José E Valenzuela Del Río, Richard Lancashire, Karan Chatrath, Peter Ritmeijer, Elena Arvanitis, Lucia Mirabella
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引用次数: 0
Abstract
Predicting airbag deployment geometries is an important task for airbag and vehicle designers to meet safety standards based on biomechanical injury risk functions. This prediction is also an extraordinarily complex problem given the number of disciplines and their interactions. State-of-the-art airbag deployment geometry simulations (including time history) entail large, computationally expensive numerical methods such as finite element analysis (FEA) and computational fluid dynamics (CFD), among others. This complexity results in exceptionally large simulation times, making thorough exploration of the design space prohibitive. This paper proposes new parametric simulation models which drastically accelerate airbag deployment geometry predictions while maintaining the accuracy of the airbag deployment geometry at reasonable levels; these models, called herein machine learning (ML)-accelerated models, blend physical system modes with data-driven techniques to accomplish fast predictions within a design space defined by airbag and impactor parameters. These ML-accelerated models are evaluated with virtual test cases of increasing complexity: from airbag deployments against a locked deformable obstacle to airbag deployments against free rigid obstacles; the dimension of the tested design spaces is up to six variables. ML training times are documented for completeness; thus, airbag design explorers or optimization engineers can assess the full budget for ML-accelerated approaches including training. In these test cases, the ML-accelerated simulation models run three orders of magnitude faster than the high-fidelity multi-physics methods, while accuracies are kept within reasonable levels within the design space.
预测安全气囊展开的几何形状是安全气囊和车辆设计人员的一项重要任务,以满足基于生物力学伤害风险函数的安全标准。由于涉及多个学科及其相互作用,这项预测工作也是一个异常复杂的问题。最先进的安全气囊展开几何模拟(包括时间历程)需要采用计算成本高昂的大型数值方法,如有限元分析 (FEA) 和计算流体动力学 (CFD) 等。这种复杂性导致仿真时间特别长,使彻底探索设计空间变得困难重重。本文提出了新的参数仿真模型,可大幅加快安全气囊展开几何形状的预测速度,同时将安全气囊展开几何形状的精度保持在合理水平;这些模型被称为机器学习(ML)加速模型,将物理系统模式与数据驱动技术相结合,在由安全气囊和撞击器参数定义的设计空间内完成快速预测。这些机器学习加速模型通过复杂程度不断增加的虚拟测试案例进行评估:从针对锁定可变形障碍物的安全气囊部署,到针对自由刚性障碍物的安全气囊部署;测试设计空间的维度多达六个变量。完整记录了 ML 训练时间;因此,安全气囊设计探索者或优化工程师可以评估包括训练在内的 ML 加速方法的全部预算。在这些测试案例中,ML 加速仿真模型的运行速度比高保真多物理场方法快三个数量级,同时精度在设计空间内保持在合理水平。