Agrobot: Agricultural Robot using IoT and Machine Learning (ML)

D. Roja Ramani, Rachna P, Pavan G, R. Reddy, Mohammad Huzaifa
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Abstract

In today's world agriculture plays a very important role in the manufacturing of textiles, clothes, production of surplus number of crops that is food, which is essential for the everyday livelihood of mankind. On the other hand, there are a lot of challenges in the agricultural industries such as unpredictable natural disasters such as droughts, famines, floods etc., which can incur huge loss for the agriculture industries as well as the countries which have an agrarian society not only will it be affected by natural disasters but can also be affected by the diseases, which have the potential to destroy crops. The primary objective is to assist farmers and agriculture industries to thrive so that there can be less occurrence of food shortages by efficiently increasing the production of crops tenfold, analyzes the soil fertility for better plant growth, helps prevent plant epidemic by analyzing which fertilizer is better suitable for the protection of the plant to analyze the weather and the plants that is suitable to grow in the particular weather condition and predict the occurrence of natural disasters such as droughts and floods for early prevention from the crops by using the ATMEGA controller.
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Agrobot:使用物联网和机器学习(ML)的农业机器人
在当今世界,农业在纺织品、服装的制造、粮食的生产中起着非常重要的作用,这是人类日常生活所必需的。另一方面,农业产业面临着许多挑战,如不可预测的自然灾害,如干旱、饥荒、洪水等,这可能会给农业产业以及农业社会的国家带来巨大损失,不仅会受到自然灾害的影响,还会受到疾病的影响,这些疾病有可能破坏作物。主要目标是帮助农民和农业蓬勃发展,以便通过有效地将作物产量提高十倍来减少粮食短缺的发生,分析土壤肥力以促进植物生长,通过分析哪种肥料更适合保护植物,帮助预防植物流行病;分析天气和在特定天气条件下适合生长的植物;利用ATMEGA控制器预测干旱、洪水等自然灾害的发生,对作物进行早期预防。
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