随机森林算法用于作物推荐

Pradip Mukundrao Paithane
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引用次数: 1

摘要

所提出的方法旨在帮助印度人根据土壤特征以及温度和降雨等外部因素,使用一个名为作物推荐器的智能系统,选择最合适的作物来生产。印度经济受到农业部门的重大影响。无论是公开的还是秘密的,大多数印度人都依靠农业为生。因此,农业对国家的重要性是不可否认的。大多数印度农民认为,在决定在特定季节种植作物时,他们应该相信自己的直觉,或者他们只是采用他们从一开始就采用的方法。他们更乐于坚持传统的农业实践和标准,而不是真正了解当前天气和土壤条件对作物产量的影响。如果农民做了一个错误的决定,他可能会在无意中损失金钱,这将损害他和周围的农业产业。由于农业经营是整个横向体系的基础。使用机器学习算法,可以解决这个问题。确定农作物生产问题的实际可行解决方案的一个关键视角是机器学习(ML)。机器学习(ML)可以使用监督学习从一组预测器中预测目标或结果。利用决策树实现了一个推荐系统。该系统的主要目标是根据农民的土壤和当地的降雨模式,向农民提供关于播种最佳作物的建议。我们使用随机森林机器学习技术来预测作物。作物预测是根据过去的历史数据对作物进行评估,这些数据包括温度、湿度、ph值和降雨量等因素。它为我们提供了在当前田间天气条件下可以种植的最佳作物的大致情况。这些预测可以通过随机森林来实现,这是一种机器学习技术。农作物预测的准确率最高可达90%。随机森林算法的准确率约为99.03%。
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Random forest algorithm use for crop recommendation
The proposed method seeks to assist Indian pleasant in selecting the optimum crop to produce based on the characteristics of the soil as well as external factors like temperature and rainfall by using an intelligent system called Crop Recommender. The Indian economy is significantly impacted by the agricultural sector. Whether publicly or covertly, the bulk of Indians are relying on agriculture for their living. As a result, it is undeniable that agriculture is significant to the country. The majority of Indian farmers believe that they should trust their intuition when deciding on a crop to grow in a particular season or they simply employ the methods they have been doing from the beginning of time. They are more at ease just adhering to conventional agricultural practices and standards than truly appreciating how crop yield is influenced by the present weather and soil conditions. The farmer can unintentionally lose money if he makes one bad decision, which would hurt both him and the surrounding agricultural industry. As the agriculture business is the foundation of the entire lateral system. Using the machine learning algorithm, this problem can be resolved. A crucial perspective for identifying a practical and workable solution to the crop production issue is machine learning (ML). Machine learning (ML) may predict a target or outcome from a set of predictors using supervised learning. A recommendation system is implemented using decision trees. The major goals of this system are to provide farmers with recommendations regarding the best crops to sow based on their soil and local rainfall patterns. We have employed the Random Forest Machine Learning technique to forecast the crop. Crop prediction is assessing the crop based on historical data from the past that includes elements like temperature, humidity, ph, and rainfall. It gives us a broad picture of the best crop that can be raised in light of the current field weather conditions. These predictions can be made by Random Forest, a machine learning technique. The highest level of accuracy, up to 90%, will be possible for crop predictions. The random forest algorithm achieved the accuracy about 99.03%.
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