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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Unsteady aerodynamic modeling based on fuzzy scalar radial basis function neural networks
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Unsteady aerodynamic modeling based on fuzzy scalar radial basis function neural networks

机译:基于模糊标量径向基函数神经网络的非定常空气动力学建模

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In this paper, a fuzzy scalar radial basis function neural network is proposed, in order to overcome the limitation of traditional aerodynamic reduced-order models having difficulty in adapting to input variables with different orders of magnitude. This network is a combination of fuzzy rules and standard radial basis function neural network, and all the basis functions are defined as scalar basis functions. The use of scalar basis function will increase the flexibility of the model, thus enhancing the generalization capability on complex dynamic behaviors. Particle swarm optimization algorithm is used to find the optimal width of the scalar basis function. The constructed reduced-order models are used to model the unsteady aerodynamics of an airfoil in transonic flow. Results indicate that the proposed reduced-order models can capture the dynamic characteristics of lift coefficients at different reduced frequencies and amplitudes very accurately. Compared with the conventional reduced-order model based on recursive radial basis function neural network, the fuzzy scalar radial basis function neural network shows better generalization capability for different test cases with multiple normalization methods.
机译:本文提出了一种模糊标量径向基函数神经网络,以克服传统的空气动力学降阶模型难以适应不同数量级输入变量的局限性。该网络是模糊规则和标准径向基函数神经网络的组合,所有基函数都定义为标量基函数。标量基函数的使用将增加模型的灵活性,从而增强对复杂动态行为的泛化能力。粒子群优化算法用于找到标量基函数的最佳宽度。所构建的降阶模型用于对跨音速流中的机翼的非定常空气动力学建模。结果表明,所提出的降阶模型可以非常精确地捕获升力系数在不同降低频率和幅度下的动态特性。与基于递归径向基函数神经网络的常规降阶模型相比,模糊标量径向基函数神经网络对多种测试案例具有多种归一化方法,具有更好的泛化能力。

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