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How good is good enough? Data requirements for reliable crop yield simulations and yield-gap analysis

机译:好多好啊?可靠的作物产量模拟和产量差距分析的数据要求

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摘要

Numerous studies have been published during the past two decades that use simulation models to assess crop yield gaps (quantified as the difference between potential and actual farm yields), impact of climate change on future crop yields, and land-use change. However, there is a wide range in quality and spatial and temporal scale and resolution of climate and soil data underpinning these studies, as well as widely differing assumptions about cropping-system context and crop model calibration. Here we present an explicit rationale and methodology for selecting data sources for simulating crop yields and estimating yield gaps at specific locations that can be applied across widely different levels of data availability and quality. The method consists of a tiered approach that identifies the most scientifically robust requirements for data availability and quality, as well as other, less rigorous options when data are not available or are of poor quality. Examples are given using this approach to estimate maize yield gaps in the state of Nebraska (USA), and at a national scale for Argentina and Kenya. These examples were selected to represent contrasting scenarios of data availability and quality for the variables used to estimate yield gaps. The goal of the proposed methods is to provide transparent, reproducible, and scientifically robust guidelines for estimating yield gaps; guidelines which are also relevant for simulating the impact of climate change and land-use change at local to global spatial scales. Likewise, the improved understanding of data requirements and alternatives for simulating crop yields and estimating yield gaps as described here can help identify the most critical “data gaps” and focus global efforts to fill them. A related paper(Van Bussel et al., 2015) examines issues of site selection to minimize data requirements and up-scaling from location-specific estimates to regional and national spatial scales.
机译:在过去的二十年中,已经发表了许多研究,这些研究使用模拟模型来评估农作物产量的差距(量化为潜在和实际农作物产量之间的差异),气候变化对未来农作物产量的影响以及土地利用变化。但是,在这些研究的基础上,质量,空间和时间尺度以及气候和土壤数据的分辨率范围广泛,并且对种植系统环境和作物模型校准的假设也存在很大差异。在这里,我们提供了一个明确的原理和方法,可用于选择数据源来模拟作物产量并估计特定位置的产量差距,这些差距可应用于数据可用性和质量的不同水平。该方法由分层方法组成,该方法确定了对数据可用性和质量的最科学可靠的要求,以及在数据不可用或质量较差时其他较不严格的选择。举例说明了使用这种方法估算内布拉斯加州(美国)以及阿根廷和肯尼亚全国规模的玉米单产差距。选择这些示例以代表用于估计产量差距的变量的数据可用性和质量的对比方案。提出的方法的目的是提供透明,可重现和科学可靠的准则来估计产量差距;与模拟气候变化和土地利用变化在局部到全球空间尺度上的影响也有关的准则。同样,如此处所述,对数据要求的更好理解以及模拟作物产量和估计产量差距的替代方法也可以帮助确定最关键的“数据差距”,并集中全球努力来填补这些差距。相关论文(Van Bussel等人,2015)研究了选址问题,以最大程度地减少数据需求,并从特定位置的估算到区域和国家空间尺度进行放大。

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