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Selection of a taxonomic level for soil mapping using diversity and map purity indices: A case study from an Iranian arid region

机译:使用多样性和地图纯度指数为土壤测绘选择分类标准:以伊朗干旱地区为例

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摘要

There is a growing demand for digital soil maps for environmental planning, modeling and management. If mapped soil classes are taken from a hierarchical taxonomic system, a question arises: which taxonomic level is most appropriate to be depicted on the map with a given sample size, available environmental covar-iates and the strength of predictive relations between covariates and the soil classes? Pedodiversity, the study and measurement of soil diversity, can be considered as a framework to analyze spatial patterns depicted on soil maps. This paper discusses the selection of the taxonomic level for soil mapping in an arid region in southeast Iran on the basis of (1) the purity of a digital soil class map derived from an artificial neural network (ANN) prediction method using environmental covariates and (2) pedodiversity indices of these soil maps. The prediction of soil classes and the calculation of diversity indices were carried out for taxonomic categories of order, suborder, great group, and subgroup. Using the feed forward back-propagation algorithm, three-layer ANNs with input, hidden and output layers were trained for soil class prediction at each category level. In most predictions, the combined use of terrain attributes and geomorphic surfaces provided the best results. When the taxonomic level changed from order to subgroup, the purity decreased, whereas the values of the diversity indices increased. The highest purity and lowest diversity are observed at the order level, indicating a good quality map in terms of its purity, but reflecting only little soil diversity, thus with a low usage potential. On the other hand, soil maps at the level of subgroup illustrate high diversity and low purity, so that the predicted map units are highly uncertain. This map is also inappropriate for users. We introduced an index combining the diversity and purity which indicated that the best taxonomic level for soil mapping in the study area is the great group, with both high diversity and purity.
机译:对于用于环境规划,建模和管理的数字土壤地图的需求日益增长。如果从分层分类学系统中获取映射的土壤类别,则会出现一个问题:哪种分类学水平最适合在给定样本量,可用环境变量和协变量与土壤之间的预测关系强度的情况下在地图上进行描述类?土壤多样性(Pedodiversity)是对土壤多样性的研究和测量,可以被认为是分析土壤图谱上描述的空间格局的框架。本文讨论了基于(1)使用环境协变量从人工神经网络(ANN)预测方法得出的数字土壤分类图的纯度,并基于(1)伊朗东南部干旱地区土壤分类的分类标准的选择。 2)这些土壤图的土壤多样性指数。对分类,阶次,大群和亚群的分类类别进行了土壤类别的预测和多样性指数的计算。使用前馈反向传播算法,对具有输入,隐藏和输出层的三层ANN进行了训练,以在每个类别级别进行土壤分类预测。在大多数预测中,结合使用地形属性和地貌表面可提供最佳结果。当分类学水平从顺序变为亚组时,纯度下降,而多样性指数的值增加。在有序水平上观察到最高的纯度和最低的多样性,表明其纯度方面的质量很好,但仅反映了很少的土壤多样性,因此具有较低的使用潜力。另一方面,亚组水平的土壤图显示了高多样性和低纯度,因此预测的图单元高度不确定。此地图也不适用于用户。我们引入了一个将多样性和纯度相结合的指数,该指数表明研究区域内土壤测绘的最佳分类层次是高多样性和高纯度的大类。

著录项

  • 来源
    《Geomorphology》 |2013年第1期|86-97|共12页
  • 作者单位

    Department of Soil Science, College of Agriculture, Isfahan University of Technology, 84156-83111 Isfahan, Iran;

    Department of Soil Science, College of Agriculture, Isfahan University of Technology, 84156-83111 Isfahan, Iran;

    Department of Soil Science, College of Agriculture, Isfahan University of Technology, 84156-83111 Isfahan, Iran;

    Department of Geology and Soil Science, Ghent University, B9000 Ghent, Belgium;

    Soil and Water Research Division, Iranian Agricultural Research Organization, Isfahan, Iran;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Digital soil mapping; Artificial neural network; Taxonomic level; Pedodiversity; Map purity;

    机译:数字土壤制图;人工神经网络;分类水平;人为多样性地图纯度;
  • 入库时间 2022-08-18 03:36:44

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