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中国农机化学报

中国农机化学报 ›› 2022, Vol. 43 ›› Issue (4): 116-123.DOI: 10.13733/j.jcam.issn.20955553.2022.04.017

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基于LSTM神经网络的智能灌溉系统设计与试验#br#
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孙博瑞1, 2,孙三民1, 2,蒋敏1, 2,薛山1
  

  1. 1. 塔里木大学水利与建筑工程学院,新疆阿拉尔,843300;

    2. 塔里木大学现代农业工程重点实验室,新疆阿拉尔,843300
  • 出版日期:2022-04-15 发布日期:2022-04-24
  • 基金资助:
    国家自然科学基金(51869030);新疆生产建设兵团科技项目(2021CB021)

Design and test of intelligent irrigation system based on LSTM neural network

Sun Borui, Sun Sanmin, Jiang Min, Xue Shan.    

  • Online:2022-04-15 Published:2022-04-24

摘要: 针对我国现阶段农业生产效率低,农业用水浪费严重现象,设计一套基于LSTM神经网络的智能灌溉系统。系统以树莓派为下位机控制器,阿里云服务器为上位机。利用灰色关联分析法确定平均气温、太阳辐射、日照时数、平均风速、相对湿度、气压与作物需水量间的关联度系数分别为0.636 52、0.510 42、0.444 56、0.440 29、0.343 50、0.287 87,从中选取关联系数较大的气象因素作为LSTM预测模型的特征输入向量,作物需水量为输出向量,构建LSTM神经网络预测模型,并为系统开发了相应的物联网平台与移动端平台,实现数据可视化及开关远程控制功能。结果表明预测模型拟合系数R2等于0.987 2,且残差相对稳定,预测精度较高。在实际灌溉试验中模型预测平均绝对误差为3.02%,系统运行稳定,智能化程度较高,为农业现代化发展提供一定参考。

关键词: 神经网络, 需水量, 物联网, 智能灌溉系统, 灰色关联分析

Abstract: In view of the low efficiency of agricultural production and the serious waste of agricultural water in our country, an intelligent irrigation system based on LSTM neural network was designed. The system used raspberry pie as the lower machine controller and Ali cloud server as the upper computer. The grey correlation analysis method was used to determine that the correlation coefficients between average air temperature, solar radiation, sunshine hours, average wind speed, relative humidity, pressure and crop water demand, which were 0.636 52, 0.510 42, 0.444 56, 0.440 29, 0.343 50 and 0.287 87 respectively. The meteorological factors with large correlation coefficient were selected as the characteristic input vector of the LSTM prediction model, and the crop water demand was used as the output vector, LSTM neural network prediction model was constructed. Meanwhile, the corresponding Internet of Things platform and mobile platform for the system was developed, which achieved data visualization and switch remote control functions. The results showed that the fitting coefficient R2 of the prediction model was equal to 0.987 2, the residual was relatively stable and the prediction accuracy was high. In the actual irrigation experiment, the average absolute error of the model prediction was 3.02%. The system runs stably and has a high degree of intelligence, which provides a certain reference for the development of agricultural modernization.

Key words: neural networks, waterdemand, Internet of Things, intelligent irrigation system;gray correlation analysis

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