Future Intelligent Agriculture with Bootstrapped Meta-Learning andє-greedy Q-learning

D. Sasikala, K. Venkatesh Sharma
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引用次数: 3

Abstract

Agriculture is a noteworthy and vibrant domain in the fiscal evolution of the globe. With populationin progress, climatic situation and assets, and agriculture turn out dazed to be a crucial task to realize the necessities of the future population. Intelligent precision agriculture/intelligent smart farming has transpired as an innovative tool to tackle hovers of the future ahead in automated agricultural sustainability by leading Artificial Intelligence (AI) in agriculture automation.AI unravels critical farm labor challenges by improving or reducing work and lessening the necessity of numerous workers. Agricultural AI aids in reaping harvests quicker than human employees at a greater quantity, further precise in categorizing and eradicating unwanted plants, also dropping cost and menace. This process motivates the cutting-edge technologies capitulating the machine capability to learn by sourcing Bootstrapped Meta-learning also reinforcing with rewards as maximum crop yields and minimum resource utilizations as well as within time limits. AI empowered farm machinery is the key constituent of the future agriculture revolution ahead. In this exploratory work, an efficient automation of AI application in the field of agriculture sustenance is ensured for receipt of the most obtainable aids as outcomes and inhibiting the applied assets. Fixing the precise real-time issues trailed by unravelling it for agricultural augmentation or amplification thereby leads to the global best future agriculture.
基于自引导元学习的未来智能农业andє-greedy q学习
在全球财政演变中,农业是一个值得注意且充满活力的领域。随着人口的增长,气候状况和资产、农业成为实现未来人口需求的关键任务。智能精准农业/智能智能农业已经成为一种创新工具,通过引领农业自动化的人工智能(AI),解决自动化农业可持续发展的未来问题。人工智能通过改善或减少工作,减少大量工人的必要性,解决了关键的农业劳动力挑战。农业人工智能帮助人们比人类员工更快地收获更多的庄稼,在分类和清除不需要的植物方面更加精确,也降低了成本和威胁。这一过程激发了尖端技术的发展,使机器能够通过自助元学习来学习,并在时间限制内以最大作物产量和最小资源利用率为奖励来加强。人工智能农业机械是未来农业革命的关键组成部分。在这项探索性工作中,确保人工智能在农业维持领域的有效自动化应用,以获得最可获得的援助作为结果并抑制应用资产。解决精确的实时问题,将其分解为农业扩增或放大,从而导致全球最好的未来农业。
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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