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Design of neural network based intelligent computing for neumerical treatment of unsteady 3D flow of Eyring-Powell magneto-nanofluidic model

机译:基于神经网络基于神经网络的智能计算的无限3D流动磁纳米流体模型的数值治疗

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In the presented study, a novel application of intelligent numerical computing solver based on neural networks backpropagated with the Levenberg-Marquard scheme (NN-BLMS) is presented to interpret the chemical reactions and activation energy in unsteady 3D flow of Eyring-Powell magneto-nanofluidic system for convective heat and mass flux scenarios. The original nonlinear coupled PDEs representing the Eyring-Powell magneto-nanofluidic model (EPMNM) is transformed to an equivalent nonlinear ODEs system by exploiting similarity variables. A dataset for the proposed NN-BLMS is generated for different scenarios of EPMNM by variation of radiation, temperature ratio parameter, heat generation, Brownian motion and thermophoresis parameters by using Adam numerical method. The training, testing, and validation processes of NN-BLMS are performed to determine the approximate solution of EPMNM for different cases and comparison with reference results to verify the correctness of the proposed NN-BLMS. The performance of the proposed NN-BLMS to effectively solve the EPMNM is endorsed through mean squared error, histogram studies and regression analysis. The close matching of the proposed and reference results based on error analysis form level 10?05to 10-07validates the correctness of the proposed methodology.
机译:在本研究中,提出了一种基于用Levenberg-Marquard方案(NN-BLMS)反向的神经网络的智能数值计算求解器的新颖应用,以解释Outse-Powell磁纳米流体的不稳定3D流中的化学反应和激活能量对流热和质量磁通方案的系统。代表眼镜膨胀磁纳米流体模型(EPMNM)的原始非线性耦合PDE通过利用相似变量转换为等同的非线性ODES系统。通过使用ADAM数值方法,通过辐射,温度比参数,发热,棕色运动和热度参数的变化来为所提出的NN-BLMS的数据集进行不同的EPMNM场景。进行NN-BLMS的训练,测试和验证过程,以确定EPMNM对不同情况的近似解,以及与参考结果进行比较,以验证所提出的NN-BLM的正确性。所提出的NN-BLMS的性能有效地解决EPMNM通过平均平均误差,直方图研究和回归分析来认可。基于误差分析表格10?05至10-07Validates,所提出的和参考结果的密切匹配,提出的方法的正确性。

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