...
首页> 外文期刊>Applied Geography >Geographic determinants of rural land covers and the agricultural margin in the Central United States
【24h】

Geographic determinants of rural land covers and the agricultural margin in the Central United States

机译:美国中部农村土地覆盖的地理决定因素和农业边际

获取原文
获取原文并翻译 | 示例
           

摘要

Geographic research on the Corn Belt and other regional landscapes of the central U.S. has not to date identified quantitatively the climatic, edaphic, topographic, and economic characteristics that determine rural land cover, and that therefore govern land cover change. Using the USDA/NASS Cropland Data Layer, this study identifies these characteristics by employing Multivariable Fractional Polynomials within a logistic regression framework. It maps the suitability distribution for corn, soybeans, spring and winter wheat, cotton, grassland, and forest, which collectively dominate the central U.S., at a 56 m resolution across 16 central U.S. states. The non-linear logistic regression models are successful in identifying determinants of land cover with relative operating characteristic (ROC) scores that range from 0.769 for soybeans to 0.888 for forest, with a combined corn/soybean model achieving an ROC of 0.871. For corn and soybean models, when prior land cover of a pixel is added, predictability and ROC scores increase substantially (0.07-0.10), indicating a strong temporal dependency in land cover dynamics due to crop rotation. This process also aids in the delineation of fields from pixels. When neighboring land covers are added to the models, ROC scores improve only slightly (0.014-0.019), however, indicating a weak spatial dependency or contagious diffusion mechanism. By including annual crop prices within the logit models, economically marginal cropland that comes into crop production only when prices are high is identified in a spatially-explicit manner. This capacity informs analyses of policies that affect crop prices (e.g., subsidies for crops or biofuels, changes in global supply and demand), by identifying the consequent changes in land use patterns - changes that modify the economic and environmental performance of the landscape. (C) 2014 Elsevier Ltd. All rights reserved.
机译:迄今为止,对美国中部玉米带和其他区域景观的地理研究尚未定量确定决定农村土地覆被并因此决定土地覆被变化的气候,海平面,地形和经济特征。通过使用USDA / NASS农田数据层,本研究通过在逻辑回归框架内采用多元分数多项式来识别这些特征。它绘制了玉米,大豆,春季和冬季小麦,棉花,草原和森林的适宜性分布图,这些分布在美国中部地区占主导地位,在美国中部16个州的分辨率为56 m。非线性逻辑回归模型成功地确定了具有相对运行特征(ROC)分数的大豆覆盖率决定因素,其相对范围从大豆的0.769到森林的0.888,而玉米/大豆组合模型的ROC达到0.871。对于玉米和大豆模型,当添加一个像素的先前土地覆被时,可预测性和ROC得分大幅增加(0.07-0.10),这表明由于作物轮作而对土地覆被动态的强烈时间依赖性。该过程还有助于从像素描绘场。当将相邻的土地覆盖物添加到模型中时,ROC得分仅略有提高(0.014-0.019),但这表明其空间依赖性或传染性扩散机制较弱。通过在logit模型中包括年度作物价格,可以以空间明晰的方式确定仅在价格较高时才进入作物生产的经济边际农田。通过确定随之而来的土地利用方式的变化-改变景观经济和环境绩效的变化,这种能力有助于对影响作物价格的政策进行分析(例如,对作物或生物燃料的补贴,全球供求变化)。 (C)2014 Elsevier Ltd.保留所有权利。

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