Statistical approaches are inadequate for accurate estimation of yield potential and gaps at regional level

Antoine Couëdel, Romulo P. Lollato, Sotirios V. Archontoulis, Fatima A. Tenorio, Fernando Aramburu-Merlos, Juan I. Rattalino Edreira, Patricio Grassini
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Abstract

Accurate spatial information on yield potential and gaps is key to determine crop production potential. Although statistical methods are widely used to estimate these parameters at regional to global levels, a rigorous evaluation of their performance is lacking. Here we compared outcomes derived from four published statistical approaches based on highest average farmer yields over time and space against those derived from a ‘bottom-up’ approach based on crop modelling and local weather and soil data for major rain-fed crops in the United States. Statistical methods failed to capture spatial variation in water-limited yield potential, consistently under- or overestimating yield gaps across regions. Statistical methods led to conflicting results, with production potential almost doubling from one method to another. We emphasize the need for well-validated crop models coupled with local data, robust spatial frameworks and extrapolation methods to provide more reliable assessments of production potential from local to regional scales.

Abstract Image

统计方法不足以准确估计区域一级的产量潜力和差距
关于产量潜力和缺口的准确空间信息是确定作物生产潜力的关键。虽然统计方法被广泛用于在区域到全球各级估计这些参数,但缺乏对其性能的严格评价。在这里,我们比较了基于时间和空间上最高平均农民产量的四种已发表的统计方法得出的结果,与基于作物模型和美国主要雨养作物的当地天气和土壤数据的“自下而上”方法得出的结果。统计方法未能捕捉到水限产量潜力的空间变化,持续低估或高估了不同地区的产量差距。统计方法导致了相互矛盾的结果,从一种方法到另一种方法,生产潜力几乎翻了一番。我们强调需要经过良好验证的作物模型,结合当地数据、稳健的空间框架和外推方法,以提供从地方到区域尺度的更可靠的生产潜力评估。
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