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Analysis and Evaluation of Soil Fertility Status Based on Weighted K-means Clustering Algorithm

机译:基于加权K均值聚类算法的土壤肥力状况分析与评价

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Generally K-means clustering algorithm can not distinguish the imbalance between attributes, so it can only be an independent investigation situation of each attribute but can not be comprehensive analysis of the soil fertility status. To solve this problem, this paper proposes a weighted K-means clustering algorithm to evaluate the soil fertility in Nong'an County, Jilin. The algorithm uses AHP to get the weight of soil nutrient attributes. Then combined with K-means clustering algorithm. Finally through the operational efficiency and accuracy to determine the optimal classification, that can improve the clustering algorithm of intelligent. The algorithm and the traditional K-means clustering algorithm are used in the comparison, tests showed that the weighted K-means clustering algorithm has a better accuracy, operational efficiency, significantly higher than the unweighted clustering algorithm; Comprehensive evaluation of the changes in soil nutrients after precision fertilization that used algorithm. The soil fertility status has a significantly improvement after years of continuous precision fertilizing. The results show that the improved clustering algorithm is a good method to comprehensive evaluation of soil fertility.
机译:通常,K均值聚类算法无法区分属性之间的不平衡,因此只能作为每个属性的独立调查情况,而不能对土壤肥力状况进行综合分析。为了解决这个问题,本文提出了一种加权K-均值聚类算法来评估吉林省农安县的土壤肥力。该算法使用层次分析法获得土壤养分属性的权重。然后结合K均值聚类算法。最后通过操作效率和准确性确定最优分类,从而可以改进智能聚类算法。将该算法与传统的K均值聚类算法进行比较,测试结果表明,加权的K均值聚类算法具有更好的精度,运算效率,明显高于未加权的聚类算法。使用该算法的精确施肥后土壤养分变化的综合评估。经过多年的连续精确施肥,土壤肥力状况有了显着改善。结果表明,改进的聚类算法是综合评价土壤肥力的良好方法。

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