利用机器学习技术从土地、土壤和气候数据预测孟加拉国的主要种植模式

Sabbir Ahmed, S. Yesmin, Lata Rani Saha, A. M. Sadat, Mozammel H. A. Khan
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引用次数: 1

摘要

一年中周期性地在土地上种植作物是一种种植模式。本研究考虑了仅通过使用机器学习技术的土地、土壤和气候数据等与耕作相关的因素来预测孟加拉国的主要种植模式。我们考虑了孟加拉国的52个Upazilas进行数据收集,这些数据摘自孟加拉国达卡MoA SRDI出版的《土地和土壤资源使用指南(孟加拉国语)》丛书。预测器的特征是分类数据和数值数据的混合。另一方面,预测类的数量非常大。因此,我们使用机器学习模型引入了一种有效的裁剪模式预测方法,该方法可以处理具有大量类别的混合数据点。机器学习算法,如k近邻(KNN),决策树(DT),随机森林分类器(RFC), XGboost (XGB)和支持向量机(SVM)已用于种植模式预测。我们的模型可以准确地预测种植模式。对于我们使用过的大多数机器学习模型,我们已经使用我们的数据集实现了95%以上的准确率。此外,我们已经创建了一个后端和前端系统,可以使用这些训练有素的机器学习模型轻松预测裁剪模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Major Cropping Pattern Prediction in Bangladesh from Land, Soil and Climate Data Using Machine Learning Techniques
The cultivation of crops on land periodically throughout the year is a cropping pattern. This research considered the prediction of major cropping patterns in Bangladesh through only the cultivation-related factors like land, soil, and climate data using Machine Learning techniques. We have considered 52 Upazilas in Bangladesh for data collection which was extracted from the book series Land and Soil Resources Usage Guidelines (in Bangla) published by SRDI, MoA, Dhaka, Bangladesh. The predictor features are a mixture of categorical and numerical data. On the other hand, the number of predicted classes is very large. So, we have used a machine learning model to introduce an effective cropping pattern prediction method that can handle mixed data points with a large number of classes. Machine learning algorithms such as K-nearest neighbors (KNN), Decision Tree (DT), Random Forest Classifier (RFC), XGboost (XGB), and Support Vector Machine (SVM) have been used for cropping pattern prediction. Our models can accurately predict cropping patterns. We have achieved more than 95% accuracy using our dataset for most of the machine learning models that we have used. Also, we have created a back-end and front-end system to use those trained machine learning models easily to predict cropping patterns.
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