Soil Analysis Using Machine Learning

Prakash Kanade
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Abstract

India's agriculture sector employs the most people. Here it is: Agriculture employs around 60% of the Indian population and accounts for about 18% of India's GDP; yet, low productivity is due to a lack of research in this industry. Water logging, soil erosion, nitrogen shortage, and other issues plague Indian agricultural land. These are the primary causes of agriculture's low productivity. A farmer must spend a significant amount of time and money on farming, which is more extensive and time intensive than using a tractor. As a result, the cost of agriculture has increased. It is critical to use machine learning techniques and computational research to the agriculture industry in order for India to become a better quantity and quality food producer. ML approaches are particularly beneficial for building relationships and abstracting patterns between disparate data sets, as well as forecasting a realistic outcome as an output. It can be successfully implemented in the Indian agriculture sector to increase efficiency. We've talked about how machine learning techniques can be used in the Indian agriculture industry to assess soil fertility. Agriculture has long been one of the most fascinating study and analytical topics. This research aims to assess soil data based on a variety of characteristics, classify it, and increase the efficiency of each model using multiple terms and classifications. The major goal of this study and analysis is to classify soil fertility (behavior) indices by area using village-level soil fertility data.
利用机器学习进行土壤分析
印度农业部门雇用的人员最多。是这样的:农业雇用了约 60% 的印度人口,占印度 GDP 的 18%;然而,由于缺乏对该行业的研究,生产力低下。水涝、土壤侵蚀、氮短缺等问题困扰着印度的农业用地。这些都是造成农业生产率低下的主要原因。农民必须花费大量的时间和金钱进行耕作,这比使用拖拉机要耗费更多的时间和精力。因此,农业成本增加了。为了使印度成为数量更多质量更好的粮食生产国,将机器学习技术和计算研究应用于农业产业至关重要。机器学习方法尤其有利于在不同的数据集之间建立关系和抽象模式,以及预测作为输出的现实结果。它可以在印度农业部门成功实施,以提高效率。我们已经讨论过印度农业部门如何利用机器学习技术来评估土壤肥力。长期以来,农业一直是最吸引人的研究和分析课题之一。这项研究旨在根据各种特征对土壤数据进行评估、分类,并利用多个术语和分类提高每个模型的效率。这项研究和分析的主要目标是利用村级土壤肥力数据,按地区对土壤肥力(行为)指数进行分类。
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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