Estimating the Protein Concentration in Rice Grain Using UAV Imagery Together with Agroclimatic Data

Global warming and climate change can potentially change not only rice production but also rice nutrient content. To adapt a rice-dependent country’s farming to the impacts of climate change, it is necessary to assess and monitor the potential risk that climate change poses to agriculture....

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Main Authors: Akira Hama, Kei Tanaka, Atsushi Mochizuki, Yasuo Tsuruoka, Akihiko Kondoh
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Agronomy
Subjects:
Online Access:https://www.mdpi.com/2073-4395/10/3/431
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spelling doaj-6a2ff44636254a148adc38f905bd18322021-04-02T11:34:50ZengMDPI AGAgronomy2073-43952020-03-0110343110.3390/agronomy10030431agronomy10030431Estimating the Protein Concentration in Rice Grain Using UAV Imagery Together with Agroclimatic DataAkira Hama0Kei Tanaka1Atsushi Mochizuki2Yasuo Tsuruoka3Akihiko Kondoh4College of Education, Yokohama National University, JSPS Research Fellow, 79-2 Tokiwadai Hodogaya-ku, Yokohama City, Kanagawa 240-8501, JapanJapan Map Center, 4-9-6 Aobadai, Meguro-Ku, Tokyo 153-8522, JapanChiba Prefectural Agriculture and Forestry Research Center, 808 Daizenno-Cho, Chiba City, Chiba 266-0062, JapanChiba Prefectural Agriculture and Forestry Research Center, 808 Daizenno-Cho, Chiba City, Chiba 266-0062, JapanCenter for Environmental Remote Sensing, Chiba University, 1-33 Yayoi-Cho, Chiba City, Chiba 263-8522, JapanGlobal warming and climate change can potentially change not only rice production but also rice nutrient content. To adapt a rice-dependent country&#8217;s farming to the impacts of climate change, it is necessary to assess and monitor the potential risk that climate change poses to agriculture. The aim of this study was to clarify the relationship between rice grain protein content (GPC) and meteorological variables through unmanned aerial vehicle remote sensing and meteorological measurements. Furthermore, a method for GPC estimation that combines remote sensing data and meteorological variables was proposed. The conclusions of this study were as follows: (1) The accuracy and robustness of the GPC estimation model were improved by evaluating the nitrogen condition with the green normalized difference vegetation index at the heading stage (GNDVI<sub>heading</sub>) and evaluating photosynthesis with the average daily solar radiation during the grain-filling stage (SR<sub>grain-filling</sub>). GPC estimation considering SR<sub>grain-filling</sub> in addition to GNDVI<sub>heading</sub> was able to estimate the observed GPC under the different conditions. (2) Increased temperature from the transplantation date to the heading stage can affect increased GPC when extreme temperature does not cause the heat stress.https://www.mdpi.com/2073-4395/10/3/431droneglobal warmingnutrient balancemodelling
collection DOAJ
language English
format Article
sources DOAJ
author Akira Hama
Kei Tanaka
Atsushi Mochizuki
Yasuo Tsuruoka
Akihiko Kondoh
spellingShingle Akira Hama
Kei Tanaka
Atsushi Mochizuki
Yasuo Tsuruoka
Akihiko Kondoh
Estimating the Protein Concentration in Rice Grain Using UAV Imagery Together with Agroclimatic Data
Agronomy
drone
global warming
nutrient balance
modelling
author_facet Akira Hama
Kei Tanaka
Atsushi Mochizuki
Yasuo Tsuruoka
Akihiko Kondoh
author_sort Akira Hama
title Estimating the Protein Concentration in Rice Grain Using UAV Imagery Together with Agroclimatic Data
title_short Estimating the Protein Concentration in Rice Grain Using UAV Imagery Together with Agroclimatic Data
title_full Estimating the Protein Concentration in Rice Grain Using UAV Imagery Together with Agroclimatic Data
title_fullStr Estimating the Protein Concentration in Rice Grain Using UAV Imagery Together with Agroclimatic Data
title_full_unstemmed Estimating the Protein Concentration in Rice Grain Using UAV Imagery Together with Agroclimatic Data
title_sort estimating the protein concentration in rice grain using uav imagery together with agroclimatic data
publisher MDPI AG
series Agronomy
issn 2073-4395
publishDate 2020-03-01
description Global warming and climate change can potentially change not only rice production but also rice nutrient content. To adapt a rice-dependent country&#8217;s farming to the impacts of climate change, it is necessary to assess and monitor the potential risk that climate change poses to agriculture. The aim of this study was to clarify the relationship between rice grain protein content (GPC) and meteorological variables through unmanned aerial vehicle remote sensing and meteorological measurements. Furthermore, a method for GPC estimation that combines remote sensing data and meteorological variables was proposed. The conclusions of this study were as follows: (1) The accuracy and robustness of the GPC estimation model were improved by evaluating the nitrogen condition with the green normalized difference vegetation index at the heading stage (GNDVI<sub>heading</sub>) and evaluating photosynthesis with the average daily solar radiation during the grain-filling stage (SR<sub>grain-filling</sub>). GPC estimation considering SR<sub>grain-filling</sub> in addition to GNDVI<sub>heading</sub> was able to estimate the observed GPC under the different conditions. (2) Increased temperature from the transplantation date to the heading stage can affect increased GPC when extreme temperature does not cause the heat stress.
topic drone
global warming
nutrient balance
modelling
url https://www.mdpi.com/2073-4395/10/3/431
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