Meshesha Derege Tsegaye, Ahmed Muhyadin Mohammed, Abdi Dahir Yosuf, Haregeweyn Nigussie
Geospatial Data and Technology Centre, College of Agriculture and Environmental Science, Bahir Dar University, P.O. Box 79, Bahir Dar, Ethiopia.
Institute of Pastoral and Agro-Pastoral Development Studies (IPADS), Jigjiga University, P.O. Box 1020, Jigjiga, Ethiopia.
Heliyon. 2020 Oct 16;6(10):e05272. doi: 10.1016/j.heliyon.2020.e05272. eCollection 2020 Oct.
The drought-prone Ethiopian Somali region has a long history of pastoralism (livestock grazing), which is a major source of livelihoods. However, it suffers from poor rangeland management and a lack of research and information. The objectives of this study were to develop a method for forecasting forage biomass and to quantify production of and spatial variation in forage from satellite imagery. We downloaded Sentinel-2 images and processed spectral information in the blue, red, and near-infrared bands, and calculated the Normalized Difference Vegetation Index (NDVI) and Enhanced Vegetation Index (EVI). Combining ground sampling (on 55 plots) with remote sensing data, we developed a forage forecasting model for the area. Forage (biomass) was significantly correlated with both EVI ( = 0.87; < 0.001) and NDVI ( = 0.81; < 0.001). Both gave good predictions of forage biomass in the district. We estimated the annual biomass in each grassland pixel at the peak of the growing season. Models based on each index revealed close estimates: NDVI indicated an average of 0.76 t/ha and a total of 38 772 t/year; EVI indicated an average of 0.78 t/ha and a total of 39 792 t/year. The estimated rangeland biomass showed high spatial variability of 0.22-4.89 t/ha.year. For future rangeland management in the area, the proposed approach and models can be used to estimate available forage biomass from satellite imagery in the middle of the grass growing season (2 months after the rains start), before the grass matures and is harvested.
易干旱的埃塞俄比亚索马里地区有着悠久的游牧(牲畜放牧)历史,这是主要的生计来源。然而,该地区面临着牧场管理不善以及缺乏研究和信息的问题。本研究的目的是开发一种预测牧草生物量的方法,并从卫星图像中量化牧草产量及其空间变化。我们下载了哨兵 - 2 图像,并处理了蓝色、红色和近红外波段的光谱信息,计算了归一化植被指数(NDVI)和增强植被指数(EVI)。结合地面采样(在 55 个样地)和遥感数据,我们为该地区开发了一个牧草预测模型。牧草(生物量)与 EVI(r = 0.87;p < 0.001)和 NDVI(r = 0.81;p < 0.001)均显著相关。两者对该地区的牧草生物量都有良好的预测。我们估计了生长季高峰期每个草地像素的年生物量。基于每个指数的模型显示出相近的估计值:NDVI 表明平均为 0.76 吨/公顷,每年总量为 38772 吨;EVI 表明平均为 0.78 吨/公顷,每年总量为 39792 吨。估计的牧场生物量显示出 0.22 - 4.89 吨/公顷·年的高空间变异性。对于该地区未来的牧场管理,所提出的方法和模型可用于在牧草生长季中期(降雨开始后 2 个月)、牧草成熟和收获之前,从卫星图像估计可用的牧草生物量。