基于传统土壤图的土壤—环境关系获取及推理制图研究
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国家自然科学基金项目(41171174)、国家863项目(2013AA102401-3)、中央高校基本科研业务费专项资金项目资助(2010QC035)资助


Knowledge of Soil-landscape Model Obtain from A Soil Map and Mapping
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Supported by the National Natural Science Foundation of China (No.41171174), the National High Technology Research and Development Program (No.2013AA102401-3), and the Central Universities Fundamental Research Funding (No.2010QC035)

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    摘要:

    在数字土壤制图研究中,从历史资料中提取准确的、详细的土壤—环境关系对于土壤图的更新和修正十分重要。从传统土壤图中提取土壤类型并从地形数据中提取环境参数,采用空间数据挖掘方法建立土壤—环境关系,并进行推理制图和精度验证。以湖北省黄冈市红安县华家河镇滠水河流域为例,首先选取成土母质和基于地形数据提取的高程、坡度、坡向等7个环境因子;然后利用频率分布原理得到包含土壤类型与环境因子信息的典型样本数据1410个;采用See5.0决策树方法进行空间数据挖掘,建立土壤—环境关系;将其导入SoLIM中进行推理制图;最后利用270个实地采样点验证所得土壤图的精度。土壤图的精度提高了约11%,证明了本研究方法对土壤类型和空间分布推理的可靠性。

    Abstract:

    Conventional soil maps are what soil survey experts turn out after field soil survey and interpretation of corresponding aerial photos, and often used as major data sources of information about spatial distribution of soils, which is essential to watershed management and eco-hydrology. With the development of geographic information technique, traditional soil survey methods are already far from efficient to meet the requirements of soil information services. As they used to be based on the experts’ empirical model of thinking, their products are often hard to express, exchange and store; the qualitative characteristics they described of a soil entity are often inconsistent with the characteristics of its spatial distribution, which tends to lead to low accuracy of the survey; and they are very costly and also limited to certain regions, which makes it hard to have information updated. Therefore, how to make full use of the existing historical resources and data is very important to retrieving efficiently soil maps higher in accuracy from the available information in Digital Soil Mapping (DSM). In this study, from the conventional soil maps and terrain data extracted were data of soil type and environment factors, based on which, a soil environment relationship model was established using the spatial data mining method, and finally, reliability and accuracy of the mapping was validated by field sampling. The Nieshui river basin in Huajiahe Town, Hongan County, Huanggang City, Hubei Province was selected for case study. The conventional soil maps of the study area plotted during the Second National Soil Survey were used to demonstrate processes of the research. The proposed method consists of five major steps. 1) Select seven environmental factors that were closely related to the process of pedogenesis and establish a geographic information system (GIS) database, which should contain a modified soil parent material map and data of terrain factors (elevation, slope, aspect, plan curvature, profile curvature and topographic wetness index) extracted from 10 m resolution Digital Elevation Model (DEM). 2) Extract 1410 typical sample data of soil types and environment factors by following the principle of frequency distribution, so as to reduce noises and abnormal data that would often occur in traditional soil mapping, because traditional soil mapping used to be done manually and contain some hard-to-reflect knowledge ( or noise) of the experts’ about proper relationship models. It is, therefore, essential to have the data properly pretreated. 3) Retrieve detailed expertise implied in the soil map product, using the spatial data mining techniques. Compared with the other algorithms, the decision tree algorithm is the most suitable one for extracting and expressing knowledge of the soil-environment model. So, the See5.0 decision tree algorithm is selected to perform spatial data mining and hence, obtain knowledge of soil and environment relationships. 4) Predict soil spatial distribution through inferring and mapping in Soil-Land Inference Model (SoLIM) based on the soil-environment knowledge and environment data obtained. SoLIM uses similarity degree as measurement parameter and fuzzy logic as basis to calculate similarity between soils. Within a given pixel, a number of corresponding soils have a variety of similarity degrees, which can be represented in fuzzy membership degree. Finally, the soil type represented by the highest fuzzy membership degree among the similarity vectors of a pixel is defined as the soil type of the pixel. A soil type distribution map can be obtained by hardening the fuzzy membership degree map. A large number of case studies have demonstrated that SoLIM is a more accurate than the traditional manual subjective method in soil mapping. 5) Verify accuracy of the proposed method through sampling at 270 field validation points using three sampling strategies: regular sampling, subjective sampling and transect sampling. Results show that the soil map obtained through fuzzy inference provides more detailed information about soil spatial distribution than its corresponding conventional soil map and is about 11% higher in accuracy and significantly higher in number of patches. It is therefore concluded that the proposed method which retrieves soil-environment relationships from a traditional soil map is more accurate than the conventional mapping method in judging and delineating and more convenient for use to update soil maps.

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黄 魏,罗云,汪善勤,陈家赢,韩宗伟,祁大成.基于传统土壤图的土壤—环境关系获取及推理制图研究[J].土壤学报,2016,53(1):72-80. DOI:10.11766/trxb201503260023 HUANG Wei, LUO Yun, WANG Shanqin, CHEN Jiaying, HAN Zongwei, QI Dacheng. Knowledge of Soil-landscape Model Obtain from A Soil Map and Mapping[J]. Acta Pedologica Sinica,2016,53(1):72-80.

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历史
  • 收稿日期:2015-01-12
  • 最后修改日期:2015-09-01
  • 录用日期:2015-09-07
  • 在线发布日期: 2015-11-02
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