利用数据挖掘和软计算技术进行作物质量预测的新框架

R. K. Maurya, Himani Jain, T. Sharma, Surbhi Sharma, M. Dublish
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引用次数: 0

摘要

数据挖掘(DM)和软计算(SC)是一种重要的计算方法,为灵活的农业数据处理系统解决农民问题提供了良好的能力。最近,软计算已经成为解决和分析复杂现实问题的一种强大技术。本文提出了一种在农业优质作物预测领域中,利用多模态与多模态结合进行智能作物预测的方法。提出了一个5级框架:1)从不同存储库中收集数据,2)数据预处理,3)选择合适的分类器,4)预测和估计,5)绘制AUC和ROC曲线。本文提出的方法侧重于根据土壤的化学性质分析农业产量、作物所需土壤和所需降雨。农业数据分析和编目是软计算、机器学习(ML)等新型计算工具的最佳应用之一,由于农业数据的大量发展,机器学习(ML)方法成为一个热门领域。完成应用研究的dm&sc方法将为这类问题提供有效的答案。机器学习是一种工作工具,可以研究多个学习者,并结合他们的评估来实现更高的预测准确性。在这项调查中,我们总结了机器学习方法,这些方法可以作为农民和农业科学家及时预测作物产量的重要工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Framework for Quality Crop Predictions Using Data Mining and Soft Computing Techniques
Data mining (DM) and Soft Computing (SC) are a vital computational approach that offers good competence of flexible agricultural data processing systems to solve farmer’s problems. Recently, soft computing has emerged as a powerful technique for solving and analyzing complex real-world problems. This article suggests an approach of smart crop predictions is presented through DM &SC in the field of agricultural quality crop prediction. A five-level framework is proposed namely 1) Collection of data from different repositories, 2) Pre-processing of data, 3) Appropriate Classifier Selection, 4) Prediction and Estimation 5) Draw AUC & ROC curve. Method proposed here focuses on analyzing agricultural yield, soil for crop, rainfall required based on chemical property of soil. Agricultural data analysis and cataloging is one of the best applications of new computing tools such as soft Computing, Machine Learning (ML) approach, became a burning area for the reason that of the massive development of farming data. DM& SC approaches for accomplishing applied research will give effective answers for this type of problem. ML is a working tool to study multiple learners and combine their assessments for accomplishing greater forecasting accurateness. In this investigation, we had recapitulated ML methods which can be applied as an essential tool by the farmer and agriculture scientist for timely prediction of crop production.
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