花生生产中的特征选择和有效产量预测模型

Q3 Agricultural and Biological Sciences
Kuruguntu Mohan Krithika, Nachimuthu Maheswari, M. Sivagami
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引用次数: 2

摘要

泰米尔纳德邦的花生产量在印度名列前茅。泰米尔纳德邦作物的产量预测将对提高生产效率非常有用。本文旨在识别一个有效的机器学习模型来预测花生作物产量,并分析测试模型的性能。该研究使用灌溉、降雨、面积和生产数据作为泰米尔纳德邦地区花生作物产量的因素。本文确定了训练模型的最佳特征集,并研究了各种预测模型,以评估收集到的数据的性能。训练和测试的数据使用各种性能指标进行评估。研究结果表明,LASSO和ElasticNet提供的结果最优,RMSE最低,RRMSE值分别为491.603和490.931 kg·ha-1、20.68和20.66%。与其他模型相比,该模型的MAE和RMAE值最低,分别为333.154和331.827 kg·ha-1和14.53%、14.51%。通过特征选择和产量预测来确定播种时机和灌溉面积,将提高花生作物的产量。这有助于农民做出实际的决定并获得收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Models for feature selection and efficient crop yield prediction in the groundnut production
Tamil Nadu ranks high in groundnut production in India. The yield prediction of the crop over Tamil Nadu will be highly useful in improving the efficiency of the production. This article aims to identify an efficient machine learning model to predict the groundnut crop yield and analyse the performance of the tested models. The study used the irrigation, rainfall, area and production data as factors for the groundnut crop yield across the districts of Tamil Nadu. This article identified the best set of features for training the models and studied various prediction models to evaluate the performance on the collected data. The trained and tested data were evaluated using various performance measures. The results of the study show that LASSO and ElasticNet provide the optimal results with the lowest RMSE and RRMSE values of 491.603 and 490.931 kg·ha–1, 20.68 and 20.66%, respectively. The models showed the lowest MAE and RMAE values as well (333.154 and 331.827 kg·ha–1 and 14.53%, 14.51%, respectively) when compared to other models. The identification of the right time to sow and area to irrigate through feature selection and the prediction of the yield will improve the yield of the groundnut crops. This helps farmers to make practical decisions and reap the benefits.
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来源期刊
Research in Agricultural Engineering
Research in Agricultural Engineering Engineering, agriculture-
CiteScore
1.40
自引率
0.00%
发文量
21
审稿时长
24 weeks
期刊介绍: Original scientific papers, short communications, information, and studies covering all areas of agricultural engineering, agricultural technology, processing of agricultural products, countryside buildings and related problems from ecology, energetics, economy, ergonomy and applied physics and chemistry. Papers are published in English.
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