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Prediction of thermal performance of unidirectional flow porous bed solar air heater with optimal training function using Artificial Neural Network

机译:用人工神经网络预测单向流动多孔床太阳能空气加热器的热性能

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In the present work, Artificial Neural Network (ANN) has been used to predict the thermal performance of unidirectional flow porous bed solar air heater.The ANN model was structured on the basis of data sets obtained from experiments and values of thermal efficiency of solar air heater.Four types of training functions are used in ANN model for training process with feed forward learning procedure.The aim of this work is to examine the performance and comparison of four training functions (TRAINCGP, TRAINSCG, TRAINLM and TRAINOSS) applied in training process of neural model.A comparison was based on the RMSE and R~2.It was found that training function TRAINLM exhibits optimal result with the experimental data.
机译:在本作工作中,人工神经网络(ANN)已被用于预测单向流动多孔荫的太阳能空气加热器的热性能。ANN模型是基于从太阳能空气的热效率的实验和值的数据组构建的结构加热器。训练功能的类型用于培训过程的ANN模型,具有前锋学习过程。这项工作的目的是研究应用于培训过程中的四个训练功能(TrainCGP,Trainscg,TrainLM和TrainSOSS)的性能和比较神经模型。比较基于RMSE和R〜2.发现训练功能TrainLM与实验数据表现出最佳结果。

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