Modeling of Vehicle Mobility in Shallow Water with Data-Driven Hydrodynamics Model

Hiroki Yamashita, J. E. Martin, Nathan Tison, Arkady Grunin, P. Jayakumar, Hiroyuki Sugiyama
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Abstract

In this study, a data-driven hydrodynamics model is proposed to enable quick prediction of vehicle mobility in shallow water, considering the effect of tire-soil interaction. To this end, a high-fidelity coupled vehicle-water interaction model using computational fluid dynamics (CFD) and multibody dynamics (MBD) solvers is developed to characterize the hydrodynamic loads exerted on a vehicle operated in shallow water, and it is used to generate training data for the data-driven hydrodynamics model. To account for the history-dependent hydrodynamic behavior, a Long Short-Term Memory (LSTM) neural network is introduced to incorporate effects of the historical variation of vehicle motion states as the input to the data-driven model, and it is used to predict hydrodynamic loads online exerted on vehicle components in the MBD mobility simulation. The impacts of hydrodynamic loads on the vehicle mobility capability in shallow water are examined for different water depths and incoming flow speeds using the high-fidelity coupled CFD-MBD model. Furthermore, it is demonstrated that the vehicle-water interaction behavior in scenarios not considered in the training data can be predicted using the proposed LSTM data-driven hydrodynamics model. However, the use of non-LSTM layers, which do not account for the sequential variation of vehicle motion states as the input, leads to an inaccurate prediction. A substantial computational speedup is achieved with the proposed LSTM-MBD vehicle-water interaction model while ensuring accuracy, compared to the computationally expensive high-fidelity coupled CFD-MBD model.
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利用数据驱动的水动力学模型模拟车辆在浅水中的流动性
在本研究中,考虑到轮胎与土壤相互作用的影响,提出了一种数据驱动的流体动力学模型,以便快速预测车辆在浅水中的移动性。为此,利用计算流体动力学(CFD)和多体动力学(MBD)求解器开发了一个高保真车水耦合相互作用模型,用于描述在浅水中行驶的车辆所承受的水动力载荷,并为数据驱动的水动力模型生成训练数据。为了考虑与历史相关的流体动力学行为,引入了长短期记忆(LSTM)神经网络,将车辆运动状态的历史变化影响作为数据驱动模型的输入,并在 MBD 机动性仿真中用于在线预测施加在车辆部件上的流体动力学载荷。利用高保真 CFD-MBD 耦合模型,研究了不同水深和流入流速下水动力载荷对车辆在浅水区移动能力的影响。此外,研究还证明,利用所提出的 LSTM 数据驱动流体力学模型,可以预测训练数据中未考虑的情景下的车水交互行为。然而,使用非 LSTM 层(不考虑车辆运动状态的连续变化作为输入)会导致预测不准确。与计算成本高昂的高保真 CFD-MBD 耦合模型相比,所提出的 LSTM-MBD 车水相互作用模型在确保准确性的同时,大大加快了计算速度。
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