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区域间种植业统筹优化分析——以甘肃老贫地区特色种植业为例 被引量:2

Co-ordination and Optimization Analysis of Inter-regional Planting Industry——taking the characteristics of planting industry in old and poverty areas of Gansu Province as an example
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摘要 如何很好地处理种植业结构局部优化与整体优化问题是我国发展现代农业亟待解决而又未能很好解决的主要问题之一.以甘肃老贫地区为例,对其大力发展特色种植业的区域优势、现状及存在的主要问题分析的基础上,从一新视角建立了一个能较好解决种植业结构局部优化与整体优化问题的经济模型,为区域间种植业的统筹优化提供了一种新的研究方法. How to handle the partial and overall optimization problem of planting industry structure is one of the main problems which should be urgently solved but have not been well solved in the development of modem agriculture in our country. This paper, taking the old and poverty areas of Gansu Province as an example, based on the analysis of regional advantages, present situation and the main existing problems of vigoruously developing the characteristics of planting industry, establishes a mathematical model to find a good solution to partial and overall optimization prolem of the planting industry structure from a new perspective and provides a new research method for regional co-ordination and optimization.
出处 《甘肃高师学报》 2010年第2期34-38,共5页 Journal of Gansu Normal Colleges
关键词 区域间 种植业 统筹优化分析 甘肃老贫地区 特色种植业 inter-regional planting industry co-ordiantion and optimization analysis Gansu old and poverty areas characteristics of planting industry
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