Smallholder maize yield estimation using satellite data and machine learning in Ethiopia

Zhe Guo , Jordan Chamberlin , Liangzhi You
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引用次数: 2

Abstract

The lack of timely, high-resolution data on agricultural production is a major challenge in developing countries where such information can guide the allocation of scarce resources for food security, agricultural investment, and other objectives. While much research has suggested that remote sensing can potentially help to address these gaps, few studies have indicated the immediate potential for large-scale estimations over both time and space. In this study we described a machine learning approach to estimate smallholder maize yield in Ethiopia, using well-measured and broadly distributed ground truth data and freely available spatiotemporal covariates from remote sensing. A neural networks model outperforms other algorithms in our study. Importantly, our work indicates that a model developed and calibrated on a previous year's data can be used to reasonably estimate maize yield in the subsequent year. Our study suggests the feasibility of developing national programs for the routine generation of broad-scale, high-resolution estimates of smallholder maize yield, including seasonal forecasts, on the basis of machine learning algorithms and well-measured ground control data and currently existing time series satellite data.

埃塞俄比亚利用卫星数据和机器学习估算小农玉米产量
缺乏及时、高分辨率的农业生产数据是发展中国家面临的一大挑战,因为这些信息可以指导稀缺资源的分配,用于粮食安全、农业投资和其他目标。尽管许多研究表明遥感可能有助于解决这些差距,但很少有研究表明在时间和空间上进行大规模估计的直接潜力。在这项研究中,我们描述了一种机器学习方法来估计埃塞俄比亚的小农户玉米产量,该方法使用了测量良好且分布广泛的地面实况数据和来自遥感的免费可用的时空协变量。在我们的研究中,神经网络模型的性能优于其他算法。重要的是,我们的工作表明,根据前一年的数据开发和校准的模型可以用于合理估计下一年的玉米产量。我们的研究表明,在机器学习算法、测量良好的地面控制数据和当前现有的时间序列卫星数据的基础上,制定常规生成大规模、高分辨率小农户玉米产量估计的国家计划是可行的,包括季节预测。
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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