AN APPROACH FOR PREDICTION OF CROP YIELD USING MACHINE LEARNING AND BIG DATA TECHNIQUES

K. Palanivel, Chellammal Surianarayanan
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引用次数: 57

Abstract

Agriculture is the primary source of livelihood which forms the backbone of our country. Current challenges of water shortages, uncontrolled cost due to demand-supply, and weather uncertainty necessitate farmers to be equipped with smart farming. In particular, low yield of crops due to uncertain climatic changes, poor irrigation facilities, reduction in soil fertility and traditional farming techniques need to be addressed. Machine learning is one such technique employed to predict crop yield in agriculture. Various machine learning techniques such as prediction, classification, regression and clustering are utilized to forecast crop yield. Artificial neural networks, support vector machines, linear and logistic regression, decision trees, Naive Bayes are some of the algorithms used to implement prediction. However, the selection of the appropriate algorithm from the pool of available algorithms imposes challenge to the researcher with respect to the chosen crop. In this paper, an investigation has been performed on how various machine learning algorithms are useful in prediction of crop yield. An approach has been proposed for prediction of crop yield using machine learning techniques in big data computing paradigm.
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利用机器学习和大数据技术预测作物产量的方法
农业是民生的第一来源,是我国的脊梁。当前水资源短缺、供需成本失控以及天气不确定性等挑战要求农民配备智能农业。特别是,由于不确定的气候变化、不良的灌溉设施、土壤肥力下降和传统农业技术导致的作物低产需要得到解决。机器学习就是一种用于预测农业作物产量的技术。预测、分类、回归和聚类等各种机器学习技术被用于预测作物产量。人工神经网络,支持向量机,线性和逻辑回归,决策树,朴素贝叶斯是一些用于实现预测的算法。然而,从可用的算法池中选择合适的算法给研究人员带来了选择作物的挑战。在本文中,研究了各种机器学习算法在预测作物产量方面的作用。提出了一种利用大数据计算范式中的机器学习技术预测作物产量的方法。
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
90
期刊介绍: IJCAET is a journal of new knowledge, reporting research and applications which highlight the opportunities and limitations of computer aided engineering and technology in today''s lifecycle-oriented, knowledge-based era of production. Contributions that deal with both academic research and industrial practices are included. IJCAET is designed to be a multi-disciplinary, fully refereed and international journal.
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