...
首页> 外文期刊>Australian Journal of Soil Research >Uncertainty assessment of soil organic carbon content spatial distribution using geostatistical stochastic simulation
【24h】

Uncertainty assessment of soil organic carbon content spatial distribution using geostatistical stochastic simulation

机译:基于地统计随机模拟的土壤有机碳含量空间分布不确定性评估

获取原文
获取原文并翻译 | 示例
           

摘要

Soil organic carbon (SOC) affects many processes in soil. The main objective of this study was the prediction and uncertainty assessment of the spatial patterns of SOC through stochastic simulation using 2 simulation algorithms, sequential Gaussian simulation (sGs) and sequential indicator simulation (sis). The dataset consisted of 158 point measurements of surface SOC taken from an 18-ha field in Lower Austria. Conditional stochastic simulation algorithms were used to generate 100 maps of equiprobable spatial distribution for SOC. In general the simulated maps represented spatial distribution of SOC more realistically than the kriged map, i.e. overcoming the smoothing effect of kriging. Unlike sGs, sis was able to preserve the connectivity of extreme values in generated maps. The SOC simulated maps generated through sGs reproduced the sample statistics well. The reproduction of class-specific patterns of spatial continuity of SOC for the simulated model produced through sis was also reasonably good. The results highlight that when the class-specific patterns of spatial continuity of the attribute must be preserved, sis is preferred to sGs. For local uncertainty, standard deviations obtained using kriging varied much less across the study area than those obtained using simulations. This shows that the conditional standard deviations achieved through simulations depend on data values in addition to data configuration for greater reliability in reporting the estimation precision. Further, according to accuracy plots and goodness statistic, G, sis performs the modelling uncertainty better than sGs. The simulated models can provide useful information in risk assessment of SOC management in Lower Austria.
机译:土壤有机碳(SOC)影响土壤中的许多过程。这项研究的主要目的是通过使用2种模拟算法,顺序高斯模拟(sGs)和顺序指示器模拟(sis)的随机模拟对SOC的空间模式进行预测和不确定性评估。该数据集包括从下奥地利州一个18公顷的油田中获取的158个表面SOC点测量值。使用条件随机模拟算法生成SOC的100个等概率空间分布图。通常,模拟图比克里格图更真实地表示了SOC的空间分布,即克服了克里格法的平滑效果。与sG不同,sis能够保留所生成地图中极值的连通性。通过sG生成的SOC模拟图很好地再现了样本统计数据。通过sis生成的模拟模型的SOC空间连续性的特定于类的模式的再现也相当好。结果突出表明,当必须保留属性的空间连续性的特定于类的模式时,sis优于sG。对于局部不确定性,在研究区域中,使用克里金法获得的标准偏差与使用模拟获得的标准偏差相比要小得多。这表明,通过仿真获得的条件标准偏差还取决于数据值以及数据配置,以提高报告估算精度的可靠性。此外,根据准确度图和善度统计量G,sis比sGs更好地执行了建模不确定性。仿真模型可以为下奥地利州SOC管理的风险评估提供有用的信息。

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