基于机器学习的农作物病虫害检测

Balasubramaniam S, Sandra Grace Nelson, Arishma M, Anjali S Rajan, Satheesh Kumar K
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摘要

导言:大多数印度人以农业劳动为主要生活来源,因此农业是国家经济的重要组成部分。由于全球人口膨胀,预计到 2050 年将会发生灾害和农田流失,这引发了人们对 2050 年及以后粮食安全的担忧。物联网 (IoT)、大数据和分析技术都是智能农业技术的典范,可以帮助农民提高经营水平并做出更好的决策。目标:本文以辣椒作物为例,开发了基于机器学习的系统,用于解决作物病虫害预测问题。方法:通过使用准确率、平均平方误差(MSE)、平均绝对误差(MAE)和均方根误差(RMSE)等性能指标来评估所建议系统的性能。结果:实验结果表明,所提方法的准确率为 0.90,MSE 为 0.37,MAE 为 0.15,RMSE 为 0.61 结论:该模型将使用随机森林分类器、Ada Boost 分类器、K 近邻和逻辑回归组合预测病虫害并通知农民。随机森林是最准确的模型。
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Machine Learning based Disease and Pest detection in Agricultural Crops
INTRODUCTION: Most Indians rely on agricultural work as their primary means of support, making it an essential part of the country’s economy. Disasters and the expected loss of farmland by 2050 as a result of global population expansion raise concerns about food security in that year and beyond. The Internet of Things (IoT), Big Data and Analytics are all examples of smart agricultural technologies that can help the farmers enhance their operation and make better decisions. OBJECTIVES: In this paper, machine learning based system has been developed for solving the problem of crop disease and pest prediction, focussing on the chilli crop as a case study. METHODS: The performance of the suggested system has been assessed by employing performance metrics like accuracy, Mean Squared Error (MSE), Mean Absolute Error (MAE) and Root Mean Squared Error (RMSE). RESULTS: The experimental results reveals that the proposed method obtained accuracy of 0.90, MSE of 0.37, MAE of 0.15, RMSE of 0.61 CONCLUSION: This model will predict pests and diseases and notify farmers using a combination of the Random Forest Classifier, the Ada Boost Classifier, the K Nearest Neighbour, and Logistic Regression. Random Forest is the most accurate model.
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