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Robust human body model injury prediction in simulated side impact crashes

机译:模拟侧面碰撞中的稳健人体模型伤害预测

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This study developed a parametric methodology to robustly predict occupant injuries sustained in real-world crashes using a finite element (FE) human body model (HBM). One hundred and twenty near-side impact motor vehicle crashes were simulated over a range of parameters using a Toyota RAV4 (bullet vehicle), Ford Taurus (struck vehicle) FE models and a validated human body model (HBM) Total HUman Model for Safety (THUMS). Three bullet vehicle crash parameters (speed, location and angle) and two occupant parameters (seat position and age) were varied using a Latin hypercube design of Experiments. Four injury metrics (head injury criterion, half deflection, thoracic trauma index and pelvic force) were used to calculate injury risk. Rib fracture prediction and lung strain metrics were also analysed. As hypothesized, bullet speed had the greatest effect on each injury measure. Injury risk was reduced when bullet location was further from the B-pillar or when the bullet angle was more oblique. Age had strong correlation to rib fractures frequency and lung strain severity. The injuries from a real-world crash were predicted using two different methods by (1) subsampling the injury predictors from the 12 best crush profile matching simulations and (2) using regression models. Both injury prediction methods successfully predicted the case occupant's low risk for pelvic injury, high risk for thoracic injury, rib fractures and high lung strains with tight confidence intervals. This parametric methodology was successfully used to explore crash parameter interactions and to robustly predict real-world injuries.
机译:这项研究开发了一种参数化方法,可以使用有限元(FE)人体模型(HBM)可靠地预测在现实世界的碰撞中遭受的乘员伤害。使用Toyota RAV4(子弹头车),Ford Taurus(撞车)FE模型和经过验证的人体模型(HBM)整体人类安全模型( THUMS)。使用拉丁超立方体实验设计,可以改变三个子弹车的碰撞参数(速度,位置和角度)和两个乘员参数(座椅位置和年龄)。四个伤害指标(头部伤害标准,半挠度,胸部创伤指数和骨盆力量)用于计算伤害风险。肋骨骨折预测和肺应变指标也进行了分析。如假设的那样,子弹速度对每种伤害度量的影响最大。当子弹的位置距离B柱较远或子弹的角度更倾斜时,可以降低受伤风险。年龄与肋骨骨折的发生频率和肺部劳损严重程度密切相关。使用两种不同的方法,通过以下两种方法来预测实际碰撞的伤害:(1)从12个最佳挤压轮廓匹配模拟中对伤害预测因子进行二次采样,以及(2)使用回归模型。两种伤害预测方法均成功地预测了病例乘员的骨盆伤害风险低,胸外伤风险高,肋骨骨折以及高置信区间的高肺张力。这种参数化方法已成功用于探索碰撞参数之间的相互作用并可靠地预测实际伤害。

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