IoT Based Smart Soil Fertilizer Monitoring And ML Based Crop Recommendation System

M. Hossain, M. A. Kashem, Shabnom Mustary
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Abstract

Agricultural yield generally depends on the level of soil fertility. Nitrogen (N), Phosphorus (P), Potassium (K), pH, the temperature of the soil, and moisture as soil chemical constituents are fundamental parameters for determining soil fertility. Good yield can easily be ensured by measuring their presence and applying the right amount of fertilizer in the right season. Most farmers do not produce good crops due to insufficient knowledge and the inability to use the proper amount of fertilizers. Current methods of measuring soil nutrients involve collecting soil from the field and transporting it to a laboratory for testing, which is often subjective and very expensive. This paper suggests an efficient IoT-based soil nutrient monitoring and machine learning-based crop recommendation system that helps farmers by offering crop-related details and recommendations for crops based on different soil and weather attributes. The proposed system deploys various types of sensors to determine soil nutrients, these sensors continuously collect the required data from the farm field and transmit it via a wireless sensor network (WSN) to a cloud database. By monitoring (N, P, K, temperature, pH, humidity, rainfall) values and analyzing the permanent and temporary behavior of the soil, the machine learning approach will recommend what types of crops have the best production potential for this land. Agriculture's use of machine-learning technology makes it easier to select the best-yielding crops by reducing the cost of unnecessary fertilizer use, which reduces manual labor in crop and crop management and increases productivity. The most appropriate crops for that cropland are suggested using machine learning algorithms in IoT-based soil nutrient monitoring, which stores data from various soil nutrients in a database. As a result, agricultural production will contribute more to national growth.
基于物联网的智能土壤肥料监测和基于机器学习的作物推荐系统
农业产量一般取决于土壤肥力水平。氮(N)、磷(P)、钾(K)、pH、土壤温度和水分等土壤化学成分是决定土壤肥力的基本参数。通过测量它们的存在并在适当的季节施用适量的肥料,可以很容易地确保良好的产量。大多数农民由于知识不足和不能使用适量的肥料而不能生产出好的作物。目前测量土壤养分的方法包括从田间收集土壤并将其运送到实验室进行测试,这通常是主观的,而且非常昂贵。本文提出了一种高效的基于物联网的土壤养分监测和基于机器学习的作物推荐系统,该系统通过提供与作物相关的细节和基于不同土壤和天气属性的作物推荐来帮助农民。该系统部署了各种类型的传感器来确定土壤养分,这些传感器不断从农田收集所需数据,并通过无线传感器网络(WSN)将其传输到云数据库。通过监测(N, P, K,温度,pH,湿度,降雨量)值并分析土壤的永久和临时行为,机器学习方法将推荐哪种类型的作物在这片土地上具有最佳生产潜力。农业使用机器学习技术,通过减少不必要的化肥使用成本,可以更容易地选择产量最高的作物,从而减少了作物和作物管理方面的体力劳动,提高了生产率。使用基于物联网的土壤养分监测中的机器学习算法建议最适合该农田的作物,该算法将各种土壤养分的数据存储在数据库中。因此,农业生产将对国家经济增长作出更大的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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