Exploring the Potential of Machine Learning in Agriculture: A Review of its Applications and Results

Barkha Bhardwaj, Shivam Tiwari
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Abstract

This review paper provides an overview of the applications of machine learning in the agriculture field. Machine learning, a subfield of artificial intelligence, has been successfully applied to various domains, and agriculture is no exception. The paper starts with a brief introduction to machine learning and its various algorithms. It then presents various applications of machine learning in agriculture, including crop yield prediction, precision agriculture, plant disease detection, and soil moisture prediction. The paper highlights the advantages of using machine learning in agriculture, including increased efficiency, reduced costs, and improved decision-making. It also discusses the challenges faced in the application of machine learning in agriculture, including the need for large amounts of data and the difficulty in collecting high-quality data in remote and rural areas. Finally, the paper concludes with future directions for research and the potential impact of machine learning on the agriculture industry. The review shows that machine learning has the potential to revolutionize the way we approach agriculture and food production, leading to a more sustainable and efficient future for the industry.
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探索机器学习在农业中的潜力:其应用和结果综述
本文综述了机器学习在农业领域的应用。机器学习作为人工智能的一个子领域,已经成功应用于各个领域,农业也不例外。本文首先简要介绍了机器学习及其各种算法。然后介绍了机器学习在农业中的各种应用,包括作物产量预测、精准农业、植物病害检测和土壤湿度预测。这篇论文强调了在农业中使用机器学习的优势,包括提高效率、降低成本和改进决策。它还讨论了机器学习在农业中的应用所面临的挑战,包括对大量数据的需求以及在偏远和农村地区收集高质量数据的困难。最后,本文总结了未来的研究方向以及机器学习对农业产业的潜在影响。该评估表明,机器学习有可能彻底改变我们对待农业和食品生产的方式,为该行业带来更可持续、更高效的未来。
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