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首页> 外文期刊>Journal of Big Data >Analysis of agriculture data using data mining techniques: application of big data
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Analysis of agriculture data using data mining techniques: application of big data

机译:使用数据挖掘技术分析农业数据:大数据的应用

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In agriculture sector where farmers and agribusinesses have to make innumerable decisions every day and intricate complexities involves the various factors influencing them. An essential issue for agricultural planning intention is the accurate yield estimation for the numerous crops involved in the planning. Data mining techniques are necessary approach for accomplishing practical and effective solutions for this problem. Agriculture has been an obvious target for big data. Environmental conditions, variability in soil, input levels, combinations and commodity prices have made it all the more relevant for farmers to use information and get help to make critical farming decisions. This paper focuses on the analysis of the agriculture data and finding optimal parameters to maximize the crop production using data mining techniques like PAM, CLARA, DBSCAN and Multiple Linear Regression. Mining the large amount of existing crop, soil and climatic data, and analysing new, non-experimental data optimizes the production and makes agriculture more resilient to climatic change.
机译:在农业部门,农民和农业综合企业每天必须做出无数的决定,而复杂的复杂性牵涉到影响他们的各种因素。农业计划意图的一个重要问题是计划中涉及的多种作物的准确产量估算。数据挖掘技术是完成此问题的实用有效解决方案的必要方法。农业已经成为大数据的明显目标。环境条件,土壤的可变性,投入水平,组合和商品价格使农民利用信息和获得帮助做出关键的农业决策变得更加重要。本文着重分析农业数据,并使用数据挖掘技术(例如PAM,CLARA,DBSCAN和多元线性回归)寻找最佳参数,以最大限度地提高作物产量。挖掘大量现有的农作物,土壤和气候数据,并分析新的非实验数据可以优化生产,并使农业对气候变化的适应力更强。

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