基于多保真深度神经网络的船型优化

Hull form optimization based on multi-fidelity deep neural network

  • 摘要:
    目的 为了提高优化效率并获得更好的优化结果,将不同精度数据进行有机融合,利用多保真深度神经网络开展船型优化设计。
    方法 基于多源数据融合和迁移学习思想,构建了一种多保真深度神经网络。通过将大量低保真数据与少量高保真数据融合学习,构建与高保真数据之间的线性项和非线性项,得到高保真近似模型。基于此方法开展针对DTMB 5415船静水阻力的优化设计。分别采用势流和黏流样本点阻力进行评估,势流计算结果作为低保真数据,黏流计算结果作为高保真数据, 构建多保真深度神经网络近似模型。借助遗传算法获得优化解并与只使用单一高保真数据构建的Kriging近似模型的优化结果进行对比。
    结果 基于多保真神经网络方法,DTMB 5415阻力减少了6.73%。基于Kriging模型,DTMB 5415阻力减少了5.59%。
    结论 多保真深度神经网络近似模型可以兼顾效率和精度,可以用于优化求解,且由其得到的优化船型阻力优化效果更为显著。

     

    Abstract:
    Objective  To improve hull optimization design efficiency and obtain better optimization results, different fidelity data is organically integrated and a multi-fidelity deep neural network is applied.
    Methods  A multi-fidelity deep neural network is constructed based on the idea of multi-source data fusion and transfer learning. By fusing a large amount of low-fidelity data with a small amount of high-fidelity data, the linear and nonlinear terms between the high-fidelity data are constructed to obtain a high-fidelity surrogate model. Based on this method, the optimization design of the resistance of a DTMB 5415 ship is carried out. The potential flow and viscous flow are used to evaluate the resistance of the sample points respectively. The potential flow calculation results are used as low-fidelity data, while the viscous flow calculation results are used as high-fidelity data. A multi-fidelity deep neural network surrogate model is then constructed. The optimal solution is obtained by genetic algorithm and compared with the optimal solution of the Kriging model constructed by high-fidelity data.
    Results  Based on the multi-fidelity deep neural network method, the resistance of DTMB 5415 is reduced by 6.73%. Based on the Kriging model, the resistance of DTMB 5415 is reduced by 5.59%.
    Conclusions  The multi-fidelity deep neural network surrogate model can take into account both efficiency and accuracy, which can be used for optimization. The optimized hull form obtained by it has a more significant resistance optimization effect.

     

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