中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
环渤海沿海区域耕地格局及影响因子分析

文献类型:期刊论文

作者吴莉1,2; 侯西勇1; 徐新良3
刊名农业工程学报
出版日期2014
卷号30期号:9页码:1-10
关键词土地利用 回归分析 农村地区 环渤海沿海区域 耕地 线性回归 空间自回归 地理加权回归
ISSN号1002-6819
其他题名Analysis of spatial pattern of farmland and its impacting factors in coastal zone of Circum Bohai
产权排序中国科学院烟台海岸带研究所; 中国科学院大学;中国科学院地理科学与资源研究所
通讯作者侯西勇 Email:xyhou@yic.ac.cn
中文摘要为分析环渤海省市沿海区域耕地格局与影响因子的关系,以耕地在5 km×5 km网格单元所占比例为因变量,选用地形、距离、气候及人口等10个影响因子为自变量,分别建立普通最小二乘法线性回归模型、空间滞后模型、空间误差模型、地理加权回归模型。结果表明:耕地格局及各影响因子均呈现较强的空间正相关,并随距离增大而减少;针对该研究,空间滞后模型、空间误差模型和地理加权回归模型模拟效果均优于普通最小二乘法线性回归模型,空间误差模型优于空间滞后模型;从全局上来讲,高程、坡度、到最近公路距离与耕地格局呈负相关影响,距最近海岸线、铁路、居民点距离、多年平均气温和多年平均降水与耕地格局呈正相关。从局部上来讲,除了多年平均降水对各网格单元内耕地面积均呈正向影响外,其余影响因子随网格单元变化正负向影响均存在。多年平均气温和多年平均降水是主要的、最敏感的正向影响因子,高程、坡度和距最近水系距离为主要的、最敏感的负向影响因子。
英文摘要In this paper, coastal zone of Circum Bohai Sea Region which covers an area of approximately 170, 000 km2 was selected as the study area. The spatial distribution characteristics of farmland of this study area were analyzed and the relationship between farmland distribution and natural, social or economic impacting factors was explored. Based on Landsat TM images acquired in 2009/2010, farmland distribution map was created through visual interpretation with auxiliary data in ArcGIS 9.3. Then farmland distribution map was overlaid with a lattice map to statistic area of farmland in each 5 km * 5 km lattice. Impacting factors of farmland consisted of elevation, slope, distance to nearest coastline, distance to nearest railway, distance to nearest road, distance to nearest residential area, distance to nearest river, average yearly precipitation, average yearly temperature and population density, which were compiled into raster format data with a spatial resolution of 5 km * 5 km and normalized between 0 and 1 in ArcGIS 9.3. As conventional statistical methods assumed that the data to be analyzed was statistically independent, it was inappropriate to use traditional statistical method to analyze spatial land use data which had a tendency to be dependent. In this study, ordinary least square linear regression model (OLS), spatial error model (SEM), spatial lag model (SLM) and geographically weighted regression model (GWR) were established from global and local perspectives. Several evaluation indexes were selected to assess the performance of those models. The results showed that:1) Farmland was the main land use type, which occupied 53%of the whole study area. Positive spatial autocorrelation that decreased gradually with distance was detected in both farmland distribution and impacting factors; 2) Spatial autoregressive models and GWR had a better goodness-of-fit than conventional linear regression model. As to spatial autoregressive models, SEM performed better than SLM in this study, as was indicated by higher preudo R2 value and maximum likelihood logarithm (LIK) value, and lower Akaike information criterion (AIC) value, Schwartz criterion (SC) value and residuals for the former model; 3) GWR could be used to explore spatial variation in the relations between cultivated land distribution and different impacts factors, providing more detailed information, while SEM could only explore the relations from a global view;4) The SEM showed a positive correlation between farmland and elevation, slope, distance to the nearest roads, as well as a negative correlation between farmland and distance to nearest shoreline, distance to nearest railroad, distance to nearest settlements, average yearly temperature, average yearly precipitation from a global perspective;and 5)The GWR revealed both positive and negative correlations between farmland and impacting factors (expect for average yearly precipitation). Among the most sensitive factors affecting farmland distribution, average yearly temperature and average yearly precipitation were the main positive factors, while elevation, slope and distance to nearest residential area were the main negative factors.
学科主题农业工程
收录类别EI
语种中文
CSCD记录号CSCD:5126651
源URL[http://ir.yic.ac.cn/handle/133337/8468]  
专题烟台海岸带研究所_海岸带信息集成与综合管理实验室
作者单位1.中国科学院烟台海岸带研究所
2.中国科学院大学
3.中国科学院地理科学与资源研究所
推荐引用方式
GB/T 7714
吴莉,侯西勇,徐新良. 环渤海沿海区域耕地格局及影响因子分析[J]. 农业工程学报,2014,30(9):1-10.
APA 吴莉,侯西勇,&徐新良.(2014).环渤海沿海区域耕地格局及影响因子分析.农业工程学报,30(9),1-10.
MLA 吴莉,et al."环渤海沿海区域耕地格局及影响因子分析".农业工程学报 30.9(2014):1-10.

入库方式: OAI收割

来源:烟台海岸带研究所

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