Smart System for Crop and Diseases Prediction using Random Forest and Resnet Architecture

T. Kavitha, S. Deepika, K. Nattaraj, P. Shanthini, M. Puranaraja
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引用次数: 4

Abstract

The agriculture plays an important role in the growth of every country's economy. In India, Agriculture is one of the most important occupations and a large amount of food is produced by the farmers. The climate and other environmental changes, uneven rainfall has become a major problem in the agriculture field. Machine learning and Deep learning approaches now-a-days play a major role in giving better solution for this problem. Crop type prediction involves predicting the type of crop before cultivation based on the historically available data such as weather, climatic conditions, soil and previous crop yield. Our work focuses on giving a solution to the farmers to decide on the suitable crop to cultivate. The publicly available crop dataset is used for training and testing our model. Crop Prediction is done using Random Forest (RF) machine learning algorithm. The proposed work also recommends the fertilizer to use for the increasing the crop production by using the soil type and the type of crop. The system predicts the plant diseases using ResNet architecture to avoid the spread of crop diseases.
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基于随机森林和Resnet架构的作物和病害预测智能系统
农业在每个国家的经济发展中都起着重要的作用。在印度,农业是最重要的职业之一,大量的食物是由农民生产的。随着气候等环境的变化,降雨不均匀已成为农业领域的主要问题。如今,机器学习和深度学习方法在为这个问题提供更好的解决方案方面发挥了重要作用。作物类型预测包括根据历史上可用的数据,如天气、气候条件、土壤和以前的作物产量,在种植前预测作物的类型。我们的工作重点是为农民决定适合种植的作物提供解决方案。公开可用的作物数据集用于训练和测试我们的模型。作物预测使用随机森林(RF)机器学习算法完成。提出了利用土壤类型和作物类型来提高作物产量的肥料使用建议。该系统采用ResNet架构对作物病害进行预测,避免作物病害的传播。
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