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Assessing approaches for stratifying producer fields based on biophysical attributes for regional yield-gap analysis

机译:评估基于生物物理属性的分层生产国对区域产量差距分析的方法

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Large databases containing producer field-level yield and management records can be used to identify causes of yield gaps. A relevant question is how to account for the diverse biophysical background (i.e., climate and soil) across fields and years, which can confound the effect of a given management practice on yield. Here we evaluated two approaches to group producer fields based on biophysical attributes: (i) a technology extrapolation domain spatial framework ('TEDs') that delineates regions with similar (long-term average) annual weather and soil water storage capacity and (ii) clusters based on field-specific soil properties and weather during each crop phase in each year. As a case study, we used yield and management data collected from 3462 rainfed fields sown with soybean across the North Central US (NC-US) during four growing seasons (2014-2017). Following the TED approach, fields were grouped into 18 TEDs based on the TED that corresponded to the geographic location of each field. In the cluster approach, fields were grouped into clusters based on similarity of in-season weather and soil. To evaluate how the number of clusters would affect the results, fields were grouped separately into 5, 10, 18, and 30 clusters. The two stratification approaches (TEDs and clusters) were compared on their ability to explain the observed yield variation and yield response to key management factors (sowing date and foliar fungicide and/or insecticide). Lack of stratification of producer fields based on their biophysical background ignored management by environment (M x E) interactions, leading to spurious relationships and results that are not relevant at local level. In the case of the cluster approach, a fine stratification (18 and 30 clusters) explained a larger portion of the yield variance compared with a coarse stratification (5 and 10 clusters). However, for our case study in the NC-US region, we did not find strong evidence that the data-rich clustering approach outperformed the TEDs on the ability to explain yield variation and identify M x E interactions. Only the stratification into 30 clusters exhibited a small improved ability at explaining yield variation compared with the TEDs. However, the use of the clustering approach had important trade-offs, including large amount of data requirements and difficulties to scale results to different regions and over time. The choice of the stratification method should be based on objectives, data availability, and expected variation in yield due to erratic weather across regions and years.
机译:包含制作人字段级收益和管理记录的大型数据库可用于识别产量间隙的原因。有关问题是如何在田野和多年中解释各种生物物理背景(即气候和土壤),这可以混淆给定的管理实践对产量的影响。在这里,我们基于生物物理属性评估了两种对组生产者字段的方法:(i)一种技术推断域空间框架('teds'),其描绘了相似(长期平均)的区域天气和土壤储存能力和(ii)每年在每次作物阶段期间,基于现场土壤性质和天气的簇。作为案例研究,我们在四个生长季节(2014-2017)期间,我们使用从北部中部(NC-US)播种的3462个雨水领域中收集的产量和管理数据。在TED方法之后,基于与每个字段的地理位置相对应的TED分组为18个TED。在集群方法中,基于季节性天气和土壤的相似性,将字段分组为集群。为了评估群集数量会如何影响结果,将字段分别分成5,10,18和30个集群。比较了两种分层方法(TED和群集),并依据了他们解释了观察到的产量变异和对关键管理因素的产量反应(播种日期和叶状杀菌剂和/或杀虫剂)的能力。基于其生物物理背景缺乏生产者领域的分层忽略了环境(M X E)互动的管理,导致杂散的关系和结果在地方一级不相关。在聚类方法的情况下,与粗分层(5和10簇)相比,细分层(18和30簇)解释了较大部分的产率方差。但是,对于我们在NC-US地区的案例研究中,我们没有发现有权证明数据丰富的聚类方法优于解释产量变化的能力并识别M X E相互作用的能力。只有30个簇的分层才表现出较小的提高能力,以解释与TED相比的产量变异。然而,使用聚类方法具有重要的权衡,包括大量的数据要求和困难,以扩展到不同地区的结果和随着时间的推移。由于地区的不稳定天气和年多年来,分层方法的选择应基于目标,数据可用性和产量的预期变化。

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