Deep Network based on Long Short-Term Memory for Time Series Prediction of Microclimate Data inside the Greenhouse

S. Gharghory
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引用次数: 7

Abstract

An enhanced architecture of recurrent neural network based on Long Short-Term Memory (LSTM) is suggested in this paper for predicting the microclimate inside the greenhouse through its time series data. The microclimate inside the greenhouse largely affected by the external weather variations and it has a great impact on the greenhouse crops and its production. Therefore, it is a massive importance to predict the microclimate inside greenhouse as a preceding stage for accurate design of a control system that could fulfill the requirements of suitable environment for the plants and crop managing. The LSTM network is trained and tested by the temperatures and relative humidity data measured inside the greenhouse utilizing the mathematical greenhouse model with the outside weather data over 27 days. To evaluate the prediction accuracy of the suggested LSTM network, different measurements, such as Root Mean Square Error (RMSE) and Mean Absolute Error (MAE), are calculated and compared to those of conventional networks in references. The simulation results of LSTM network for forecasting the temperature and relative humidity inside greenhouse outperform over those of the traditional methods. The prediction results of temperature and humidity inside greenhouse in terms of RMSE approximately are 0.16 and 0.62 and in terms of MAE are 0.11 and 0.4, respectively, for both of them.
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基于长短期记忆的温室小气候数据时间序列预测的深度网络
本文提出了一种基于长短期记忆(LSTM)的循环神经网络增强结构,利用温室内的时间序列数据预测温室内的小气候。温室内小气候受外界气候变化的影响很大,对温室作物及其生产有很大的影响。因此,对温室内的小气候进行预测,作为准确设计控制系统以满足植物和作物管理对适宜环境的要求的前置阶段,具有重要的意义。LSTM网络是通过利用温室数学模型和27天的室外天气数据在温室内测量的温度和相对湿度数据来训练和测试的。为了评估LSTM网络的预测精度,计算了不同的测量值,如均方根误差(RMSE)和平均绝对误差(MAE),并与参考文献中的传统网络进行了比较。LSTM网络对温室内温度和相对湿度的模拟结果优于传统方法。温室内温度和湿度的RMSE预测结果分别为0.16和0.62,MAE预测结果分别为0.11和0.4。
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