Penetration of Artificial Intelligence Techniques to Enhance the Agricultural Productivity and the Method of Farming; Opportunities and Challenges

R. Raman, Sai Mounika Muramulla, Sreelekha Ponugoti, S. O, K. Dhinakaran, Ramu Kuchipudi, C.R.Rene Robin
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Abstract

Each nation's economic sector depends heavily on agriculture. Every day, more people live on the planet, which raises the requirement of food. For the time being, farmers' conventional methods are unable to meet the demand. As a result, new automation techniques are launched to meet these needs and give many people in this industry excellent job prospects. In every industry, including banking, robotics, agriculture, and education, artificial intelligence(AI) has emerged as one of the most crucial technologies. It is playing a very important part in the agriculture sector and changing the agriculture industry. AI protects the agricultural sector from a variety of concerns, including food safety, population expansion, climate change, and employment problems in this industry. Due to AI, the agriculture system of today has advanced to a new level. Real-time crop monitoring, production, harvesting, processing, and marketing have all been enhanced by artificial intelligence. Numerous cutting-edge computer-based systems are created to identify several significant factors, including weed identification, yield identification, crop quality, and many others.
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人工智能技术对农业生产力和耕作方式的渗透机遇与挑战
每个国家的经济部门都严重依赖农业。每天都有更多的人生活在地球上,这就提高了对食物的需求。目前,农民的传统方法无法满足需求。因此,新的自动化技术应运而生,以满足这些需求,并为该行业的许多人提供了良好的就业前景。在每个行业,包括银行、机器人、农业和教育,人工智能(AI)已经成为最关键的技术之一。它在农业领域发挥着非常重要的作用,正在改变着农业产业。人工智能保护农业部门免受各种担忧的影响,包括食品安全、人口扩张、气候变化和该行业的就业问题。由于人工智能,今天的农业系统已经发展到一个新的水平。农作物的实时监测、生产、收获、加工和销售都得到了人工智能的加强。许多尖端的基于计算机的系统被创建来识别几个重要因素,包括杂草识别、产量识别、作物质量以及许多其他因素。
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