to learn the parameters of the model. At iterative convergence, the parameter estimates are then used to derive a predictor of the measurement data several days ahead. To evaluate the performance of the proposed DBN, we followed three cultivation cycles of micro-tomatoes (MicroTom) in a mini-greenhouse. The environmental parameters were temperature, converted into Growing Degree Days (GDD), and the solar irradiance, both at a daily granularity. The measurement data were Leaf Area Index (LAI) and Evapotranspiration (ET). Although measurement data were only available scarcely, it turned out that high quality measurement data predictions were possible up to three weeks ahead.
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spelling pubmed-73090992020-06-25 Bayesian Sigmoid-Type Time Series Forecasting with Missing Data for Greenhouse Crops Kocian, Alexander Carmassi, Giulia Cela, Fatjon Incrocci, Luca Milazzo, Paolo Chessa, Stefano Sensors (Basel) Article This paper follows an integrated approach of Internet of Things based sensing and machine learning for crop growth prediction in agriculture. A Dynamic Bayesian Network (DBN) relates crop growth associated measurement data to environmental control data via hidden states. The measurement data, having (non-linear) sigmoid-type dynamics, are instances of the two classes observed and missing, respectively. Considering that the time series of the logistic sigmoid function is the solution to a reciprocal linear dynamic model, the exact expectation-maximization algorithm can be applied to infer the hidden states and to learn the parameters of the model. At iterative convergence, the parameter estimates are then used to derive a predictor of the measurement data several days ahead. To evaluate the performance of the proposed DBN, we followed three cultivation cycles of micro-tomatoes (MicroTom) in a mini-greenhouse. The environmental parameters were temperature, converted into Growing Degree Days (GDD), and the solar irradiance, both at a daily granularity. The measurement data were Leaf Area Index (LAI) and Evapotranspiration (ET). Although measurement data were only available scarcely, it turned out that high quality measurement data predictions were possible up to three weeks ahead. MDPI 2020-06-07 /pmc/articles/PMC7309099/ /pubmed/32517314 http://dx.doi.org/10.3390/s20113246 Text en © 2020 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Kocian, Alexander
Carmassi, Giulia
Cela, Fatjon
Incrocci, Luca
Milazzo, Paolo
Chessa, Stefano
Bayesian Sigmoid-Type Time Series Forecasting with Missing Data for Greenhouse Crops
title Bayesian Sigmoid-Type Time Series Forecasting with Missing Data for Greenhouse Crops
title_full Bayesian Sigmoid-Type Time Series Forecasting with Missing Data for Greenhouse Crops
title_fullStr Bayesian Sigmoid-Type Time Series Forecasting with Missing Data for Greenhouse Crops
title_full_unstemmed Bayesian Sigmoid-Type Time Series Forecasting with Missing Data for Greenhouse Crops
title_short Bayesian Sigmoid-Type Time Series Forecasting with Missing Data for Greenhouse Crops
title_sort bayesian sigmoid-type time series forecasting with missing data for greenhouse crops
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7309099/
https://www.ncbi.nlm.nih.gov/pubmed/32517314
http://dx.doi.org/10.3390/s20113246
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