Department of Soil Science, Faculty of Agriculture, University of Zanjan, Iran; School of Environmental Sciences, University of Guelph, Canada; Faculty of Agriculture and Natural Resources, University of Mohaghegh Ardabili, Ardabil, Iran.
Department of Soil Science, Faculty of Agriculture, University of Zanjan, Iran.
Sci Total Environ. 2020 Jun 15;721:137703. doi: 10.1016/j.scitotenv.2020.137703. Epub 2020 Mar 7.
Modeling and mapping of soil properties are critical in many environmental, climatic, ecological and hydrological applications. Digital soil mapping (DSM) techniques are now commonly applied to predict soil properties with limited data by developing predictive relationships with environmental covariates. Most studies derive covariates from a digital elevation model (named static covariates). Many works also include single-day remotely sensed satellite imagery. However, multitemporal satellite images can capture information about soil properties over time and bring additional information in predicting soil properties in DSM. We refer to covariates derived from multitemporal satellite images as dynamic covariates. The objective of this study was to assess the performance of DSM when using terrain derivatives (static covariates), single-date remotely sensed satellite indices (limited dynamic covariates), multitemporal satellite indices (dynamic covariates), and combinations of terrain derivatives and satellite indices (covariate fusion) as covariates in predicting soil properties and estimating uncertainty. Three soil properties are considered in this study: organic carbon (OC), sand content, and calcium carbonate equivalent (CCE). Inclusion of single and/or multitemporal remotely sensed satellite indices improved the prediction of soil properties over traditionally used terrain indices. Significant improvements were observed in the prediction of soil properties using two models, Cubist and random forest (RF). The increase in the R values for Cubist and RF were 126% and 78% for OC, 110% and 54% for sand, and 87% and 32% for CCE. The RMSE decreased by 34% and 27% for OC, 25% and 12% for sand, and 39% and 19% for CCE, when compared to the terrain indices only model. This also reduced the uncertainty of estimation and mapping. These clearly showed the advantage of using multitemporal satellite data fusion rather than simply using static terrain indices for DSM of soil properties to deliver a great potential in improving soil modeling and mapping for many applications.
土壤属性建模和制图在许多环境、气候、生态和水文应用中至关重要。数字土壤制图(DSM)技术现在常用于通过与环境协变量建立预测关系来用有限的数据预测土壤属性。大多数研究从数字高程模型(称为静态协变量)中得出协变量。许多研究还包括单日遥感卫星图像。然而,多时相卫星图像可以随时间捕获土壤属性信息,并在 DSM 中预测土壤属性时带来额外信息。我们将从多时相卫星图像中得出的协变量称为动态协变量。本研究的目的是评估 DSM 在使用地形导数(静态协变量)、单日遥感卫星指数(有限动态协变量)、多时相卫星指数(动态协变量)以及地形导数和卫星指数的组合(协变量融合)作为协变量来预测土壤属性和估计不确定性时的性能。本研究考虑了三种土壤属性:有机碳(OC)、砂含量和碳酸钙当量(CCE)。在传统使用的地形指数中,包括单时相和/或多时相遥感卫星指数可以提高土壤属性的预测能力。使用 Cubist 和随机森林(RF)两种模型,土壤属性的预测得到了显著改善。对于 OC,Cubist 和 RF 的 R 值增加了 126%和 78%,对于砂,增加了 110%和 54%,对于 CCE,增加了 87%和 32%。与仅使用地形指数的模型相比,OC 的 RMSE 降低了 34%和 27%,砂的 RMSE 降低了 25%和 12%,CCE 的 RMSE 降低了 39%和 19%。这也降低了估计和制图的不确定性。这清楚地表明,在 DSM 中使用多时相卫星数据融合而不仅仅是使用静态地形指数来进行土壤属性建模具有优势,为许多应用提供了改进土壤建模和制图的巨大潜力。