机器学习算法在印度农业作物产量预测中的应用研究

S. Sharma, D. Sharma, J. Verma
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引用次数: 3

摘要

事先和有充分根据的农产品评价对实地一级的良好和财务评估进行量化是至关重要的,以便为进出口政策和增加农民收入制定农产品战略行动计划。作物产量预测是利用机器学习算法来估计更高的作物产量,这是农业业务中最困难的挑战之一。由于农业产量预测的重要性日益增加,本文深入研究了如何利用机器学习(ML)方法来预测作物产量。首先讨论了世界农业产量的现状,然后简要介绍了广泛使用的特征和预测程序。预测作物产量在农业中是一个严肃的问题,而且有一个庞大的数据集,这使得农民很难选择种子和预测产量。在今天的情况下,由于人口的扩大,必须同时提高农业生产,以满足人们的需要。本文使用机器学习技术和人工智能对印度作物产量的各个方面进行了详细研究。
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Study on Machine-Learning Algorithms in Crop Yield Predictions specific to Indian Agricultural Contexts
Prior and well-grounded produces evaluation is vital in quantifying a well and financial assessment at the field level for discovering agricultural commodity strategic action plans for import-export policies and increasing farmer incomes. Crop production projections are performed utilizing machine learning algorithms to estimate a higher crop yield, which is one of the most difficult challenges in the agriculture business. Because of the growing importance of agricultural yield prediction, this article takes an in-depth look at how Machine Learning (ML) approaches may be utilized to forecast crop production. The present state of agricultural yield worldwide is discussed first, followed by a brief introduction of extensively utilized features and forecasting procedures. Forecasting crop yields is a serious issue in agriculture, plus there is a large dataset that makes it arduous for farmers to select seeds and forecast yields. In today’s circumstances, since the extension in population, agricultural production must be raised simultaneously to fulfill people’s wants. This paper is a detailed study of various aspects of crop yielding in India using machine learning techniques and artificial intelligence.
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