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Research on Temperature and Humidity Prediction Model of Granary Based on RNN-LSTM

机译:基于RNN-LSTM的粮仓温湿度预测模型研究

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This paper studies the temperature forecasting model of grain bins with short-term or small data set temperature data and time series characteristics in the case of relatively short-term temperature changes or relatively small datasets of stored grain and food conditions. Input three temperature and two humidity, use SPSS for principal component analysis, process the collected data, and use the pre-processed group data to build the model. Take the former group of data as the training data set, and the latter group as the test data set. On the basis of RNN, modify each layer of neural network to set three gates, improve the RNN change learning rate to change the possibility of local optimal solution. Based on the analysis of the time series characteristics of the temperature of the granary, and comparing the LSTM prediction model, WU model and the three-pass theory model, it can be seen that the LSTM prediction model has good results on the temperature of the stored grain, and the degree of fitting is high. In the end, a basically satisfactory prediction effect can be achieved.
机译:本文研究短期或短期数据集温度数据和时间序列特征下的谷物仓温度预测模型,这种情况是相对短期的温度变化或储存的谷物和食物状况的数据集相对较小的情况。输入三个温度和两个湿度,使用SPSS进行主成分分析,处理收集的数据,并使用预处理的组数据构建模型。将前一组数据作为训练数据集,将后一组作为测试数据集。在RNN的基础上,修改神经网络的每一层以设置三个门,提高RNN的更改学习率以更改局部最优解的可能性。通过对粮仓温度的时间序列特征进行分析,并与LSTM预测模型,WU模型和三遍理论模型进行比较,可以看出LSTM预测模型对粮仓温度具有良好的预测效果。储存谷物,拟合度高。最后,可以实现基本令人满意的预测效果。

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