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Optimization of muscle activation schemes in a finite element neck model simulating volunteer frontal impact scenarios

机译:在有限元颈模型中肌肉激活方案的优化模拟志愿者正面影响场景

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Neck muscle activation is increasingly important for accurate prediction of occupant response in automotive impact scenarios and occupant excursion resulting from active safety systems such as autonomous emergency braking. Muscle activation and optimization in frontal impact scenarios using computational Human Body Models have not been investigated over the broad range of accelerations relevant to these events. This study optimized the muscle activation of a contemporary finite element model of the human head and neck for human volunteer experiments over a range of frontal impact severities (2 g to 15 g). The neck muscles were grouped as flexors and extensors, and optimization was undertaken for each group based on muscle activation level and activation time. The boundaries for optimization were defined using data from the literature and a preliminary parametric study. A linear polynomial method was used to optimize the model head kinematics to the volunteer experiments for each impact severity. The optimized models predicted muscle activation to increase with higher impact severities, and improved the average cross-correlation by 35% (0.561-0.755) relative to the Maximum Muscle Activation (MMA) scheme in the original model. Importantly, a newly proposed Co-contraction Muscle Activation (CMA) scheme for maintaining the head in a neutral posture provided a 23% on average improvement in correlation compared to the MMA scheme. In conclusion, this study identified a new scheme to obtain more accurate response kinematics across multiple impact severities in computational Human Body Models as well as contributing to the understanding of muscle influence during frontal impact scenarios. (C) 2020 Elsevier Ltd. All rights reserved.
机译:颈部肌肉激活对于准确预测汽车影响情景和乘员途径的准确预测,主动安全系统如自主应急制动所产生的汽车影响方案和乘员游船。在与这些事件相关的广泛的加速度下,肌肉激活和使用计算人体模型的额外影响场景的优化。本研究优化了人体头部和颈部的现代有限元模型的肌肉激活,用于人类志愿者实验在一系列正面影响严重程度(2g至15g)范围内。将颈部肌肉分组为屈肌和伸肌,基于肌肉激活水平和激活时间对每组进行优化。使用来自文献和初步参数研究的数据来定义优化的边界。使用线性多项式方法将模型头运动学优化到每次冲击严重程度的志愿者实验。优化的模型预测肌肉激活以增加较高的碰撞严重程度,并在原始模型中的最大肌肉激活(MMA)方案中提高了35%(0.561-0.755)的平均交叉相关。重要的是,与MMA方案相比,用于保持中性姿势的新提出的用于维持头部的共收缩肌肉激活(CMA)方案,用于平均相关性的平均相关性。总之,本研究确定了一种新的方案,以获得计算人体模型中多次影响狭窄性的更准确的响应运动学,以及在正面影响方案期间对肌肉影响的理解有助于了解肌肉影响。 (c)2020 elestvier有限公司保留所有权利。

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