ESTIMATION OF SUNFLOWER CROP PRODUCTION BASED ON REMOTE SENSING TECHNIQUES

IF 0.6 Q4 AGRONOMY
M. Herbei, C. Popescu, R. Bertici, F. Sala
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引用次数: 0

Abstract

The study used the remote sensing method (Sentinel 2) to analyze the sunflower crop and to estimate the production. The study area was within the DES, ULS 'King Mihai I' from Timisoara, Romania. Eight series of images were taken (April 06 - August 07, 2022). Based on the spectral information, the NDMI, NDVI, NPCRI and NBR indexes were calculated. Spline models best described the variation of index values in relation to time (t, days) during the study period, ε = −0.04286 for NDMI, ε = 0.01172 for NDVI, ε = 0.00537 for NPCRI, respectively ε = −0.08481 for NBR. Very strong correlations were found between NDVI and NDMI (r=0.975), between NBR and NDMI (r=0.997), and between NBR and NDVI (r=0.967), p<0.001. Strong correlation was recorded between NDVI and NPCRI (r=-0.881), p<0.01. Moderate correlations were found between NDMI and t (r=0.729), between NBR and t (r=0.752), between NPCRI and NDMI (r=-0.776), and between NBR and NPCRI (r=-0.762), p<0.05. The regression analysis facilitated the estimation of the production based on calculated indices, under conditions of statistical safety.
基于遥感技术的向日葵作物产量估算
本研究利用Sentinel 2遥感方法对向日葵作物进行了分析和产量估算。研究区域位于罗马尼亚蒂米什瓦拉的DES, ULS“国王米哈伊一世”内。在2022年4月6日至8月7日期间拍摄了八个系列的图像。基于光谱信息,计算了NDMI、NDVI、NPCRI和NBR指数。样条模型最能描述研究期间各指标值随时间(t, d)的变化,NDMI的ε = - 0.04286, NDVI的ε = 0.01172, NPCRI的ε = 0.00537, NBR的ε = - 0.08481。NDVI与NDMI (r=0.975)、NBR与NDMI (r=0.997)、NBR与NDVI (r=0.967)呈极显著相关(p<0.001)。NDVI与NPCRI有较强的相关性(r=-0.881), p<0.01。NDMI与t (r=0.729)、NBR与t (r=0.752)、NPCRI与NDMI (r=-0.776)、NBR与NPCRI (r=-0.762)呈正相关,p<0.05。回归分析有助于在统计安全的条件下,根据计算的指标对产量进行估计。
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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来源期刊
CiteScore
0.80
自引率
0.00%
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0
审稿时长
14 weeks
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