智能温室传感的时间序列预测

Asmaa Ali, H. Hassanein
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引用次数: 12

摘要

监测气候是在温室中获得最佳作物产量的最重要和最具挑战性的做法之一。在智能温室中,无线传感器网络(WSN)可用于监测小气候。持续的监测和感知可能导致过度的能源消耗。小气候的预测可以用来控制传感器的工作,从而降低传感器节点的能量消耗。我们开发了一种基于时间序列的长短期记忆(LSTM),用于预测空气温度、相对湿度、压力、风和露点的最大值、最小值和平均值。每天收集温室内小气候数据和温室外大气候数据,用于分析最佳拟合LSTM模型。在确定网络结构和参数后,对网络进行训练。衡量网络性能的统计标准是平均绝对误差(MAE)、均方误差(MSE)和均方根误差(RMSE)。将温度、相对湿度、压力、露点和风的实测值与预测值进行了比较。结果表明,预测模型性能LSTM在预测小气候方面是有效的。RMSE和MAE的统计分析结果证明了LSTM模型的预测精度。
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Time-Series Prediction for Sensing in Smart Greenhouses
Monitoring the climate is one of the most important and challenging practices by which to obtain optimum crop production in a greenhouse. In a smart greenhouse, a wireless sensor network (WSN) can be used to monitor the microclimate. Constant monitoring and sensing can result in excessive energy consumption. Prediction of the microclimate can be used to control the operation of sensors and hence lower the energy consumed by sensor nodes. We develop a Long Short-Term Memory (LSTM) based on time series for the prediction of the maximum, minimum, and mean values of the air temperature, relative humidity, pressure, wind, and dew point. Microclimate data inside and Macroclimate data outside the greenhouse are collected daily and used for the analysis of the best-fitting LSTM model. After determining the network structure and parameters, the network is then trained. The statistical criteria for measuring the network performance are the Mean Absolute Error (MAE), Mean Square Error (MSE) and Root Mean Square Error (RMSE). A comparison is made between the measured and predicted values of temperature, relative humidity, pressure, dew point and wind. Results indicate the effectiveness of the predictive model performance LSTM in predicting the microclimate. Statistical analysis of the RMSE and MAE results demonstrate the prediction accuracy of our proposed LSTM model.
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