International Centre of Insect Physiology and Ecology (icipe), P.O. Box 30772, Nairobi, 00100, Kenya.
Environ Monit Assess. 2022 Oct 18;194(12):913. doi: 10.1007/s10661-022-10560-4.
Food insecurity continues to affect more than two-thirds of the population in sub-Saharan Africa (SSA), particularly those depending on rain-fed agriculture. Striga, a parasitic weed, has caused yield losses of cereal crops, immensely affecting smallholder farmers in SSA. Although earlier studies have established that Striga is a constraint to crop production, there is little information on the spatial extent of spread and infestation severity of the weed in some SSA countries like Malawi and Zambia. This study aimed to use remotely sensed vegetation phenological (n = 11), climatic (n = 3), and soil (n = 4) variables to develop a data-driven ecological niche model to estimate Striga (Striga asiatica) spatial distribution patterns over Malawi and Zambia, respectively. Vegetation phenological variables were calculated from 250-m enhanced vegetation index (EVI) timeline data, spanning 2013 to 2016. A multicollinearity test was performed on all 18 predictor variables using the variance inflation factor (VIF) and Pearson's correlation approach. From the initial 18 variables, 12 non-correlated predictor variables were selected to predict Striga risk zones over the two focus countries. The variable "start of the season" (start of the rainy season) showed the highest model relevance, contributing 26.8% and 37.9% to Striga risk models for Malawi and Zambia, respectively. This indicates that the crop planting date influences the occurrence and the level of Striga infestation. The resultant occurrence maps revealed interesting spatial patterns; while a very high Striga occurrence was predicted for central Malawi and eastern Zambia (mono-cultural maize growing areas), lower occurrence rates were found in the northern regions. Our study shows the possibilities of integrating various ecological factors with a better spatial and temporal resolution for operational and explicit monitoring of Striga-affected areas in SSA. The explicit identification of Striga "hotspot" areas is crucial for effectively informing intervention activities on the ground.
粮食不安全问题继续影响撒哈拉以南非洲(SSA)超过三分之二的人口,尤其是那些依赖雨养农业的人口。寄生杂草列当已导致谷物作物减产,对 SSA 的小农造成了巨大影响。尽管早期的研究已经确定列当是作物生产的一个制约因素,但关于该杂草在马拉维和赞比亚等一些 SSA 国家的传播范围和侵染严重程度的信息却很少。本研究旨在利用遥感植被物候(n = 11)、气候(n = 3)和土壤(n = 4)变量,开发数据驱动的生态位模型,分别估计马拉维和赞比亚的列当(Striga asiatica)空间分布模式。植被物候变量是根据 2013 年至 2016 年的 250m 增强植被指数(EVI)时间序列数据计算得出的。利用方差膨胀因子(VIF)和 Pearson 相关性方法对所有 18 个预测变量进行了多共线性检验。从最初的 18 个变量中,选择了 12 个非相关的预测变量来预测这两个重点国家的列当风险区。“季节开始”(雨季开始)这一变量表现出最高的模型相关性,对马拉维和赞比亚的列当风险模型的贡献分别为 26.8%和 37.9%。这表明作物种植日期会影响列当的发生和侵染程度。生成的发生图揭示了有趣的空间模式;虽然预测马拉维中部和赞比亚东部(单一玉米种植区)的列当发生非常高,但在北部地区发现的发生率较低。我们的研究表明,将各种生态因素与更好的时空分辨率相结合,用于对 SSA 受列当影响地区进行操作和明确监测是可能的。明确识别列当“热点”地区对于有效告知实地干预活动至关重要。