Leveraging crop yield forecasts using satellite information for early warning in Senegal

Shweta Panjwani , Mahesh Jampani , Mame H.A. Sambou , Giriraj Amarnath
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Abstract

Agricultural losses driven by climate variability and anthropogenic pressures have severely impacted food security in Senegal. There is a crucial need to generate early warning signals for the upcoming season to enhance food security in response to the sudden climate shocks like drought. In this study, we investigated the spatial distribution of maize and groundnut using factor analysis with a principal component approach. We aimed to identify suitable predictors of crop yields for the development of a seasonal yield prediction model. Subsequently, multi-regression analysis was performed to predict crop yield based on various combinations of satellite-derived vegetation and climate (rainfall) datasets as well as agronomic data from Senegal's 40 districts between 2010 and 2021. Studies revealed a strong correlation between seasonal rainfall (May to September) and crop yield: a 10–20 ​% decline in rainfall can lead to crop losses. The accuracy of the yield prediction model, built on the best performing scenarios for each district based on monsoon onset, duration, and planting time, exceeded 0.5 (R-squared) for all districts when combining rainfall and normalized difference vegetation index (NDVI) data. The model prediction accuracy varied between 0.6 and 0.8 for major crop growing areas. The study emphasizes that refining the yield prediction model using machine learning techniques can improve its accuracy and enable its implementation in early warning systems. This enhanced capability could bolster Senegal's resilience to climate change by aiding decision-makers and planners in developing more effective strategies to ensure food security.

Abstract Image

利用卫星信息对塞内加尔作物产量预测进行预警
气候多变性和人为压力造成的农业损失严重影响了塞内加尔的粮食安全。因此,亟需为即将到来的季节发出预警信号,以加强粮食安全,应对干旱等突发性气候冲击。在这项研究中,我们采用主成分方法进行因子分析,调查了玉米和落花生的空间分布。我们的目的是找出合适的作物产量预测因子,以开发季节性产量预测模型。随后,根据卫星植被和气候(降雨量)数据集的不同组合,以及 2010 年至 2021 年期间塞内加尔 40 个地区的农艺数据,对作物产量进行了多元回归分析预测。研究显示,季节性降雨量(5 月至 9 月)与作物产量之间存在密切联系:降雨量减少 10-20% 会导致作物减产。产量预测模型是根据季风开始时间、持续时间和播种时间为每个地区制定的最佳方案建立的,在结合降雨量和归一化差异植被指数(NDVI)数据时,所有地区的预测精度都超过了 0.5(R 平方)。主要作物种植区的模型预测精度介于 0.6 和 0.8 之间。研究强调,利用机器学习技术完善产量预测模型可以提高其准确性,并使其能够应用于预警系统。这种能力的提高可以帮助决策者和规划者制定更有效的战略,确保粮食安全,从而增强塞内加尔应对气候变化的能力。
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