基于机器学习技术的甘蔗土壤质量识别与监测方法

S. N, H. Kumar
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引用次数: 0

摘要

农业是印度的主要职业,农民是印度的支柱。超过70%的人通过农业获得力量。曼迪亚区是卡纳塔克邦农业最繁荣的地区之一。农业是这个地区的主要活动。甘蔗是这个地区的主要作物之一。农业的主要来源是土壤。由于采用传统的耕作方法并在没有任何建议的情况下添加化学肥料,土壤正在失去其本质。技术在农业中发挥着重要作用。就像智能家居、智能城市一样,许多研究人员都在朝着智能农业的方向努力。由于土壤是农业的重要来源,确定土壤中的化学、物理和生物参数并监测土壤质量将有助于农民了解土壤肥力和作物建议。协助种植者,提出一种以现代方式识别和监测土壤质量的方法,以改善农业生产,并为子孙后代保留肥沃的土壤。在这种方法中,使用机器学习技术(随机森林算法)来监测土壤质量,决定向土壤中添加肥料的数量,以及作物轮作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soil Quality Identifying and Monitoring Approach for Sugarcane Using Machine Learning Techniques
Farming is the major occupation in India and farmers are the backbone of India. Over 70 percent of people are empowered by farming. Mandya district is one of the most agriculturally prosperous districts in Karnataka. Farming is the dominant activity in the district. Sugarcane is one of the major crops of the district. The salient provenance for farming is soil. By adapting the traditional methods of farming and adding chemical fertilizers without any recommendation, soil is losing its essence. Technologies play a major role in farming. Like smart home, smart city, many researchers are working towards smart farming. As soil is the salient provenance of farming, identifying the chemical, physical and biological parameters in the soil and monitoring the soil quality will assist farmers to be aware of the soil fertility and crop suggestions. To assist growers, proposing an approach to identifying and monitoring the quality of the soil in a modern way for the betterment of farming and to retain the fertile soil for the future generation. In this approach, use machine learning techniques (Random Forest Algorithm) to monitor the quality of the soil, decide the quantity of fertilizers to be added to the soil, and crop rotation.
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