在农作物监测中利用神经网络发现模式

Akhilendra Pratap Singh, Neeraj Kaushik, Rahul Pawar
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摘要

神经网络已成为发现农作物监测模式的实用工具。本研究的目的是研究是否可以采用神经网络策略来捕捉和感知与作物监测相关的各种参数的模式。2007 年 10 月至 2009 年 10 月期间的数据来自美国中西部的四块玉米地。使用线性和非线性神经网络对信息进行分析,以确定与作物生产相关的巨大样式。结果表明,神经网络能够如实感知记录中的风格,非线性网络产生了令人满意的结果。结果证实,与作物生产相关的最重要参数是果核的宽度、果穗的持续时间和精确的叶片位置。这些发现表明,神经网络可能是了解复杂作物监测关系的一种有前途的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering Patterns with Neural Networks in Agricultural Crop Monitoring
neural networks have emerged as practical tools for discovering styles in agricultural crop monitoring. The motive of this take a look at was to research whether or not neural network strategies will be implemented to seize and perceive patterns in various parameters related to crop monitoring. Data was accrued from four corn fields inside the Midwest US from October 2007 to October 2009. Linear and non-linear neural networks were used to analyze the information, to identify enormous styles associated with crop manufacturing. Effects showed that the neural networks have been able to as they should be perceived styles inside the records, with the non-linear network generating satisfactory results. The results confirmed that the most important parameters related to crop production were the width of the kernel, duration of the cob, and precise leaf location. These findings advocate that neural networks may be a promising technique for understanding complicated crop monitoring relationships.
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