为美国农业部贝尔茨维尔农业研究中心的农场管理和研究开发网格化产量数据档案库

IF 1.3 Q3 AGRONOMY Agrosystems, Geosciences & Environment Pub Date : 2024-02-18 DOI:10.1002/agg2.20474
Wayne P. Dulaney, Martha C. Anderson, Feng Gao, Alan Stern, Glenn Moglen, George Meyers, Craig S. T. Daughtry, William White, Uvirkaa Akumaga, Jennifer Showalter
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引用次数: 0

摘要

高质量、网格化的作物产量地图可以辨别各个农田生产力的空间变化,在许多农业和遥感应用中都极具价值。从 20 世纪 90 年代初开始,谷物产量监测仪的开发和采用极大地促进了这些数据的可用性。但是,如果不进行额外处理以确保数据质量,原始产量监测数据的效用就会受到限制。此外,通常还没有一个可随时访问的数据存储库,以研究长期产量变化对气候和管理的影响。我们介绍了一种制作多年(目前已处理了 7 年)网格化产量数据档案的方案,该档案来自马里兰州贝尔茨维尔市贝尔茨维尔农业研究中心(BARC)从 40 多块生产田获取的产量监测数据。该档案的制作包括将产量监测数据投影到适合制图的地理坐标系统中,识别并删除数据异常值,以及使用块克里金法制作网格化空间插值产量地图。所有地图产品均以通用的非专有文件格式制作,以便于访问。对处理后的产量监测数据进行的初步评估强调了数据过滤的必要性,并显示了以前的土地利用方式和生物物理特性(如地形和土壤水分可用性)对产量响应的影响。我们讨论了空间插值的档案产量图在精准农业技术实施中的应用,如开发针对具体地点的变率处方以及遥感应用,包括为长期农业试验选择田间地点和评估作物建模方法。网格产量数据档案将存放在国家农业图书馆,作为一个动态数据集,其广度和深度将继续扩大。它将成为美国农业部内部产量监测调查以及外部补充工作的一部分,并为其提供支持。交付给 NAL 的所有地理空间数据都将遵守 ISO 19115 地理空间元数据标准,以便用户全面了解产量监测和相关数据集。
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Development of a gridded yield data archive for farm management and research at the USDA Beltsville Agricultural Research Center

High-quality, gridded maps of crop yield, which discern the spatial variability in productivity across individual farm fields, are extremely valuable in numerous agricultural and remote sensing applications. The availability of these data was greatly facilitated by the development and adoption of grain yield monitors starting in the early 1990s. However, the utility of raw yield monitor data is limited if additional processing has not been carried out to ensure data quality. In addition, a readily accessible data repository that allows for examining long-term yield variability in response to climate and management is often not available. We present a protocol for producing a multi-year (7 years currently processed), gridded yield data archive derived from yield monitor data acquired from over 40 production fields at the Beltsville Agricultural Research Center (BARC) in Beltsville, MD. Production of the archive involved the projection of the yield monitor data into a geographic coordinate system suitable for mapping, the identification and removal of data outliers, and the production of gridded, spatially interpolated yield maps using block Kriging. All map products were produced in common, nonproprietary file formats for easy access. Preliminary assessments of the processed yield monitor data have underscored the necessity of data filtering and have shown the influence of previous land use practices and biophysical properties, such as topography and soil moisture availability, on yield response. We discuss the use of spatially interpolated, archival yield maps in the implementation of precision farming techniques such as the development of site-specific variable rate prescriptions as well as remote sensing applications, including the selection of field sites for long-term agricultural experiments and the assessment of crop modeling approaches. The gridded yield data archive will be housed at the National Agricultural Library as a dynamic dataset that will continue to expand in breadth and depth. It will be a part of and provide support to internal USDA yield monitoring investigations as well as complementary external efforts. All geospatial data delivered to NAL will adhere to the ISO 19115 Geospatial Metadata Standards to provide the user with a full understanding of the yield monitor and associated datasets.

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来源期刊
Agrosystems, Geosciences & Environment
Agrosystems, Geosciences & Environment Agricultural and Biological Sciences-Agricultural and Biological Sciences (miscellaneous)
CiteScore
2.60
自引率
0.00%
发文量
80
审稿时长
24 weeks
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