Seasonal dynamics of normalized difference vegetation index in some winter and spring crops in the South of Ukraine

Agrology Pub Date : 2021-01-01 DOI:10.32819/021022
P. Lykhovyd
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引用次数: 3

Abstract

Spatial crop monitoring using vegetation indices is one of the most promising technologies for crop mapping and remote phenological observations. The aim of the study was to determine the patterns of seasonal dynamics of the spatial normalized difference vegetation index for the main crops grown in the south of Ukraine and to connect it to their phenology. Remote sensing data provided by the OneSoil AI platform, which uses Sentinel-1 and Sentinel-2 imagery as a basis, was used to derive the monthly index values for the 2016–2021 growing season for nine selected crops grown in the experimental fields at the NAAS Institute of Irrigated Agriculture, Kherson, Ukraine. The fallow field was also included in the study to determine the cutoff values of the vegetation index, which are not representative of any healthy vegetation. It was determined that each crop has its unique pattern of the dynamics of the vegetation index, except for winter wheat and winter barley, which demonstrated quite similar models. The peak values of the vegetation index were observed in May for winter crops (wheat, barley, rapeseed) and early-spring crops (chickpea, peas), while the late-spring crops (grain corn, grain sorghum, soybeans, sunflower) reached the peak values in July. It is possible to suggest that the highest demand for mineral nutrition and watering will fall in the mentioned time periods of late spring and midsummer. Phenological monitoring revealed that the highest values of the spatial normalized difference vegetation index were observed in the following stages of crop growth, namely: winter wheat, winter barley – stem elongation; winter rapeseed – flowering; chickpea – branching; peas – budding and flowering; sunflower – stem growth; soybeans - pod formation; grain sorghum – panicle ejection and flowering; grain corn – panicle ejection and flowering. The results provide novel information for further implementation in the mathematical models for automation of crops recognition, mapping, and phenological observations based on the remote sensing data. Further scientific research in this direction will be aimed at increasing the spectrum of crops studied and a detailed investigation of the relationship between the value of the normalized difference vegetation index and their phenology.
乌克兰南部一些冬春作物归一化植被指数的季节动态
利用植被指数对作物进行空间监测是作物制图和远程物候观测中最有前途的技术之一。该研究的目的是确定乌克兰南部种植的主要作物的空间归一化差异植被指数的季节动态模式,并将其与物候学联系起来。利用OneSoil人工智能平台提供的遥感数据,以Sentinel-1和Sentinel-2图像为基础,在乌克兰Kherson的NAAS灌溉农业研究所的试验田中,获得了9种选定作物在2016-2021年生长季节的月度指数值。为了确定植被指数的截止值,休耕地也被纳入研究范围,该指数并不代表任何健康植被。结果表明,除了冬小麦和冬大麦表现出非常相似的模式外,每种作物的植被指数动态都有其独特的模式。冬季作物(小麦、大麦、油菜籽)和早春作物(鹰嘴豆、豌豆)的植被指数在5月份达到峰值,而晚春作物(谷物玉米、谷物高粱、大豆、向日葵)的植被指数在7月份达到峰值。这可能表明,对矿物质营养和水分的最高需求将在上述春末和仲夏期间下降。物候监测结果表明,空间归一化植被差异指数在作物生长的几个阶段最高,即冬小麦、冬大麦-茎伸长期;冬季油菜籽-开花;鹰嘴豆-分枝;豌豆——发芽开花;向日葵-茎生长;大豆。豆荚形成;谷物高粱-穗的顶出和开花;籽粒玉米-穗顶出和开花。研究结果为进一步实现基于遥感数据的作物识别、制图和物候观测自动化的数学模型提供了新的信息。这方面的进一步科学研究将旨在增加所研究作物的光谱,并详细研究归一化植被指数值与其物候之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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