基于农业知识和物联网的多主体亏缺灌溉控制

Yi-Wei Ma, Jin-Qiu Shi, Jiann-Liang Chen, Chia-Chi Hsu, Chen-Hao Chuang
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引用次数: 6

摘要

物联网、大数据等技术快速发展,有利于农业经营和种植。外部环境参数影响作物生长。灌溉作业涉及多条件决策。利用人工智能和图像处理技术控制浇水,处理环境数据,然后利用处理后的数据训练模型来预测土壤湿度。由此得到的结果用于将土壤分为高、正常和低水分。一种通常用于捕获土壤图像的相机,将其导入卷积神经网络进行特征提取。接下来,根据深度学习预测土壤的类别。这两种预测的结果被发送到一个模糊控制系统,土壤湿度区间是根据种植作物的类别来定义的。利用定义的参数构建规则库,确定农业专业人员的判断规则,并根据外部条件引入模糊控制器。将去模糊化的结果导入到被控制的控制装置中。这项工作使用物联网来序列化来自农场田地的信息,并使用人工智能技术来分析植物的状态。图像识别技术是为了提供更精确和全面的控制,以提高灌溉的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration Agricultural Knowledge and Internet of Things for Multi-Agent Deficit Irrigation Control
Technology related to the Internet of Things and Big Data is developing rapidly, favoring agricultural management and cultivation. External environmental parameters affect crop growth. Irrigation operations involve multi-conditional decisions. Artificial intelligence and image processing technology are used to control watering, process environmental data, and use the processed data are then used to train models to predict soil moisture. The results thus obtained are used to divide soil into that with high, normal, and low moistures. A camera commonly used to capture images of soil, which are imported into a convolutional neural network for feature extraction. Next, the category of soil is predicted following deep learning. The results of the two predictions are sent to a fuzzy control system and the soil moisture interval is defined based on the category of crop that is being planted in it. The rule base is constructed using the defined parameters, and determines the judgment rule from the agricultural professional, And external conditions lead to the fuzzy controller. Defuzzified results are imported into controlled a control device. This work uses the IoT to serialize information from the fields in a farm and uses artificial intelligence techniques to analyze the state of plants. Image recognition technology is to provide more precise and comprehensive control to improve the accuracy of irrigation.
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