机器学习和统计方法用于估计影响土壤肥力状况的参数:调查

Sareena Rose, S. Nickolas, S. Sangeetha
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引用次数: 7

摘要

土壤被称为地球的皮肤,受地理、环境和天气参数的影响很大。其丰富的营养和矿物质含量,在调节生态系统的本质上起着突出的作用。这组科学家进行了各种研究,以预测不同的参数,从而了解土壤的特征——它的养分和矿物质含量——以及它们在发现土壤肥力状况方面的用处。有这么多可用的参数,它们在预测土壤肥力方面的贡献对农业科学家来说是一项繁琐的工作,其中自动化分析过程起着主要作用。机器学习方法与统计推断相结合,通过识别土壤肥力的重要属性,提出了提高预测准确性的新方法。在本文中,研究了文献中用于定义土壤特征的不同参数,以及如何将它们用作预测土壤肥力的机器学习算法/分析的输入。通过本研究可以看出,预测技术可以有效地应用于优化后的土壤参数,以提高土壤肥力的预测精度,减少人为干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning and Statistical Approaches used in Estimating Parameters that Affect the Soil Fertility Status: A Survey
Soil is called as the skin of the earth and is greatly influenced by geographical, environmental and weather parameters. Its rich nutrient and mineral content, plays an eminent role in regulating the essence of the ecosystem. Various studies were carried out by the researchers in predicting different parameters for knowing the characteristics of the soil-its nutrient and mineral content- and their usefulness in finding the soil fertility status. There are so many parameters available and their contribution in predicting the soil fertility is a cumbersome job for the agriculture scientist, where automated analytical process plays a major role. The machine learning approaches combined with statistical inferences brings out the novel ways in improving the accuracy of prediction by identifying the important attributes of soil fertility. In this paper, a study is made on different parameters used in the literature for defining the characteristics of the soil and how they are used as input for machine learning algorithms/analysis for predicting the soil fertility. Based on this study, it could be observed that prediction techniques could be efficiently applied over optimized soil parameters for soil fertility prediction with more accuracy and less human intervention.
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