基于物联网和机器学习的土壤分析实时作物预测

Kushal B J, N. P, Nikil S Raaju, Kushal Gowda G V, A. P, G. S
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引用次数: 0

摘要

农业领域的研究正在扩大。印度一半以上的人口以农业为生,农业是该国经济增长的主要贡献者。土壤质量正在急剧变化,影响着农作物的产量。机器学习和深度学习算法有效地帮助根据土地的土壤质量预测作物。训练机器学习模型需要温度、湿度、降雨量、土壤湿度和pH值的数据。这项工作使用以下机器学习模型进行:决策树分类器,k -邻居分类器和随机森林分类器模型。随机森林分类器的准确率为93.11%,高于决策树分类器的准确率(90.96%)和K-Neighbors分类器的准确率(87.63%)。除了准确性之外,还要考虑以下性能指标,如精度、F1分数、召回率、平均绝对误差和日志丢失。开发了基于网络的基于土壤条件的农田作物预测软件。利用农场的物联网设备收集土壤质量的实时数据,并将数据保存在云端。这些数据被输入到机器学习模型中,以预测最适合农场种植的作物。由于这是一种实时策略,农民可以更准确地预测作物,从而提高产量。
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Real Time Crop Prediction based on Soil Analysis using Internet of Things and Machine Learning
Research in the realm of the agriculture sector is expanding. More than half of India's population depends on agriculture for livelihood, and it is a major contributor to the country's economic growth. Soil quality is changing drastically, affecting the agricultural crop yield. Machine learning and deep learning algorithms are effectively helping to predict the crop based on the soil quality of the land. Data on temperature, humidity, rainfall, soil moisture, and pH are needed to train the machine-learning models. This work has been carried out using the following machine learning models: Decision Tree classifier, K-Neighbor classifier, and Random Forest classifier models. The accuracy of the Random Forest classifier is 93.11 percent, which is higher than the accuracy of the Decision Tree classifier (90.96 percent) and the accuracy of the K-Neighbors classifier (87.63 percent). Along with accuracy, the following performance metrics, such as precision, F1 score, recall, mean absolute error, and log loss, are taken into account. Web-based software has been developed to forecast the crop prediction of farmland based on soil conditions. The real-time data on the soil quality is gathered using the IoT devices from the farm, and the data is saved in the cloud. The data is fed to the machine learning model to predict the crop that would be most suited for cultivation on the farm. Since this is a real-time strategy, farmers can predict the crop with greater accuracy, resulting in higher yields.
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