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Crash Safety Design for Lithium-ion Vehicle Battery Module with Machine Learning

机译:基于机器学习的锂离子汽车电池模块碰撞安全设计

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Lithium-ion battery systems have been used as the main power source for electric vehicles due to their lightweight and high energy density. The impact safety of these battery systems has been a primary issue. In this work, the crashworthiness design of a typical vehicle battery module is implemented through numerical (finite element) simulations integrated with machine learning algorithms (decision trees). The module with multiple layered porous cells is modeled with a simplified, homogeneous material law, and subjects to the impact of a cylindrical indenter. The main protective component on the module - cover plate is designed as an energy absorbing sandwich structure with a core of cellular solids. Large scale simulations are conducted with various design variable values for the sandwich structure, and the results form a design (simulation) dataset. Based on the dataset, machine learning is applied to the sandwich cover plate design to: (1) correlate the design variables to the response; (2) investigate the complex inter-relationship between design variables; and (3) derive decision-making rules to achieve the designs with highest energy absorbing capability.
机译:被用作锂离子电池系统主要为电动汽车由于电源他们的轻量级和高的能量密度。影响这些电池系统的安全主要的问题。典型的汽车电池模块的设计通过数值(有限元)实现模拟结合机器学习算法(决策树)。多个分层多孔细胞是建模简化,均质材料法律,受试者圆柱压头的影响。主要模块——保护组件盖板设计作为能量吸收夹层结构与细胞的核心固体。各种设计变量值三明治结构,结果形成一个设计(模拟)数据集。机器学习应用于三明治板设计:(1)关联设计变量的响应;设计之间复杂的战略位置图变量;实现能量最高的设计吸收能力。

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