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Determining the Effects of Single Input Layer as Angular Velocity of Rotor Blade on Blade's Frequency Parameters by Regression Based Neural Network Method

机译:基于回归基于基于神经网络方法的转子频率参数的角速度确定单个输入层作为角速度的影响

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The aim of this paper is to demonstrate the use of Regression Based Neural Network (RBNN) method to study the problem of the natural frequencies of the rotor blade for micro unmanned helicopter [3]. The training of the traditional ANN (Artificial Neural Network) model and proposed RBNN model has been implemented in the MATLAB environment using NNT (Neural Network Tools) built-in functions. The graphs for angular velocity (Omega) of the micro-unmanned helicopter are plotted for estimation of the natural frequencies (f1, f2, f3) of transverse vibrations. The results obtained in this research show that the RBNN model, when trained, can give the vibration frequency parameters directly without going through traditional and lengthy numerical solutions procedures. Succeeding this, the numerical results, when plotted, show that with the increase in Omega, there is increase in lagging motion frequencies. Additionally, it is found that the increase in the lower mode natural frequencies is smaller than that of the higher modes. This finding is in agreement with the results reported in earlier research [3],[4],[5] carried out by employing Rayleigh-Ritz and FEM respectively.
机译:本文的目的是展示使用基于回归的神经网络(RBNN)方法来研究微型直升机转子叶片的固有频率问题[3]。使用NNT(神经网络工具)内置功能在Matlab环境中实现了传统的ANN(人工神经网络)模型和提出的RBNN模型的培训。为微无人直升机的角速度(欧米茄)的曲线被绘制为横向振动的固有频率(F1,F2,F3)的估计。本研究中获得的结果表明,RBNN模型在培训时,可以直接给振动频率参数而不经过传统和冗长的数值解决方案程序。成功,数值结果,当绘制时,显示随着欧米茄的增加,滞后运动频率增加。另外,发现较低模式的增加的增加小于更高模式的增加。这一发现与早期研究报告的结果一致,通过雇用Rayleigh-ritz和Fem来分别进行的早期研究[3],[4],[5]。

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