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森林不同土壤层全氮空间变异特征
引用本文:张振明,余新晓,王友生,宋思铭,吴海龙.森林不同土壤层全氮空间变异特征[J].生态学报,2011,31(5):1213-1220.
作者姓名:张振明  余新晓  王友生  宋思铭  吴海龙
作者单位:1. 北京林业大学自然保护区学院,北京,100083;北京林业大学水土保持与荒漠化防治教育部重点实验室,北京,100083
2. 北京林业大学水土保持与荒漠化防治教育部重点实验室,北京,100083
基金项目:林业公益性行业科研专项(201104005);国家青年科学基金项目(41001024);教育部博士点基金项目(20100014120011);"十二五"国家科技支撑计划(2011BAD38B05)
摘    要:应用经典统计学和地统计学方法,分析了八达岭地区土壤全氮(TN)在不同层次(A,B,C)的空间变异特征。同时结合地理信息系统(GIS),分析了该地区植被类型和土壤TN之间的关系。应用分类回归树模型(classification and regression trees,CART)分析了土壤TN和海拔与植被分布格局的关系。得到以下结论:(1)TN在A、B、C层平均值分别为2.94、1.30,0.63 g/kg,变异系数(CV)分别为33%、33%、45%,都表现为中等变异。(2)TN在不同土层的变异函数理论模型符合球状模型,TN在A层为弱空间相关,在B、C层为中等空间相关。(3)泛可里格插值表明,TN在不同层次都表现出了明显的空间分布趋势。不同植被类型所对应土壤全氮的空间分布则各不相同。(4)CART研究结果表明,该区植被类型分布格局可大致划分为四大部分。可初步确定海拔725m,TN含量4.23 g/kg和5.69 g/kg为影响该区植被分布格局的重要参考值。

关 键 词:地统计学  土壤全氮  空间变异  分类回归树模型
收稿时间:2010/5/13 0:00:00
修稿时间:2011/1/21 0:00:00

Spatial variability of forest soil total nitrogen of different soil layers
ZHANG Zhenming,YU Xinxiao,WANG Yousheng,SONG Siming and WU Hailong.Spatial variability of forest soil total nitrogen of different soil layers[J].Acta Ecologica Sinica,2011,31(5):1213-1220.
Authors:ZHANG Zhenming  YU Xinxiao  WANG Yousheng  SONG Siming and WU Hailong
Institution:College of Nature Conservation, Beijing Forestry University, 100083, China; Key Laboratory of Soil and Water Conservation and Desertification Combating of the Ministry of Education, Beijing Forestry University, Beijing 100083, China;Key Laboratory of Soil and Water Conservation and Desertification Combating of the Ministry of Education, Beijing Forestry University, Beijing 100083, China;Key Laboratory of Soil and Water Conservation and Desertification Combating of the Ministry of Education, Beijing Forestry University, Beijing 100083, China;Key Laboratory of Soil and Water Conservation and Desertification Combating of the Ministry of Education, Beijing Forestry University, Beijing 100083, China;Key Laboratory of Soil and Water Conservation and Desertification Combating of the Ministry of Education, Beijing Forestry University, Beijing 100083, China
Abstract:Spatial variability causes uneven soil resource distribution and controls species distribution and recruitment in terrestrial ecosystems. Quantification of the spatial variability is essential for understanding the relationship between soil properties and environmental factors and to estimate attributes at unsampled locations. Spatial variability of soil nutrient can provide guidance for the proper management of forest ecosystem. According to forest resource inventory subplot maps of China, 121 subplots were established. Soil samples for the experiment were collected from soil profiles in the central portion of each plot. Three replicate samples of each horizon at every plot were mixed with roots and stones removed by hand. Soil total nitrogen (TN) was measured using sulfate-perchlorate acid heating digestion-azotometer distillation titration method. All statistical analysis was performed using the open source software R (version 2.7.0). TN spatial distribution predicted by kriging was exported to ArcGIS 9.2 to produce maps. Spatial variability of soil total nitrogen under different layers was examined using classical statistics and geostatistics in Badaling. At the same time, geostatistics combined with geographic information system (GIS) were applied to analyze the relationship of vegetation type and soil total nitrogen. Relationship between elevation, TN of soil and vegetation distribution pattern was evaluated by classification and regression trees (CART). The results showed that:(1) The means of TN were 2.94 g/kg,1.30 g/kg,0.63 g/kg in three different layers, respectively. Coefficient of Variation (CV) of TN were 33%, 33%, 45%, respectively. So they showed medium variability. (2) Optimal theoretical models of TN were spherical model in different layers. Spatial correlation distances of TN-A,TN-B and TN-C were 804m, 1038m and 1400m, respectively. The nugget/sill C0/(C0+C) ratio for TN-B and TN-C were 55% and 63%, respectively, suggesting moderate spatial correlation. TN-A has a weak spatial correlation with the C0/(C0+C) (78%). The spatial variability of TN-B and TN-C may be affected by intrinsic and extrinsic factors. However, the spatial variability of TN-A may be affected by extrinsic factors. (3) University kriging indicated that spatial distribution TN showed district geographic trends in different layers. The overlay analysis of spatial patterns and vegetation type were used to understand different soil nutrients distributions with different vegetation types. TN had a high distribution in the southwest and northeast of research area and the rest of high content were strips and patches. (4) The CART indicated that the vegetation type distribution pattern of this district can be divided as four main parts, it can be primarily determined that the elevation of 725m, the TN of 4.23 g/kg and 5.69 g/kg were the importance value. As reforestation is a key component of China's long term environmental and conservation strategy, spatial distribution in soil nitrogen contents of different layers can equip the micromanagement decision-making process in determining the proper size of a management unit. The correlation between soil nitrogen and vegetation type is an important factor in selecting tree species for reforestation. Our study provides a general guideline for the selection process.
Keywords:geostatistics  soil total nitrogen  spatial variability  classification and regression trees(CART)
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