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首页> 外文期刊>The Open Renewable Energy Journal >An Artificial Neural Network Based Methodology for the Prediction ofPower & Torque Coefficients of a Two Bladed Airfoil Shaped H-Rotor
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An Artificial Neural Network Based Methodology for the Prediction ofPower & Torque Coefficients of a Two Bladed Airfoil Shaped H-Rotor

机译:基于人工神经网络的方法,用于预测两叶翼型H转子的功率和扭矩系数

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An artificial neural network based model can effectively predict any functional relationship. In this paper, a neural network model is used to predict power coefficient and torque coefficient of a two bladed airfoil shaped H-rotor as function of different input parameters. The important input parameters considered are blade tip speed, free stream velocity with blockage and rotor inlet velocity. The values of all the process parameters are taken from the experimental work done on two-bladed airfoil shaped H-rotor. The rotor was earlier designed, fabricated, and tested in a subsonic wind tunnel available in the department. Since neural networks are good at interpolation, once the model is properly trained & tested, it has successfully interpolated the values of power and torque coefficients within an acceptable accuracy. Initially, the optimum no. of neurons in the hidden layer has been found out using hit and trial method by training the network using back propagation learning algorithm. The effect of increasing the size of training and testing data set is studied as well. It is found that only a single neuron has been able to predict both the coefficients successfully. A strategy has been developed to reduce both the training and testing errors. The root mean squared functional errors (rms error) of testing and training for power coefficient prediction are 0.0357 and 0.0387 respectively, while the corresponding values for torque coefficients are 0.0283 and 0.0449 respectively. The proposed methodology is fast and accurate. And testing error being less than the training error, makes the proposed algorithm a superior one.
机译:基于人工神经网络的模型可以有效地预测任何功能关系。在本文中,使用神经网络模型来预测两叶片翼型H转子的功率系数和扭矩系数作为不同输入参数的函数。所考虑的重要输入参数是叶尖速度,带阻塞的自由流速度和转子入口速度。所有工艺参数的值均取自在两叶翼型H型转子上进行的实验工作。转子是在部门可提供的亚音速风洞中进行较早的设计,制造和测试的。由于神经网络擅长插值,因此,一旦对模型进行了适当的训练和测试,就可以成功地以可接受的精度对功率和扭矩系数的值进行插值。最初,最佳编号通过使用反向传播学习算法训练网络,使用命中和尝试方法发现了隐藏层中的神经元。还研究了增加训练和测试数据集大小的效果。发现只有单个神经元已经能够成功预测两个系数。已经制定了减少培训和测试错误的策略。功率系数预测的测试和训练的均方根函数误差(均方根误差)分别为0.0357和0.0387,而扭矩系数的相应值分别为0.0283和0.0449。所提出的方法是快速且准确的。并且测试误差小于训练误差,使该算法成为一种优越的算法。

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