Characterisation of grapevine canopy leaf area and inter-row management using Sentinel-2 time series

IF 2.2 3区 农林科学 Q3 FOOD SCIENCE & TECHNOLOGY OENO One Pub Date : 2023-11-23 DOI:10.20870/oeno-one.2023.57.4.7703
M. Abubakar, André Chanzy, Fabrice Flamain, Dominique Courault
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Abstract

Accurate data on crop canopy are among the prerequisites for hydrological modelling, environmental assessment, and irrigation management. In this regard, our study concentrated on an in-depth analysis of optical satellite data of Sentinel-2 (S2) time series of the leaf area index (LAI) to characterise canopy development and inter-row management of grapevine fields. Field visits were conducted in the Ouveze-Ventoux area, South Eastern France, for two years (2021 and 2022) to monitor phenology, canopy development, and inter-row management of eleven selected grapevine fields. Regarding the S2-LAI data, the annual dynamic of a typical grapevine canopy leaf area was similar to a double logistic curve. Therefore, an analytic model was adopted to represent the grapevine canopy contribution to the S2-LAI. Part of the parameters of the analytic model were calibrated from the actual grapevine canopy dynamics timing observation from the field visits, while the others were inferred at the field level from the S2-LAI time series. The background signal was generated by directly subtracting the simulated canopy from the S2 LAI time series. Rainfall data were examined to see the possible explanations behind variations in the inter-row grass development. From the background signals, we could group the inter-row management into three classes: grassed, partially grassed, and tilled, which corroborated our findings on the field. To consider the possibility of avoiding field visits, the model was recalibrated on a grapevine field with a clear canopy signal and applied to two fields with different inter-row management. The result showed slight differences among the inter-row signals, which did not prevent the identification of inter-row management, thus indicating that field visits might not be mandatory.
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利用 Sentinel-2 时间序列确定葡萄冠层叶面积和行间管理的特征
准确的作物冠层数据是水文建模、环境评估和灌溉管理的先决条件之一。在这方面,我们的研究集中于对哨兵-2(Sentinel-2)叶面积指数(LAI)时间序列的光学卫星数据进行深入分析,以确定葡萄田冠层发育和行间管理的特征。在法国东南部乌韦兹-文图地区进行了为期两年(2021 年和 2022 年)的实地考察,以监测 11 块选定葡萄田的物候、冠层发育和行间管理情况。关于 S2-LAI 数据,典型葡萄树冠叶面积的年度动态类似于双对数曲线。因此,采用了一个分析模型来表示葡萄冠层对 S2-LAI 的贡献。分析模型的部分参数是根据实地考察的实际葡萄树冠动态定时观测结果校准的,而其他参数则是在实地水平上根据 S2-LAI 时间序列推断的。背景信号是通过直接从 S2 LAI 时间序列中减去模拟冠层产生的。我们研究了降雨数据,以了解行间草生长变化背后的可能原因。根据背景信号,我们可以将行间管理分为三类:长草、部分长草和翻耕,这与我们在田间的发现相吻合。考虑到避免实地考察的可能性,我们在一块冠层信号清晰的葡萄田重新校准了模型,并将其应用于两块不同行间管理的葡萄田。结果显示,行间信号之间存在细微差别,但这并不妨碍对行间管理的识别,从而表明实地考察可能不是必须的。
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来源期刊
OENO One
OENO One Agricultural and Biological Sciences-Food Science
CiteScore
4.40
自引率
13.80%
发文量
85
审稿时长
13 weeks
期刊介绍: OENO One is a peer-reviewed journal that publishes original research, reviews, mini-reviews, short communications, perspectives and spotlights in the areas of viticulture, grapevine physiology, genomics and genetics, oenology, winemaking technology and processes, wine chemistry and quality, analytical chemistry, microbiology, sensory and consumer sciences, safety and health. OENO One belongs to the International Viticulture and Enology Society - IVES, an academic association dedicated to viticulture and enology.
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