基于LoRa无线通信和动态神经网络的葡萄园灌溉控制系统设计

Lixin Lyu, Jonathan M. Caballero, Ronaldo Juanatas
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引用次数: 1

摘要

在葡萄种植中,精确的灌溉控制系统可以提高葡萄的产量和口感,提高水的利用效率。本文设计了一种基于LoRa远程无线技术和动态神经网络的滴灌控制系统。Lora远程无线通信终端,它可以连接传感器或控制设备,如土壤温度、数字流量计等,同时,可以远程控制如水泵、水阀等设备的运行。利用递归神经网络(RNN)中的长短期记忆网络(LSTM)建立预测模型。经过训练的模型使用过去的土壤湿度、降水和气候测量数据,根据预先设定的时间来预测葡萄园土壤的水分含量,从而计算灌溉量并确定灌溉时间。根据模型的训练结果,均方根误差(RMSE)为$0.116 \sim0.171$, R2的极差为$0.941 \sim0.986$,平均绝对误差(MAE)的极差为$0.071 \sim0.081$。对于不同土壤深度的含水量预测,R2>0.9表明模型性能和预测效果较好。该系统工作稳定性好,预测精度高,误差小。种植者可在实际种植环境中,将其应用于大、中、小规模葡萄种植园的灌溉。与传统的灌溉控制系统相比,可以实现先进的灌溉方式,提高灌溉率,节约灌溉用水。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of Irrigation Control System for Vineyard Based on LoRa Wireless Communication and Dynamic Neural Network
In grape cultivation, precise irrigation control systems can improve the yield and taste of grapes and enhance the efficiency of water use. A drip irrigation control system, based on LoRa remote wireless technology, and a dynamic neural network, is designed in this paper. Lora remote wireless communication terminal, which can connect sensors or control devices, such as soil temperature, digital flow meter, and so on, at the same time, can be remote control such as pumps, water valves, and other equipment operation. A prediction model was established using the Long Short-Term Memory Network (LSTM) which is a class of the Recurrent Neural Network (RNN). The trained model uses past soil moisture, precipitation and climate measurements to predict the moisture content of vineyard soils based on a pre-set amount of time, thereby calculating the amount of irrigation and determining the timing of irrigation. According to the training results of the model, the root mean square error (RMSE) is $0.116 \sim0.171$, the range of R2 is $0.941 \sim0.986$, and the range of mean absolute error (MAE) is $0.071 \sim0.081$. For predicting water content at different soil depths, R2>0.9 shows good model performance and prediction effect. The system has good working stability, high prediction accuracy, and slight deviation. The planter can apply it to the irrigation of large, medium, and small-scale grape plantations in the actual planting environment. Compared with the traditional irrigation control system, advanced irrigation methods can be realized, improving the irrigation rate and saving irrigation water.
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