基于深度学习的水下压力容器有限元模拟

H. Vardhan, J. Sztipanovits
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引用次数: 9

摘要

在自主水下航行器(AUV)的设计过程中,压力容器具有至关重要的作用。压力容器中装有干燥的电子设备、电源和其他传感器,不能被水淹。传统的压力容器设计方法是运行多次基于有限元分析(FEA)的仿真和优化设计,以找到最适合的满足要求的设计。对于任何优化过程来说,运行这些FEAs在计算上都是非常昂贵的,即使运行数百次评估也变得非常困难。在这种情况下,更好的方法是代理设计,其目标是用一些基于学习的回归量取代基于有限元的预测。一旦针对一类问题训练了代理,那么学习到的响应面就可以用于分析应力效应,而无需对该类问题进行有限元分析。为一类问题创建代理的挑战在于数据生成。由于该过程计算量大,不可能对设计空间进行密集采样,并且在稀疏数据集上学习响应面变得困难。在实验过程中,我们观察到基于深度学习的代理在这种稀疏数据上优于其他回归模型。在目前的工作中,我们正在利用基于深度学习的模型来取代昂贵的基于有限元分析的仿真过程。通过创建代理,我们加快了对其他设计的预测,比直接有限元分析快得多。我们还将基于dl的代理与其他经典的基于机器学习(ML)的回归模型(随机森林和梯度增强回归器)进行了比较。我们观察到,在稀疏数据上,基于dl的代理比其他回归模型执行得好得多。
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Deep Learning based FEA Surrogate for Sub-Sea Pressure Vessel
During the design process of an autonomous underwater vehicle (AUV), the pressure vessel has a critical role. The pressure vessel contains dry electronics, power sources, and other sensors that cannot be flooded. A traditional design approach for a pressure vessel design involves running multiple Finite Element Analysis (FEA) based simulations and optimizing the design to find the best suitable design which meets the requirement. Running these FEAs are computationally very costly for any optimization process and it becomes difficult to run even hundreds of evaluation. In such a case, a better approach is the surrogate design with the goal of replacing FEA-based prediction with some learning-based regressor. Once the surrogate is trained for a class of problem, then the learned response surface can be used to analyze the stress effect without running the FEA for that class of problem. The challenge of creating a surrogate for a class of problems is data generation. Since the process is computationally costly, it is not possible to densely sample the design space and the learning response surface on sparse data set becomes difficult. During experimentation, we observed that a Deep Learning-based surrogate outperforms other regression models on such sparse data. In the present work, we are utilizing the Deep Learning-based model to replace the costly finite element analysis-based simulation process. By creating the surrogate, we speed up the prediction on the other design much faster than direct Finite element Analysis. We also compared our DL-based surrogate with other classical Machine Learning (ML) based regression models (random forest and Gradient Boost regressor). We observed on the sparser data, the DL-based surrogate performs much better than other regression models.
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