首页> 外文期刊>Geoderma: An International Journal of Soil Science >Digital soil mapping algorithms and covariates for soil organic carbon mapping and their implications: A review
【24h】

Digital soil mapping algorithms and covariates for soil organic carbon mapping and their implications: A review

机译:土壤有机碳映射数字土壤映射算法及其含义:综述

获取原文
获取原文并翻译 | 示例
           

摘要

This article reviews the current research and applications of various digital soil mapping (DSM) techniques used to map Soil Organic Carbon (SOC) concentration and stocks following a systematic mapping approach from 2013 until present (18 February 2019). It is intended that this review of relevant literature will assist prospective researchers by identifying knowledge clusters and gaps in relation to the digital mapping of SOC. Of 120 studies, most were clustered in some specific countries such as China, Australia and the USA. The highest number publications were in 2016 and 2017. Regarding the predictive models, there was a progression from Linear Models towards Machine Learning (ML) techniques, and hybrid models in Regression Kriging (RK) framework performed better than individual models. Multiple Linear Regression (MLR) was the most frequently used method for predicting SOC, although it was outperformed by other ML techniques in most studies. Random Forest (RF) was found to perform better than MLR and other ML techniques in most comparative studies. Other common and competitive techniques were Cubist, Neural Network (NN), Boosted Regression Tree (BRT), Support Vector Machine (SVM) and Geographically Weighted Regression (GWR). Due to the inconsistency in various comparative studies, it would be advisable to calibrate the competitive algorithms using specific experimental datasets. This review also reveals the environmental covariates that have been identified as the most important by RF technique in recent years in regard to digital mapping of SOC, which may assist in selecting optimum sets of environmental covariates for mapping SOC. Covariates representing organism/organic activities were among the most frequent among top five covariates, followed by the variables representing climate and topography. Climate was reported to be influential in determining the variation in SOC level at regional scales, followed by parent materials, topography and land use. However, for mapping at a resolution that represents smaller areas such as a farm- or plot-scale, land use and vegetation indices were stated to be more influential in predicting SOC. Furthermore, unlike a previous review work, all recent studies in this review incorporated validation and 41% of them estimated spatially explicit prediction of uncertainty. Only 9.16% studies performed external validation, whereas most studies used data-splitting and cross-validation techniques which may not be the best options for datasets obtained through non-probability sampling.
机译:本文审查了各种数字土壤映射(DSM)技术的目前的研究和应用,用于在2013年从2013年到现在的系统映射方法映射土壤有机碳(SOC)浓度和股票(2019年2月18日)。旨在通过识别与SoC的数字映射相关的知识集群和差距,协助预期研究人员提供潜在的研究人员。 120项研究中,大多数是在中国,澳大利亚和美国等一些特定国家聚集的。最高数量的出版物是在2016年和2017年。关于预测模型,线性模型对机器学习(ML)技术的进展,并且回归Kriging(RK)框架中的混合模型比各个模型更好地执行。多元线性回归(MLR)是最常用的预测SOC的方法,尽管它在大多数研究中的其他ML技术表现优于其他。发现随机森林(RF)在大多数比较研究中表现优于MLR和其他ML技术。其他常见和竞争技术是立体师,神经网络(NN),提升回归树(BRT),支持向量机(SVM)和地理上加权回归(GWR)。由于各种比较研究的不一致,建议使用特定的实验数据集校准竞争性算法。该审查还揭示了近年来RF技术被确定为SOC数字映射的RF技术的环境协变量,这可能有助于选择用于映射SOC的最佳环境协变量。代表生物/有机活性的协变量是前五个协变量中最常见的,其次是代表气候和地形的变量。据报道,气候在确定区域尺度的SOC水平的变化时,气候有影响力,其次是母材,地形和土地利用。然而,为了以代表诸如农场或地块规模的较小区域的分辨率进行映射,在预测SoC预测SoC时,该界限和植被指数表示更有影响力。此外,与先前的审查工作不同,在本综述中的所有最近的研究都注册了验证,其中41%估计了对不确定性的空间显式预测。只有9.16%的研究进行了外部验证,而大多数研究使用数据分离和交叉验证技术,这可能不是通过非概率采样获得的数据集的最佳选择。

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