Application of artificial intelligence and machine learning based on big data analysis in sustainable agriculture

Dongkun Li
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引用次数: 8

Abstract

ABSTRACT In order to explore the intelligent path of agricultural sustainable development, this paper combines big data technology to process agricultural sustainable development data with the support of machine learning technology. Moreover, in order to solve the evaluation problem of regional agricultural sustainable development as well as understand the evolution path and evolution law of regional agricultural sustainable growth, this paper starts from the framework model and combines big data in addition to artificial intelligence expertise to construct a sustainable agricultural analysis model. In addition, this paper combines the needs of sustainable agricultural development to set the system function and analyse the realisation process of the system function. At last, this paper proposes a digital simulation experiment to authenticate the accomplishment of the model built in this paper. Through experimental research, it can be known that the intelligent agricultural sustainable development system constructed in this paper has certain effects, and this system can be used in subsequent research to analyse agricultural sustainable development. Based on algorithm verification as well as evaluation of the model on agricultural sustainability analysis, the statistical results are varying from 80 to 90.
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基于大数据分析的人工智能和机器学习在可持续农业中的应用
为了探索农业可持续发展的智能化路径,本文结合大数据技术,在机器学习技术的支持下,对农业可持续发展数据进行处理。此外,为了解决区域农业可持续发展的评价问题,了解区域农业可持续增长的演化路径和演化规律,本文从框架模型出发,结合大数据和人工智能专业知识构建可持续农业分析模型。此外,本文结合农业可持续发展的需要对系统功能进行了设置,并分析了系统功能的实现过程。最后,本文提出了一个数字仿真实验来验证本文所建模型的实现。通过实验研究可知,本文构建的智能农业可持续发展系统具有一定的效果,该系统可用于后续的农业可持续发展分析研究。基于算法验证和农业可持续性分析模型的评价,统计结果在80 ~ 90之间。
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