class='kwd-title'>Method name: Sampling design t'/> A new method for selecting sites for soil sampling coupling global weighted principal component analysis and a cost-constrained conditioned Latin hypercube algorithm
首页> 美国卫生研究院文献>MethodsX >A new method for selecting sites for soil sampling coupling global weighted principal component analysis and a cost-constrained conditioned Latin hypercube algorithm
【2h】

A new method for selecting sites for soil sampling coupling global weighted principal component analysis and a cost-constrained conditioned Latin hypercube algorithm

机译:一种选择土壤采样地点的新方法结合全局加权主成分分析和成本受限的条件拉丁超立方体算法

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

class="kwd-title">Method name: Sampling design to represent both the feature and the geographical space class="kwd-title">Keywords: Auxiliary dataset, cLHC, GWPCA, Localised spatial soil variability, Optimised soil sampling design class="head no_bottom_margin" id="abs0010title">AbstractAnalysing spatial patterns of soil properties in a landscape requires a sampling strategy that adequately covers soil toposequences. In this context, we developed a hybrid methodology that couples global weighted principal component analysis (GWPCA) and cost-constrained conditioned Latin hypercube algorithm (cLHC). This methodology produce an optimized sampling stratification by analysing the local variability of the soil property, and the influence of environmental factors. The methodology captures the maximum local variances in the global auxiliary dataset with the GWPCA, and optimizes the selection of representative sampling locations for sampling with the cLHC. The methodology also suppresses the subsampling of auxiliary datasets from areas that are less representative of the soil property of interest. Consequently, the method stratifies the geographical space of interest in order to adequately represent the soil property. We present results on the tested method (R2 = 0.90 and RMSE = 0.18 m) from the Guinea savannah zone of Ghana. class="first-line-outdent" id="lis0005">
  • • It defines the local structure and accounts for localized spatial autocorrelation in explaining variability.
  • • It suppresses the occurrence of model-selected sampling locations in areas that are less representative of the soil property of interest.
  • 机译:<!-fig ft0-> <!-fig @ position =“ anchor” mode =文章f4-> <!-fig mode =“ anchred” f5-> <!-fig / graphic | fig / alternatives / graphic mode =“ anchored” m1-> class =“ kwd-title”>方法名称:代表要素和地理空间的采样设计 class =“ kwd-title” >关键字:辅助数据集,cLHC,GWPCA,局部空间土壤变异性,优化的土壤采样设计 class =“ head no_bottom_margin” id =“ abs0010title”>摘要分析土壤中土壤特性的空间格局景观需要一种抽样策略,以充分覆盖土壤的后遗症。在这种情况下,我们开发了一种混合方法,将全局加权主成分分析(GWPCA)与成本受限的条件拉丁超立方体算法(cLHC)结合在一起。这种方法通过分析土壤特性的局部变异性以及环境因素的影响,产生了优化的抽样分层。该方法利用GWPCA捕获了全局辅助数据集中的最大局部方差,并优化了用于使用cLHC进行采样的代表性采样位置的选择。该方法还可以抑制辅助数据集从不太代表目标土壤特性的区域进行二次采样。因此,该方法对感兴趣的地理空间进行分层,以充分表示土壤属性。我们介绍了来自加纳几内亚热带草原地区的测试方法(R 2 = 0.90和RMSE = 0.18 m)的结果。 class =“ first-line-outdent” id =“ lis0005”> <!-list-behavior =简单的前缀-word = mark-type = none max-label-size = 9->
  • •它定义了局部结构并解释了局部空间自相关
  • •它抑制了模型选择的采样位置在不太代表目标土壤特性的区域中的发生。
  • 著录项

    相似文献

    • 外文文献
    • 中文文献
    • 专利
    代理获取

    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