基于蜂箱聚类方法的农业数据集作物产量预测模型

M. G. Ananthara, T. Arunkumar, R. Hemavathy
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引用次数: 27

摘要

世界各地的农业研究人员坚持需要一种有效的机制来预测和改善作物生长。农业社区对综合作物生长控制和准确预测产量管理方法的需求高度敏感。由于多维变量指标和预测建模方法的不可用性,导致作物产量预测的复杂性很高,从而导致作物产量损失。本文提出了一种基于动态更新的作物历史数据集的作物产量预测模型(CRY),该模型采用自适应聚类方法来预测作物产量,以提高精准农业的决策水平。CRY采用蜂箱建模方法,根据作物生长模式、产量对作物进行分析分类。CRY分类数据集使用Clementine在现有作物领域知识上进行了测试。结果和性能表明了该方法与其他聚类方法的比较。
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CRY — An improved crop yield prediction model using bee hive clustering approach for agricultural data sets
Agricultural researchers over the world insist on the need for an efficient mechanism to predict and improve the crop growth. The need for an integrated crop growth control with accurate predictive yield management methodology is highly felt among farming community. The complexity of predicting the crop yield is highly due to multi dimensional variable metrics and unavailability of predictive modeling approach, which leads to loss in crop yield. This research paper suggests a crop yield prediction model (CRY) which works on an adaptive cluster approach over dynamically updated historical crop data set to predict the crop yield and improve the decision making in precision agriculture. CRY uses bee hive modeling approach to analyze and classify the crop based on crop growth pattern, yield. CRY classified dataset had been tested using Clementine over existing crop domain knowledge. The results and performance shows comparison of CRY over with other cluster approaches.
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