基于Matlab的模糊c均值聚类方法在北喀西县水稻株系势图中的应用

Winarni Suwarso
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引用次数: 1

摘要

摘要根据BPS-Statistics of Bekasi Regency在粮食作物领域的水稻作物数据,Bekasi Regency有几个不同的街道,水稻产量不同。因此,有必要对水稻生产者潜力最大的街道进行分组。因此,需要一种便于水稻产区划分的方法。采用模糊c均值聚类方法,根据水稻收获面积(公顷)和产量(吨)划分水稻生产小区。本研究采用模糊c均值算法对潜在小区进行聚类,目的是为了方便对水稻产量最大和最低的小区进行分组。结果是一个插图,显示了基于水田种植结果的街道分组。关键词:聚类,数据挖掘,模糊c均值算法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Fuzzy C-Means Clustering Method Using Matlab To Map the Potential of Rice Plant In Bekasi Regency
Abstract Based on the data of rice crops from BPS-Statistics of Bekasi Regency in the field of Food Crops, there are several sub-districts in Bekasi Regency with varying rice yields. Therefore, it is necessary to group the sub-districts with the highest potential of rice producers. Therefore, a method is needed to facilitate the classification of paddy producing districts. By Fuzzy C-Means clustering method, the division of rice-producing sub-districts can be done based on the area of rice harvest (Ha) and rice production (ton). In this research, clustering of potential sub-districts using the Fuzzy C-Means algorithm is aimed at facilitating the grouping of a sub-district with the largest and low rice yields. The result is an illustration that shows the subdistrict grouping based on the results of paddy farming. Keywords: Clustering, Data Mining, Fuzzy C-Means Algorithm
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