基于土壤湿度的机器学习作物产量预测

S. G, S. Paudel, Riyaz Nakarmi, Prashant Giri, Shanta Karki
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引用次数: 0

摘要

随着经济的日益高速增长,农业规划在我们的日常生活中发挥着重要的作用。随着现代农业的发展,土壤养分、作物预测、耕作制度、作物监测等重要问题越来越多。作物预测和监测是保证作物优质生产的重要因素,农民可以根据土壤水分进行作物产量预测。作物产量预测包括温度、湿度、降雨等因素的预测,而基于土壤湿度的作物产量则包括利用各种传感器的NPK(氮、磷、钾)和pH值等少数指标。机器学习(ML)是一个有用的决策模型,用于估计作物产量,也用于决定种植什么作物以及在作物生长季节做什么。为了帮助农业产量预测研究,已经使用了许多分析技术。在这项研究中,农民可以预测或决定土壤湿度值的类型;农民可以选择他们想要播种的作物类型。本文提出决策树监督机器学习算法,改进基于土壤湿度参数的作物产量预测结果,以达到更好的错误率和经济增长精度。它还包括文献调查中讨论的一些机器学习算法,进一步作者在方法论上强调了所提出的系统,并比较了结果的分析,以给予它一个平衡的观点。并提出了未来的研究范围,以进一步完善。对于那些热衷于学习基于土壤湿度的ML算法的作物产量预期的人来说,这篇论文是足够的。
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Prediction of Crop Yield Based-on Soil Moisture using Machine Learning Algorithms
Agriculture planning is playing an important role as the economic growth is very high day by day in our daily life. There is lot of research study going on as there are few important issues like soil nutrients, crop prediction, farming system, crop monitoring in agriculture with modern farming system. Crop prediction and crop monitoring is main factor to produce good quality of crops for farmers to predict crop yield based on soil moisture. Prediction of crop yield includes forecasting factors like temperature, humidity, rainfall, etc., and crop yield based on soil moisture includes few measures like NPK (Nitrogen, Phosphorous and potassium) and pH values using various sensors. Machine learning (ML) is a useful decision-making model for estimating crop yields, and also for deciding what crops to plant and what to do during the crop's growing seasons. To aid agricultural yield prediction studies, a number of analytical techniques have been used. In this study Farmers can predict or come to a decision the type of soil moisture values; Farmers can choose the type of crop they want to sow. In this paper, Author proposed decision tree supervised machine learning algorithm to improve the results for the prediction of crop yield based on soil moisture parameters to achieve better error rate and accuracy for economic growth. It also includes the few machine learning algorithms which are discussed in literature survey, further Author highlighted the proposed system in methodology, and compared the analysis in results to give it a balance view. The future scope is also mentioned to improve it for further studies. This paper will be sufficient for those who are keener in learning about the expectation of crop yield based on soil moisture using ML Algorithms.
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