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首页> 外文期刊>Agricultural Engineering International: CIGR Ejournal >Application of Neural Networks and multiple regression models in greenhouse climate estimation
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Application of Neural Networks and multiple regression models in greenhouse climate estimation

机译:神经网络和多元回归模型在温室气候估计中的应用

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Artificial Neural Networks (ANNs) are biologically inspired computer programs designed to simulate the way in which the human brain processes information. After a comprehensive literature survey on the application of ANNs in greenhouses, this work describes the results of using ANNs to predict the roof temperature, inside air humidity, soil temperature and inside soil humidity (Tri, RHia, Tis, RHis), in a semi-solar greenhouse according to use some inside and outside parameters in the institute of renewable energy in East Azerbaijan province, Iran. For this purpose, a semi-solar greenhouse was designed and constructed for the first time in Iran. The model database selected beside on the main and important factors influence the four above variables inside the greenhouse. Neural estimation models were constructed with (Vo, Tia, Toa, Ir, Tis, RHia, Tri) as the inputs and (Tri, RHis, Tis, RHia) as the outputs. Optimal parameters for the network were selected via a trial and error procedure on the available data. Results showed that MLP (Multilayer Perceptron) algorithm with 4-6-1(4 inputs in first layer, 6 neurons in hidden layer and an output) and 4-9-1(4 inputs in first layer, 9 neurons in hidden layer and an output) topologies can predict inside soil and air humidity and inside roof and soil temperature with a low error (RMSE=0.25°C, 0.30%, 1.06°C and 0.25% for Tri, RHis, Tis and RHia), respectively. Also the results showed that regression model has a low error to predict Tri (RMSE=0.71°C) and high error to estimate Tis (2.71°C), respectively. In overall, the error for regression model to predict all 4 parameters (Tri, RHis, Tis, RHia) was about 2 times higher than MLP method. It is concluded that ANN represents a promising tool for predicting inside climate in a greenhouse and will be useful in automatic greenhouses. For practical application, however, the farmers should use metrological and experimental data for 12 months of the year to decrease the prediction error.
机译:人工神经网络(ANN)是受生物启发的计算机程序,旨在模拟人脑处理信息的方式。在对人工神经网络在温室中的应用进行了全面的文献调查之后,这项工作描述了使用人工神经网络预测半屋顶温度,内部空气湿度,土壤温度和内部土壤湿度(Tri,RHia,Tis,RHis)的结果。 -在伊朗东部阿塞拜疆省的可再生能源研究所中,根据使用一些内部和外部参数确定日光温室。为此,伊朗首次设计和建造了一个半太阳能温室。在主要和重要因素旁边选择的模型数据库会影响温室中的上述四个变量。以(Vo,Tia,Toa,Ir,Tis,RHia,Tri)为输入,(Tri,RHis,Tis,RHia)为输出,构建了神经估计模型。通过对现有数据进行反复试验,为网络选择了最佳参数。结果表明,具有4-6-1(第一层4个输入,隐藏层6个神经元和一个输出)和4-9-1(第一层4个输入,隐藏层9个神经元和)的MLP(多层感知器)算法输出)拓扑可以以较低的误差(分别为Tri,RHis,Tis和RHia的RMSE = 0.25°C,0.30%,1.06°C和0.25%)预测土壤和空气的内部湿度以及屋顶和土壤的内部温度。结果还表明,回归模型预测Tri的低误差(RMSE = 0.71°C)和预测Tis的高误差(2.71°C)。总体而言,回归模型预测所有4个参数(Tri,RHis,Tis,RHia)的误差约为MLP方法的2倍。结论是,人工神经网络是预测温室内部气候的有前途的工具,将在自动温室中使用。但是,对于实际应用,农民应该使用一年中12个月的计量和实验数据来减少预测误差。

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