Author:
Hu Xiaonan,Deng Fangyi,Zou Yu,Guo Yan,Fang Yuchao
Abstract
Abstract
The existence and persistence of soybean diseases are not conducive to the effective operation of the global soybean market. Many detection and prediction methods have been used to prevent and detect soybean diseases, but the practicability of these methods has always been a big challenge for researchers due to there are too few variables in the prediction model, which show bad prediction effect of soybean disease in complex environment. In this paper, the popular Apriori algorithm in data mining is used to analyze the common disease data of soybean in complex environment, so as to achieve the goal of early prediction and control of soybean disease. The variables used in this paper are the characteristic factors of 35 kinds of Soybean under 18 common diseases. The experimental results show that the improved Apriori algorithm can complete the better prediction of soybean diseases in complex environment, so as to reduce the impact of diseases on soybean yield, which is of great significance for economic development, agricultural production and other fields.
Reference10 articles.
1. Major Issues and Missions in Agricultural Big Data[J];Cheng-Kun,2014
2. Mining association rules between sets of items in large databases[C];Agrawal;Acm sigmod record. ACM,1993
3. Aggregate function based enhanced apriori algorithm for mining association rules[J];Awadalla;International Journal of Computer Science Issues (IJCSI),2012
4. Fifteen years of research examining cultivation of continuous soybean in northeast China: a review[J];Liu;Field Crops Research,2002
5. Elevated atmospheric carbon dioxide and ozone alter soybean diseases at SoyFACE[J];Eastburn;Global Change Biology,2010
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