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Development of Optimal ANN Model to Estimate the Thermal Performance of Roughened Solar Air Heater Using Two different Learning Algorithms

机译:利用两种学习算法估算粗糙太阳能热水器热性能的最优神经网络模型的开发

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摘要

In the present study, artificial neural network (ANN) model has been developed with two different training algorithms to predict the thermal efficiency of wire rib roughened solar air heater. Total 50 sets of data have been taken from experiments with three different types of absorber plate. The experimental data and calculated values of collector efficiency were used to develop ANN model. Scaled conjugate gradient (SCG) and Levenberg–Marquardt (LM) learning algorithms were used. It has been found that TRAINLM with 6 neurons and TRAINSCG with 7 neurons is optimal model on the basis of statistical error analysis. The performance of both the models have been compared with actual data and found that TRAINLM performs better than TRAINSCG. The value of coefficient of determination $$(hbox {R}^{2})$$ ( R 2 ) for LM-6 is 0.99882 which gives the satisfactory performance. Learning algorithm with LM based proposed MLP ANN model seems more reliable for predicting performance of solar air heater.
机译:在本研究中,人工神经网络(ANN)模型已通过两种不同的训练算法进行了开发,以预测钢丝肋粗化太阳能空气加热器的热效率。使用三种不同类型的吸收板进行的实验共获得了50组数据。利用实验数据和集热效率的计算值建立了人工神经网络模型。使用了比例共轭梯度(SCG)和Levenberg–Marquardt(LM)学习算法。在统计误差分析的基础上,发现具有6个神经元的TRAINLM和具有7个神经元的TRAINSCG是最佳模型。将两个模型的性能与实际数据进行了比较,发现TRAINLM的性能优于TRAINSCG。 LM-6的确定系数$$(hbox {R} ^ {2})$$(R 2)的值为0.99882,具有令人满意的性能。基于LM提出的MLP ANN模型的学习算法对于预测太阳能热水器的性能似乎更加可靠。

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