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Application of Colorimetry to determine Soil Fertility through Naive Bayes Classification Algorithm

机译:色度测量法在天幼贝雷斯分类算法中确定土壤肥力

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Fertility of the soil is considered most important criterion in any agriculture practice. Nutrients present in the soil define its fertility. Mineral nutrients such as Nitrogen (N), Potassium (K), Phosphorous (P) are vital for plant growth and food production. Lack of adequate knowledge amongst the farmers about the various parameters in farming like the soil fertility, amount of fertilizer to be used, leads to degradation of the overall soil quality. In this paper, we have represented a system to test the soil fertility by using the principal of colorimetry. Colorimetry is a technique in which we measure the amount of light absorbed by the color developed in the sample. An aqueous solution of the soil sample is prepared using extracting agents and is subjected to the photodiodes of the color sensor. The solution develops a color due to reaction of nutrients in the soil with chemicals. The output by the color sensor is calibrated with standard values present in the database. To verify the results obtained by the color sensor we use the Naive Bayes classification algorithm. This algorithm classifies the intensity values of the soil solutions into three class labels namely low, medium, high. After applying the Naive Bayes classifier, we can predict the accuracy of the intended system. The intended system is thus beneficial to reduce the time required for testing the soil fertility and determining the accuracy of our results.
机译:土壤的肥力被认为是任何农业实践中最重要的标准。土壤中存在的营养素定义其生育能力。矿物营养素如氮(N),钾(K),磷(P)对于植物生长和食品生产至关重要。在农民中缺乏足够的知识,关于农业的各种参数,如土壤肥力,要使用的肥料量,导致整体土壤质量的降解。在本文中,我们代表了一种通过使用比色原理来测试土壤肥力的系统。比色度是我们测量样品中显影吸收的光量的技术。使用萃取剂制备土样品的水溶液,并经受彩色传感器的光电二极管。由于土壤中的营养物与化学品的反应,溶液产生颜色。颜色传感器的输出按数据库中存在的标准值进行校准。为了验证通过彩色传感器获得的结果,我们使用Naive Bayes分类算法。该算法将土壤溶液的强度值分为三类标签,即低,中,高。在应用Naive Bayes分类器后,我们可以预测预期系统的准确性。因此,预期的系统是有益的,可以减少测试土壤肥力并确定结果的准确性所需的时间。

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