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Identifying representative crop rotation patterns and grassland loss in the US Western Corn Belt

机译:确定美国西部玉米带的代表性作物轮作模式和草地损失

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Crop rotations (the practice of growing crops on the same land in sequential seasons) reside at the core of agronomic management as they can influence key ecosystem services such as crop yields, carbon and nutrient cycling, soil erosion, water quality, pest and disease control. Despite the availability of the Cropland Data Layer (CDL) which provides remotely sensed data on crop type in the US on an annual basis, crop rotation patterns remain poorly mapped due to the lack of tools that allow for consistent and efficient analysis of multi-year CDLs. This study presents the Representative Crop Rotations Using Edit Distance (RECRUIT) algorithm, implemented as a Python software package, to select representative crop rotations by combining and analyzing multi-year CDLs. Using CDLs from 2010 to 2012 for 5 states in the US Midwest, we demonstrate the performance and parameter sensitivity of RECRUIT in selecting representative crop rotations that preserve crop area and capture land-use changes. Selecting only 82 representative crop rotations accounted for over 90% of the spatio-temporal variability of the more than 13,000 rotations obtained from combining the multi-year CDLs. Furthermore, the accuracy of the crop rotation product compared favorably with total state-wide planted crop area available from agricultural census data. The RECRUIT derived crop rotation product was used to detect land-use conversion from grassland to crop cultivation in a wetland dominated part of the US Midwest. Monoculture corn and monoculture soybean cropping were found to comprise the dominant land-use on the newly cultivated lands. (C) 2014 Elsevier B.V. All rights reserved
机译:轮作(在连续的季节在同一土地上种植农作物的做法)是农艺管理的核心,因为它们可以影响关键的生态系统服务,例如作物产量,碳和养分循环,土壤侵蚀,水质,病虫害和疾病控制。尽管可以使用Cropland数据层(CDL)来每年在美国提供有关作物类型的遥感数据,但是由于缺少能够对多年期进行一致且有效的分析的工具,因此作物轮作模式的映射仍然很差CDL。本研究介绍了使用Python软件包实现的使用编辑距离代表性作物轮作(RECRUIT)算法,通过结合和分析多年的CDL来选择代表性作物轮作。使用2010年至2012年美国中西部5个州的CDL,我们证明RECRUIT在选择具有代表性的轮作以保留作物面积并捕获土地利用变化时的性能和参数敏感性。仅选择82个有代表性的作物轮作,就占了多年期CDL组合所获得的超过13,000个轮作的时空变异的90%以上。此外,农作物轮作产品的准确性与可从农业普查数据中获得的全州种植作物总面积相比具有优势。 RECRUIT衍生的作物轮作产品用于检测美国中西部一个湿地为主的地区从草地到作物种植的土地利用转化。发现单作玉米和单作大豆的种植构成了新耕地的主要土地利用方式。 (C)2014 Elsevier B.V.保留所有权利

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