...
首页> 外文期刊>Soil Science Society of America Journal >A Random-Path Markov Chain Algorithm for Simulating Categorical Soil Variables from Random Point Samples
【24h】

A Random-Path Markov Chain Algorithm for Simulating Categorical Soil Variables from Random Point Samples

机译:基于随机点样本的分类土壤变量的随机路径马尔可夫链算法

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Quantitative prediction and simulation of categorical soil variables from limited samples are crucial for cost-effectively acquiring exhaustive area-class maps. Conventional methods, however, usually cannot meet all of the requirements for class simulation in incorporating interclass relationships and generating polygon features. We developed a random-path sequential simulation algorithm based on the Markov chain random field theory. Our objective was to find a suitable method for predictive area-class soil mapping from irregularly distributed point samples, and thus extend Markov chains into practical nonlinear geostatistics. The algorithm was used to simulate soil type maps conditioned on three different sample data sets, and was compared with the widely used indicator kriging simulation algorithm–sequential indicator simulation with ordinary indicator kriging (SISoik). Results show that the algorithm works well with both dense and sparse random samples in reproducing all classes and input statistics. Compared with SISoik, the algorithm has the following advantages: (i) it more effectively captures complex patterns of soil classes and obeys their interclass relationships; (ii) it generates lower spatial uncertainty and more accurate realizations—for example, the relative increases in average percentage of correctly classified locations of realizations for the sparse, medium, and dense data sets are 5.0, 9.9, and 8.5%, respectively; (iii) it generates polygon features in realizations in accordance with the style of area-class soil maps; and (iv) it can generate classes missed in sampling but confirmed by experts. We concluded that the algorithm provides a practical spatial statistical tool for prediction and simulation of categorical soil spatial variables.
机译:有限样本中分类土壤变量 的定量预测和模拟对于经济有效地获取 详尽的地类图至关重要。但是,常规方法通常 不能满足 包含类间关系并生成面 功能的类模拟的所有要求。我们基于马尔可夫链随机场理论开发了一种随机路径顺序仿真算法 。我们的目标 是从不规则分布的点样本中找到一种用于预测区域类土壤 映射的合适方法,从而 将马尔可夫链扩展为实际的非线性 该算法用于模拟在三个不同样本数据集上调节 条件的土壤类型图,并与 广泛使用的指标克里金法模拟进行比较使用普通指示器克里格(SISoik)进行算法–序列 指示器仿真。 结果表明,该算法在复制时使用稠密和 稀疏随机样本均能很好地工作。所有类别和输入统计信息。 与SISoik相比,该算法具有以下优点: (i)它可以更有效地捕获土壤类别的复杂模式 并遵守他们的阶级关系; (ii)它会产生 更低的空间不确定性和更准确的实现-例如, 的正确实现的正确 分类位置的平均百分比的相对增加稀疏,中等, 和密集数据集分别为5.0、9.9和8.5%; (iii) 根据区域类土壤图的样式在 的实现中生成多边形特征; (iv)可以生成在抽样中遗漏但得到专家确认的 类。我们得出结论, 该算法为分类土壤空间变量 的预测和模拟提供了一种实用的空间统计 工具。

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