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A fuzzy clustering approach to delineate agroecozones

机译:划分农业生态区的模糊聚类方法

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Agroecozones are geographic areas that share similar biophysical characteristics for crop production, such as soil, landscape, and climate, which define the potentials for agricultural productivity. Delineation and characterization of agroecozones would greatly enhance agricultural decision-making and management, as well as the extrapolation of experiment station research and field trials to forms and landscapes of similar agronomic behavior. Currently, agroecozones are often represented with static and rigid boundaries derived by using data obtained by averaging observations over a period of time. The boundaries of these regions, however, are fuzzy and reflect change over time and space. Furthermore, the measurements used as the basis of the-delineation are themselves uncertain. Agroecozones may be obtained by treating the input data as well as the resultant regions as fuzzy. Clustering is one of the most common approaches to derive agroccozones delineation. In this paper, we explore the suitability of some fuzzy clustering approaches for this problem. Experimental results show that fuzzy algorithms generate more accurate delineations as measured by their closeness to the Major Land Resources Areas (MLRA) map. However, they both require greater computational resources. Some additional advantages of using a fuzzy approach are also illustrated. This approach should be viewed as an additional tool available for modeling and analysis of important processes in spatial environmental decision support systems. (C) 2002 Elsevier Science B.V. All rights reserved. [References: 37]
机译:农业生态区是具有相似的作物生产生物物理特性的地理区域,例如土壤,景观和气候,这些特性定义了农业生产力的潜力。划定和表征农业用生态区将极大地增强农业的决策和管理,以及将试验站研究和田间试验外推到类似农业行为的形态和景观。当前,通过使用对一段时间内的观测值求平均得到的数据,常常用静态边界和刚性边界来代表农杆菌区。但是,这些区域的边界是模糊的,反映了随时间和空间的变化。此外,用作划界基础的测量本身是不确定的。可以通过将输入数据以及所得区域视为模糊来获得土壤生态区。聚类是得出农杆菌区划的最常见方法之一。在本文中,我们探索了一些模糊聚类方法对这个问题的适用性。实验结果表明,根据模糊算法与主要土地资源区域(MLRA)地图的接近程度,可以生成更准确的轮廓。但是,它们都需要更多的计算资源。还说明了使用模糊方法的一些其他优点。该方法应被视为可用于对空间环境决策支持系统中的重要过程进行建模和分析的附加工具。 (C)2002 Elsevier Science B.V.保留所有权利。 [参考:37]

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