A Normalised Difference Vegetation Index Model for Maize Crop Performance Monitoring and Cropland Area Mapping in Sudan Ecological Zone of Nigeria

Onyibe, J. E., Wahab, A. A., Dahiru B., Durojaiye, L. O., Muibi, K. H.
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Abstract

The monitoring and mapping of crops remotely are critical for easy identification of stressed crop, prompt response to part of the crop field that requires immediate attention and the potential harvest as well as for agricultural field management. Optical remote sensing offers one of the most attractive options for vegetation indices evaluation and some optical remote sensing data are readily available free for this application, especially, Sentinel-2A, which is equipped with a multispectral sensor (MSI), which enables calculation of some vegetation indices and assessment of vegetation health and status. However, serious attention has not been given to the potential of vegetation indices calculated from MSI data in the developing countries, Nigeria inclusive. Thus, the study therefore calculated the time series NDVI for the length of the growing season for the selected crops (Maize) and geometrically calculated area of the farm plot size. In this study. The study used the Normalized Difference Vegetation Index and Supervised Image classification technique for the crop health assessment and cropland area mapping for maize. The result showed the mean, standard deviation, range, minimum and maximum NDVI values for all the farm plots over the growing season from planting period to the harvesting period for the selected crop. The average NDVI value in May which marks the onset of the growing season for maize in the study area ranges from 0.044 to 0.148. In July, which represents the period of the grain filing stage ranges from 0.136 to 0.348 and in August, which is the maturity stage for harvest ranges from 0.110 to 0.450. Also, it was observed that cropland area is 194.973269 Square Km. It is therefore evident that the results of our NDVI analysis and cropland area mapping are good insights into solving national agricultural planning problems and agricultural resources allocation for effective agricultural practices for national food security. Our results showed that vegetation indices had the greatest contributions in identifying specific crop types and crop conditions during the growing season.
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用于尼日利亚苏丹生态区玉米产量监测和耕地面积绘图的归一化植被指数差异模型
对作物进行遥感监测和绘图对于轻松识别受压作物、对需要立即关注的部分作物田和潜在收成做出迅速反应以及进行农田管理至关重要。光学遥感为植被指数评估提供了最有吸引力的选择之一,一些光学遥感数据可随时免费用于这一应用,特别是哨兵-2A,它配备了一个多光谱传感器(MSI),可计算一些植被指数和评估植被健康和状态。然而,在发展中国家(包括尼日利亚),利用 MSI 数据计算植被指数的潜力尚未得到重视。因此,本研究计算了所选作物(玉米)生长季节长度的时间序列 NDVI 以及按几何尺寸计算的农田面积。在这项研究中。研究使用归一化植被指数和监督图像分类技术对玉米进行作物健康评估和耕地面积测绘。结果显示了所选作物从播种期到收获期生长季节所有农田地块的归一化差异植被指数平均值、标准偏差、范围、最小值和最大值。5 月份标志着研究地区玉米生长季节的开始,其 NDVI 平均值在 0.044 至 0.148 之间。7 月是谷物的播种期,NDVI 值介于 0.136 到 0.348 之间,8 月是收获的成熟期,NDVI 值介于 0.110 到 0.450 之间。此外,还观察到耕地面积为 194.973269 平方公里。由此可见,我们的归一化差异植被指数分析和耕地面积测绘结果有助于解决国家农业规划问题和农业资源分配问题,从而采取有效的农业措施,保障国家粮食安全。我们的结果表明,植被指数在识别特定作物类型和作物生长季节条件方面的贡献最大。
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