首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Using NASA Earth observations and Google Earth Engine to map winter cover crop conservation performance in the Chesapeake Bay watershed
【24h】

Using NASA Earth observations and Google Earth Engine to map winter cover crop conservation performance in the Chesapeake Bay watershed

机译:使用美国宇航局地球观测和谷歌地球发动机在切萨皮克湾流域映射冬季覆盖作物保护性能

获取原文
获取原文并翻译 | 示例
           

摘要

Winter cover crops such as barley, rye, and wheat help to improve soil structure by increasing porosity, aggregate stability, and organic matter, while reducing the loss of agricultural nutrients and sediments into waterways. The environmental performance of cover crops is affected by choice of species, planting date, planting method, nutrient inputs, temperature, and precipitation. The Maryland Department of Agriculture (MDA) oversees an agricultural cost-share program that provides farmers with funding to cover costs associated with planting winter cover crops, and the U.S. Geological Survey (USGS) and the U.S. Department of Agriculture-Agricultural Research Service (USDA-ARS) have partnered with the MDA to develop satellite remote sensing techniques for measuring cover crop performance. The MDA has developed the capacity to digitize field boundaries for all fields enrolled in their cover crop programs (> 26,000 fields per year) to support a remote sensing performance analysis at a statewide scal,e and has requested assistance with the associated imagery processing from the National Aeronautics and Space Administration (NASA). Using the Google Earth Engine (GEE) cloud computing platform, scripts were developed to process Landsat 5/7/8 and Harmonized Sentinel-2 imagery to measure winter cover crop performance. We calibrated cover crop performance models using linear regression between satellite vegetation indices and USGS / USDA-ARS field sampling data collected on Maryland farms between 2006 and 2012 (1298 samples). Satellite-derived Normalized Difference Vegetation Index (NDVI) values showed significant correlation with the natural logarithm of cover crop biomass (p <= 0.01, R-2 = 0.56) and with observed percent vegetative ground cover (p <= 0.01, R-2 = 0.68). The GEE scripts were used to composite seasonal maximum NDVI values for each enrolled cover crop field and calculate performance metrics for the winter and spring seasons of three enrollment years (2014-15, 2015-16, and 2017-18) for four Maryland counties. Results from winter 2017-18 demonstrate that rye and barley fields had higher biomass than wheat fields, and that early planting, along with planting methods that increase seed-soil contact, increased performance. The processing capabilities of GEE will support the MDA in scaling up remote sensing performance analysis statewide, providing information to evaluate the environmental outcomes associated with various agronomic management strategies. The tool can be modified for different seasonal cutoffs, utilize new sensors to capture phenology in winter and spring, and scale to larger regions for use in adaptive management of winter cover crops planted for environmental benefit.
机译:冬季封面作物如大麦,黑麦和小麦通过增加孔隙,骨料稳定性和有机物质来帮助改善土壤结构,同时减少农业营养素和沉积物进入水道。封面作物的环境性能受物种选择,种植日,种植方法,营养输入,温度和降水的影响。马里兰州农业部(MDA)监督农业成本股计划,为农民提供资金,以支付与种植冬季覆盖作物以及美国地质调查(USGS)和美国农业农业科学部门(USDA)的费用-ARS)与MDA合作开发用于测量覆盖作物性能的卫星遥感技术。 MDA开发了向覆盖裁剪计划中注册的所有字段(>每年26,000个字段)的所有字段进行数字界限的能力,以支持州全级SCAR,E的遥感性能分析,并要求提供相关的图像处理美国国家航空航天局(NASA)。使用Google地球发动机(GEE)云计算平台,开发了脚本以处理Landsat 5/7/8并协调的Sentinel-2图像来测量冬季覆盖作物性能。我们在2006年至2012年间马里兰州农场收集的卫星植被指数和USGS / USDA-ARS现场采样数据的线性回归校准了覆盖了作物性能模型。卫星衍生的归一化差异植被指数(NDVI)值与覆盖作物生物质的天然对数(P <= 0.01,R-2 = 0.56)显示出显着的相关性,并且观察到的营养百分比百分比(P <= 0.01,R-2 = 0.68)。 GEE脚本用于综合季节性最大NDVI值,为每个注册的覆盖裁剪领域进行冬季和春季的春季和春季(2014-15,2015-16和2017-18),为四个马里兰州县的春季和春季。结果2017-18冬季表明,黑麦和大麦田的生物量高于麦田,以及早期种植,以及种植方法增加种子接触,提高性能。 GEE的处理能力将支持MDA在缩放遥感性能分析状态方面,提供信息,以评估与各种农艺管理策略相关的环境结果。该工具可以修改不同的季节性截止值,利用新传感器在冬季和春季捕获候选,并扩大到较大的区域,用于种植环境效益的冬季覆盖作物的适应性管理。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号