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Evaluating the effect of remote sensing image spatial resolution on soil exchangeable potassium prediction models in smallholder farm settings

机译:在小农户环境中评估遥感图像空间分辨率对土壤可交换钾预测模型的影响

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摘要

Major end users of Digital Soil Mapping (DSM) such as policy makers and agricultural extension workers are faced with choosing the appropriate remote sensing data. The objective of this research is to analyze the spatial resolution effects of different remote sensing images on soil prediction models in two smallholder farms in Southern India called Kothapally (Telangana State), and Masuti (Karnataka State), and provide empirical guidelines to choose the appropriate remote sensing images in DSM. Bayesian kriging (BK) was utilized to characterize the spatial pattern of exchangeable potassium (Ke_X) in the topsoil (0-15 cm) at different spatial resolutions by incorporating spectral indices from Landsat 8 (30 m), RapidEye (5 m), and WorldView-2/GeoEye-l/Pleiades-lA images (2 m). Some spectral indices such as band reflectances, band ratios, Crust Index and Atmospherically Resistant Vegetation Index from multiple images showed relatively strong correlations with soil K_(eX) in two study areas. The research also suggested that fine spatial resolution WorldView-2/GeoEye-l/Pleiades-lA-based and Rapid Eye-based soil prediction models would not necessarily have higher prediction performance than coarse spatial resolution Landsat 8-based soil prediction models. The end users of DSM in smallholder farm settings need select the appropriate spectral indices and consider different factors such as the spatial resolution, band width, spectral resolution, temporal frequency, cost, and processing time of different remote sensing images. Overall, remote sensing-based Digital Soil Mapping has potential to be promoted to smallholder farm settings all over the world and help smallholder fanners implement sustainable and field-specific soil nutrient management scheme.
机译:数字土壤测绘(DSM)的主要最终用户,例如政策制定者和农业推广人员,都面临着选择合适的遥感数据的挑战。这项研究的目的是分析不同遥感影像对印度南部的两个小农户农场,即Kothapally(特兰甘纳州)和Masuti(卡纳塔克邦)的土壤预测模型的空间分辨率影响,并提供经验准则以选择合适的DSM中的遥感影像。贝叶斯克里格(BK)用于通过结合Landsat 8(30 m),RapidEye(5 m)和WorldView-2 / GeoEye-1 / Pleiades-1A图像(2 m)。来自两个图像的一些光谱指数,例如带反射率,带比,结壳指数和耐大气植被指数,在两个研究区域中与土壤K_(eX)表现出较强的相关性。研究还表明,基于WorldView-2 / GeoEye-1 / Pleiades-1A和基于Rapid Eye的精细空间分辨率的土壤预测模型不一定比基于粗糙空间分辨率Landsat 8的土壤预测模型具有更高的预测性能。小农场环境中DSM的最终用户需要选择合适的光谱指数,并考虑不同的因素,例如空间分辨率,带宽,光谱分辨率,时间频率,成本以及不同遥感图像的处理时间。总体而言,基于遥感的数字土壤测绘有潜力推广到世界各地的小农户农场,并帮助小农户实施可持续的和针对特定领域的土壤养分管理计划。

著录项

  • 来源
    《Journal of Environmental Management》 |2017年第15期|423-433|共11页
  • 作者单位

    School of Natural Resource and Environment, University of Florida, 103 Black Hall, PO Box 116455, Gainesville, FL, 32611, USA,School of Forest Resources and Conservation - Ceomatics Program, University of Florida, 301 Reed Lab, PO Box 110565, Gainesville, FL, 32611-0565, USA,Department of Environmental Science and Engineering, Beijing Technology and Business University, Beijing. 100048, China;

    School of Natural Resource and Environment, University of Florida, 103 Black Hall, PO Box 116455, Gainesville, FL, 32611, USA,School of Forest Resources and Conservation - Ceomatics Program, University of Florida, 301 Reed Lab, PO Box 110565, Gainesville, FL, 32611-0565, USA;

    School of Natural Resource and Environment, University of Florida, 103 Black Hall, PO Box 116455, Gainesville, FL, 32611, USA,Pedometrics, Landscape Analysis and GIS Laboratory, Soil and Water Science Department, University of Florida, 2181 McCarty Hall, PO Box 110290, Gainesville, FL, 32611, USA;

    School of Forest Resources and Conservation - Ceomatics Program, University of Florida, 301 Reed Lab, PO Box 110565, Gainesville, FL, 32611-0565, USA,Gulf Coast REC/School of Forest Resources and Conservation - Geomatics Program, University of Florida, 1200 N. Park Road, Plant City, FL, 33563, USA;

    international Crops Research Institute for the Semi-Arid Tropics (ICRISAT), Patancheru, 502324, Hyderabad, India;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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