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A simple reclassification method for correcting uncertainty in land Use/Land cover data sets used with land surface models

机译:一种用于修正土地使用/土地覆盖数据集与土地表面模型中的不确定性的简单重新分类方法

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摘要

With increasing computational resources, environmental models are run at finer grid spacing to resolve the land surface characteristics. The land use/land cover (LULC) data sets input into land surface models are used to assign various default parameters from a look-up tables. The objective of this study is to assess the potential uncertainty in the LULC data and to present a reclassification method for improving the accuracy of LULC data sets. The study focuses on the Southern Great Plains and specifically the Walnut River Watershed in southeastern Kansas, USA. The uncertainty analysis is conducted using two data sets: The National Land Cover Dataset 1992 (NLCD 92) and the Gap Analysis Program (GAP) data set, and a reclassification logic tree. A comparison of these data sets showed that they do not agree for approximately 27% of the watershed. Moreover, an accuracy assessment of these two data sets indicated that neither had an overall accuracy as high as 80%. Using the relationships between land-surface characteristics and LULC, a reclassification of the watershed was conducted using a logical model. This model iteratively reclassified the uncertain pixels according to their surface characteristics. The model utilized normalized difference vegetation index (NDVI) measurements during April and July 2003, elevation, and slope. The reclassification yielded a revised LULC dataset that was substantially improved. The overall accuracy of the revised data set was nearly 93%. The study results suggest: (i) as models adopt finer grid spacings, the uncertainty in the LULC data will become significant; (ii) assimilating NDVI into the land-surface models can reduce the uncertainty due to LULC assignment; (iii) the standard LULC data sets must be used with caution when the focus is on local scale; and (iv) reclassification is a valuable means of improving the accuracy of LULC data sets prior to applying them to local issues or phenomena.
机译:随着计算资源的增加,以更细的网格间距运行环境模型以解决陆地表面特征。输入到土地表面模型中的土地使用/土地覆盖(LULC)数据集用于从查找表分配各种默认参数。这项研究的目的是评估LULC数据中的潜在不确定性,并提出一种用于提高LULC数据集准确性的重新分类方法。这项研究的重点是南部大平原,特别是美国堪萨斯州东南部的核桃河流域。不确定性分析使用两个数据集进行:国家土地覆盖数据集1992(NLCD 92)和差距分析程序(GAP)数据集,以及重新分类逻辑树。这些数据集的比较表明,它们在约27%的分水岭上不一致。此外,对这两个数据集的准确性评估表明,这两个数据集的整体准确性都没有高达80%。利用土地表面特征和土地利用变化量之间的关系,使用逻辑模型对流域进行了重新分类。该模型根据不确定像素的表面特征迭代地对其进行重新分类。该模型利用2003年4月至7月的归一化差异植被指数(NDVI)测量,高程和坡度。重新分类产生了修订后的LULC数据集,该数据集得到了显着改善。修订后的数据集的总体准确性接近93%。研究结果表明:(i)随着模型采用更精细的网格间距,LULC数据中的不确定性将变得很重要; (ii)将NDVI纳入地表模型可以减少由于LULC分配而引起的不确定性; (iii)当关注本地规模时,必须谨慎使用标准LULC数据集; (iv)重新分类是在将LULC数据集应用于本地问题或现象之前提高其准确性的宝贵手段。

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