基于随机森林方法的Hadoop框架作物产量预测分析

Shriya Sahu, M. Chawla, N. Khare
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引用次数: 29

摘要

在信息技术的发展过程中,大数据成为一个热门话题。人类生存的主要来源是农业;它需要在作物数据分析领域做出关键贡献。本文就如何利用大数据方法从精准农业信息中挖掘经验进行了探讨。通过这种方式,以有效的方式收集有价值的数据推动了一个框架,以应对远程收集信息的作物分析中的主要计算挑战。出于农业中海量数据可用性的存储目的,我们打算在工作中使用Hadoop框架来存储海量的农作物数据。这项工作为农民根据其土壤含量更好地预测种植何种作物以提高生产力提供了依据。随机森林算法与Hadoop框架中的MapReduce编程模型相结合。
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An efficient analysis of crop yield prediction using Hadoop framework based on random forest approach
In the growth of Information T echnology, Big data come forth as a blazing topic. The main source of human survival depends on agriculture; where it needs a key contribution in the field of crop data analysis. This paper gives a purpose about how to find experiences from accuracy agriculture information through big data approach. In this way, gathering the valuable data in an effective way drives a framework towards major computational challenges in crop analysis where information is remotely gathered. For the storage purpose of huge data availability in agriculture, we are intending Hadoop framework for our work to store a huge volume of crop data. This work gives a better prediction for the farmers to plant which kind of crops to their farm field based on their soil content to improve the productivity. The random forest algorithm is integrated with the MapReduce programming model in Hadoop framework.
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