通过支持向量机结合深度学习算法程序预测埃塞俄比亚下库尔夫流域的农作物产量

IF 1.7 Q2 ENGINEERING, MULTIDISCIPLINARY
A. Ayalew, T. K. Lohani
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引用次数: 0

摘要

合理合理地利用农业用水,结合预测技术,可提高作物产量。埃塞俄比亚的经济依赖并完全依赖以农业为基础的活动。不同的土壤成分(氮、磷、钾)、作物轮作、土壤湿度和气候条件在种植中起着重要的作用。本研究的主要目的是开展一种机器学习方法,这种方法可以动态地实践,以低成本实现高效的农业生产。将支持向量机(SVM)作为机器学习过程,将长短期记忆(LSTM)和递归神经网络(RNN)作为深度学习过程。该研究包括一个与机器学习程序(人工神经网络、随机森林和决策树)相结合的模型,以了解有效和适当的作物类型。通过将深度学习方法与现有实践相结合,针对不同作物条件对规划模型进行改进。通过他们的支出,获得了关于所需土壤成分数量的纯粹数据和相关证据。与目前的模型相比,它提供了良好的精度,可以检查指定文件并协助当地农学家预测不同类型的作物并获得收益。在RNN、LSTM和SVM算法中,准确率被确定为96%,在不同的特征和作物类型下,与其他机器学习过程相比,准确率相对较好。以预测准确度的百分比来评估这些技术。所产生的结果对农民、专家、研究人员和当地农民至关重要,有助于最大限度地提高作物生产力,并有助于加强农业和与气候变化有关的决策,特别是在中低收入国家。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Crop Yield by Support Vector Machine Coupled with Deep Learning Algorithm Procedures in Lower Kulfo Watershed of Ethiopia
Sensible and judicious utilization of water for agriculture in conjunction with prediction techniques increases the crop yield. The Ethiopian economy relies on and is exclusively dependent on agricultural-based activities. Different soil compositions (nitrogen, phosphorous, and potassium), crop alternation, soil dampness, and climate conditions play an imperative contribution in cultivation. The primary purpose of this study was to conduct a machine learning approach which can be practiced dynamically for efficient farming at a low cost. The support vector machine (SVM) was applied as a machine learning procedure, whereas long short-term memory (LSTM) and the recurrent neural network (RNN) were considered as deep learning procedures. The research comprised a model that is combined with machine learning procedures (ANN, random forest, and decision tree) to know efficient and appropriate crop types. The planned model is improved through conducting deep learning methods incorporated to the existing practice for different crop condition. Pure data and related evidence are attained concerning the quantities of soil constituents desired through their expenditures distinctly. It delivers well precision as compared to the current model examining the specified documents and assisting the local agronomists in forecasting different types of crop and gain benefits. In RNN, LSTM, and SVM algorithms, the accuracy is determined as 96% which is comparatively preferable as compared to other machine learning procedures under different feature and crop types. The techniques are evaluated in terms of percentage in prediction accuracy. The results generated are important for agrarians, experts, researchers, and local farmers to maximize the crop productivity and help to enhance agriculture and climate change-related decisions, especially in low-to-middle-income countries.
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来源期刊
Journal of Engineering
Journal of Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
4.20
自引率
0.00%
发文量
68
期刊介绍: Journal of Engineering is a peer-reviewed, Open Access journal that publishes original research articles as well as review articles in several areas of engineering. The subject areas covered by the journal are: - Chemical Engineering - Civil Engineering - Computer Engineering - Electrical Engineering - Industrial Engineering - Mechanical Engineering
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