利用预测模型绘制撒哈拉沙漠岩石地层出现概率图

IF 1.4 4区 农林科学 Q4 SOIL SCIENCE
T. Assami, H. Chenchouni, S. Hadj-Miloud
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引用次数: 0

摘要

摘要 岩石地层的存在阻碍了撒哈拉地区的农业发展。它阻碍了土壤的蓄水能力和作物根系的发育。由于石化地层位于地表或深层,通常难以绘制地图。本研究使用逻辑回归-克里金模型和逻辑回归模型,通过对阿尔及利亚撒哈拉沙漠 22 573 公顷面积上的 466 个观测点的观测,绘制了岩石层出现概率的地图。这些模型包括作为环境协变量的遥感指数和地形变量。模型的准确性通过曲线下面积(AUC)来验证。通过对表现最好的概率图应用 0.7 的阈值,生成了二元图。我们的结果表明,由于在模型中考虑了残余空间相关性,逻辑回归-克里金法的表现最好(AUC = 0.88)。与地形变量相比,粒度指数协变量的相关性最高,这表明光谱指数非常有用。根据二元图,与岩石地层存在相关的风险是有限的,占研究区域的 26%。在撒哈拉沙漠,虽然岩石地层与测试的环境协变量的相关性很弱,但在预测建模方法中使用卫星图像和残余自相关性改进了岩石地层的绘图,从而改进了对岩石地层的风险评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Mapping the Petrogypsic Horizon Occurrence Probability in the Sahara Desert Using Predictive Models

Mapping the Petrogypsic Horizon Occurrence Probability in the Sahara Desert Using Predictive Models

Abstract

The presence of the petrogypsic horizon is an impediment to developing agriculture in the Sahara. It hinders the soil’s ability to store water and root development of crops. The petrogypsic horizon is commonly difficult to map due to its location either on the surface or at depth. This study used logistic regression-kriging and logistic regression models to map the petrogypsic horizon occurrence probability using 466 observations over an area of 22 573 ha in the Sahara Desert of Algeria. The models included remote sensing indices and topographic variables as environmental covariates. The accuracy of models was verified by the area under the curve (AUC). A binary map was produced by applying a threshold of 0.7 on the most performant probability map. Our results showed that logistic regression-kriging performed the best (AUC = 0.88), due to the consideration of residual spatial correlation in the model. The grain size index covariate was the most relevant compared to topographic variables, which showed the usefulness of spectral indices. Based on the binary map, the risk associated with the presence of the petrogypsic horizon was limited, representing 26% of the study area. In the Sahara Desert, though the petrogypsic horizon was weakly correlated with the tested environmental covariates, the use of satellite images and residual autocorrelation in a predictive modelling approach improved the mapping and thus risk assessment of the petrogypsic horizon.

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来源期刊
Eurasian Soil Science
Eurasian Soil Science 农林科学-土壤科学
CiteScore
2.70
自引率
35.70%
发文量
137
审稿时长
12-24 weeks
期刊介绍: Eurasian Soil Science publishes original research papers on global and regional studies discussing both theoretical and experimental problems of genesis, geography, physics, chemistry, biology, fertility, management, conservation, and remediation of soils. Special sections are devoted to current news in the life of the International and Russian soil science societies and to the history of soil sciences. Since 2000, the journal Agricultural Chemistry, the English version of the journal of the Russian Academy of Sciences Agrokhimiya, has been merged into the journal Eurasian Soil Science and is no longer published as a separate title.
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