Model Approach of Crop Classification Using Logistic Regression

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Abstract

Relation between agriculture and the human development is very old. From the beginning era all participant of food chain in second stage depends on agriculture. At the beginning state life was natural and moving. With the stability of humans use of specific land increased and now stage is , where , humans are useable to chemical products for increasing the quantity of crop production in the land. Though the use of external chemicals result in quantitative growth of crop, but internally soil health get suffer from it and one –day it might be loss her fertility. Soil testing tools has a vital role in testing the soil for nutrient in soil and test its productivity. Easy classification of soil on the basis of its different features and also from testing the quality of soil to suggest the additional supplement to improve the health and nutrient in the soil. Key objective of this paper is to capture soil health in concern of nutrient. In this paper we have shown the classification approach of soil nutrient and detecting the soil health. We have built model using machine leaning algorithm (Logistic Regression) in Python. Results are compared with standard chart of soil health contains from the agriculture laboratory. Our detection accuracy lies between 95 to 99%.
基于Logistic回归的作物分类模型方法
农业与人类发展的关系由来已久。从一开始,第二阶段食物链的所有参与者都依赖于农业。建国之初,国家的生活是自然而动人的。随着人类对特定土地利用的稳定性增加,现在的阶段是,人类可利用化学产品来增加土地上作物的产量。虽然外用化学药品使作物数量增长,但内部土壤健康受到损害,有一天可能会失去肥力。土壤检测工具在检测土壤养分和土壤生产力方面起着至关重要的作用。易根据土壤的不同特征对其进行分类,并从土壤质量的检测中提出额外补充的建议,以改善土壤的健康和营养。本文的主要目的是捕捉与养分有关的土壤健康状况。本文介绍了土壤养分的分类方法和土壤健康状况的检测方法。我们在Python中使用机器学习算法(逻辑回归)建立了模型。结果与农业实验室土壤健康含量标准图进行了比较。我们的检测准确率在95%到99%之间。
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