ASSESSING THE IMPACT OF BEET WEBWORM MOTHS ON SUNFLOWER FIELDS USING MULTITEMPORAL SENTINEL-2 SATELLITE IMAGERY AND VEGETATION INDICES

S. Kara, B. Maden, B. Ercan, F. Sunar, T. Aysal, O. Saglam
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Abstract

Abstract. Remote sensing technology plays a crucial role in detecting and monitoring environmental issues, offering the ability to monitor large areas, diagnose problems early, and facilitate accurate interventions. By integrating in-situ data with qualitative measurements obtained from satellite images, comprehensive insights can be obtained, and statistical inferences can be established. This study focuses on analyzing the damages caused by beet webworm moths (Loxostege sticticalis) in sunflower fields located in the Ortaca neighborhood of Tekirdağ province in Thrace region, utilizing Sentinel-2 satellite images and in-situ data collected from the sunflower fields in Ortaca. The relationship between different spectral indices, such as the Enhanced Vegetation Index, Chlorophyll Index Green, and spectral transformation techniques like Tasseled Cap Greenness, derived from Sentinel-2 satellite images, and the observed damage rates in various sunflower fields' in-situ data was investigated. The results revealed a negative correlation between the variables, highlighting EVI as the most effective indicator of damage among the plant indices. Leveraging these findings, a damage map was generated using EVI, enabling visual interpretation of the damage status in other sunflower fields within the study area. These findings offer valuable insights into the impact of pests on sunflower crops, despite the accuracy evaluation results falling below the desired level, with an overall accuracy of 75% and a Kappa accuracy of 65%, attributed to the limited availability of in-situ data.
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利用sentinel-2卫星影像和植被指数评价甜菜网蛾对向日葵田的影响
摘要遥感技术在发现和监测环境问题方面发挥着至关重要的作用,提供了监测大面积、早期诊断问题和促进准确干预的能力。通过将现场数据与卫星图像的定性测量相结合,可以获得全面的见解,并建立统计推断。本研究利用Sentinel-2卫星图像和Ortaca向日葵田现场数据,对色雷斯地区泰克达尔省Ortaca地区向日葵田甜菜网虫(Loxostege sticalis)的危害进行了分析。研究了Sentinel-2卫星影像中不同光谱指数(Enhanced Vegetation Index、叶绿素Index Green、Tasseled Cap Greenness等光谱变换技术)与不同向日葵田现场数据的毁伤率之间的关系。结果表明,各变量之间呈负相关关系,EVI是最有效的植物损伤指标。利用这些发现,利用EVI生成了损害图,可以直观地解释研究区域内其他向日葵田的损害状况。这些发现为害虫对向日葵作物的影响提供了有价值的见解,尽管准确性评估结果低于预期水平,由于原位数据的有限可用性,总体精度为75%,Kappa精度为65%。
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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