FarmEasy:一个赋予作物预测和作物营销能力的智能平台

Mohamad Ishak, Md Shahidur Rahaman, T. Mahmud
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引用次数: 3

摘要

农民对经济和国民生产总值的贡献是不可言喻的。尽管在农作物生产和管理方面已经取得了重大的技术进步,但发展中国家的农民仍然遵循传统的耕作方法,这常常使他们蒙受损失。此外,他们不知道农作物的正确市场价值,经销商用价格和价值欺骗他们。另一方面,在价格上涨和危机时期,由于适当的渠道,政府未能从他们那里购买粮食。本文旨在分析种植的原始方法,利用机器学习开发作物预测模型,为作物生产后的合理管理提供模型。我们提出了一个智能系统,只需提供农民的当前位置,从土壤准备到作物产量的总体指导方针,以及从农民到消费者的作物营销系统方法,就可以预测最佳作物。我们使用随机森林回归、支持向量回归和投票回归技术进行作物产量预测,并使用特定区域的气候、天气和土壤的实时数据。另一方面,市场监测系统将有助于作物的合理定价,并为所有与作物营销相关的利益相关者提供透明度,他们可以利用我们的系统买卖他们的产品。
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FarmEasy: An Intelligent Platform to Empower Crops Prediction and Crops Marketing
Farmers' contribution to the economy and national GDP is ineffable. Even though there has been a significant technological advancement in the field of agricultural crops production and management, farmers in developing countries still follow the traditional methods of farming which at many times leads them a loss. Moreover, they don't know the correct market value of their crops, and distributors befool them with the price and value. On the other hand, in times of price hikes and crisis, due to the proper channel government failed to buy crops from them. This paper aims to analyze the primitive approach of cultivation and develop a model for crop prediction using machine learning and provide a model for proper crops management after production. We propose an intelligent system that can predict the best possible crops only by providing the present location of a farmer, the overall guideline from soil preparation to crop yielding, and the systemic approach of crops marketing from farmer to consumer. We used Random Forest Regression, Support Vector Regression and Voting Regression techniques for crop yield prediction and used the real-time data of climate, weather, and soil for the specific region. On the other hand, the market monitoring system will help for proper pricing of the crops and provide transparency for all the stakeholders related to crop marketing where they can buy and sell their products utilizing our system.
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[Copyright notice] Outlier Detection and Decision Tree for Wireless Sensor Network Fault Diagnosis Graph Algorithm for Anomaly Prediction in East Java Student Admission System FarmEasy: An Intelligent Platform to Empower Crops Prediction and Crops Marketing Hiding Messages in Audio using Modulus Operation and Simple Partition
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