首页> 外文期刊>Informatica: An International Journal of Computing and Informatics >A Novel Borda Count Based Feature Ranking and Feature Fusion Strategy to Attain Effective Climatic Features for Rice Yield Prediction
【24h】

A Novel Borda Count Based Feature Ranking and Feature Fusion Strategy to Attain Effective Climatic Features for Rice Yield Prediction

机译:基于BORDA计数的特征排名和特征融合策略,以获得水稻产量预测的有效气候特征

获取原文
           

摘要

An attempt has been made in the agricultural field to predict the effect of climatic variability based on rice crop production and climatic features of three coastal regions of Odisha, a state of India. The novelty of this work is Borda Count based fusion strategy on the ranked features obtained from various ranking methodologies. Proposed prediction model works in three phases; in the first phase, three feature ranking approaches such as; Random Forest, Support Vector Regression-Recursive Feature Elimination (SVRRFE) and F-Test are applied individually on the two datasets of three coastal areas and features are ranked as per the their algorithm. In the second phase; Borda Count as a fusion method has been implemented on those ranked features from the above phase to obtain top five best features. The multiquadratic activation function based Extreme Learning Machine (ELM) has been used to predict the rice crop yield using those ranked features obtained from fusion based raking strategy and the number of varying features are obtained which gives prediction accuracy above 99% in the third phase of experimentation. Finally, the statistical paired T-test has been used to evaluate and validate the significance of proposed fusion based ranking prediction model. This prediction model not only predicts the rice yield per hector but also able to obtain the significant or most affecting features during Rabi and Kharif seasons. From the observations made during experimentation, it has been found that; relative humidity is playing a vital role along with minimum and maximum temperature for rice crop yield during Rabi and Kharif seasons.
机译:在农业领域取得了一项试图,以预测基于稻田三个沿海地区的水稻作物生产和气候特征的气候变异性的影响。这项工作的新颖性是基于BORDA计数的融合策略,用于从各种排名方法获得的排名特征。提出的预测模型三个阶段工作;在第一阶段,三种特征排名方法如;随机森林,支持向量回归功能消除(SVRRFE)和F-Test单独应用于三个沿海地区的两个数据集,并根据其算法排名。在第二阶段; Borda计数作为融合方法已经在上述阶段的排名特征上实施,以获得最佳功能。基于多通激活功能的极端学习机(ELM)已被用于使用从基于融合的耙策略获得的那些排名的特征来预测稻米作物产量,并且获得不同特征的数量,其在第三阶段的预测准确度高于99%以上实验。最后,统计配对T检验已被用于评估和验证所提出的基于融合的排名预测模型的重要性。该预测模型不仅预测每次呼吸的水稻产量,而且能够在Rabi和Kharif Seasons期间获得显着或最影响的特征。从实验期间制作的观察结果,已经发现;相对湿度在Rabi和Kharif Seasons期间,在稻米作物产量的最小和最高温度下发挥重要作用。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号