首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part E. Journal of Process Mechanical Engineering >Artificial neural network based modelling of performance of a beta-type Stirling engine
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Artificial neural network based modelling of performance of a beta-type Stirling engine

机译:基于人工神经网络的β型斯特林发动机性能建模

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In this article, artificial neural network has been used in order to predict the power (P) and torque (T) values obtained from a beta-type Stirling engine that uses air as working fluid. Experimental data have been obtained for different charge pressures and hot source temperatures using ZrO_2-coated and uncoated displacers. The closest artificial neural network results to experimental torque and power values were obtained with double hidden layer 5-13-9-1 and 5-13-7-1 network architectures, respectively. The best prediction values were obtained by Levenberg-Marquardt learning algorithm. Correlation coefficient (R~2) for the torque values were 0.998331 and 0.997231 for the training and test sets, respectively, while R~2 value for power values were 0.998331 and 0.997231 for the training and test sets, respectively. R~2 values show that the developed artificial neural network is an acceptable and powerful modelling technique in predicting the torque and power values of the beta-type Stirling engine.
机译:在本文中,已使用人工神经网络来预测从使用空气作为工作流体的β型斯特林发动机获得的功率(P)和扭矩(T)值。使用ZrO_2涂层和未涂层​​的置换器获得了不同充气压力和热源温度的实验数据。分别使用双重隐藏层5-13-9-1和5-13-7-1网络架构获得了与实验扭矩和功率值最接近的人工神经网络结果。通过Levenberg-Marquardt学习算法获得最佳预测值。训练和测试集的扭矩值的相关系数(R〜2)分别为0.998331和0.997231,而训练和测试集的功率值的R〜2值分别为0.998331和0.997231。 R〜2值表明,开发的人工神经网络是预测β型斯特林发动机的扭矩和功率值的可接受且强大的建模技术。

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