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Development of a Human Body Finite Element Model with Multiple Muscles and their Controller for Estimating Occupant Motions and Impact Responses in Frontal Crash Situations

机译:建立多肌肉人体有限元模型及其控制器,用于估计正面碰撞情况下的乘员运动和撞击响应

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A few reports suggest differences in injury outcomes between cadaver tests and real-world accidents under almost similar conditions. This study hypothesized that muscle activity could primarily cause the differences, and then developed a human body finite element (FE) model with individual muscles. Each muscle was modeled as a hybrid model of bar elements with active properties and solid elements with passive properties. The model without muscle activation was firstly validated against five series of cadaver test data on impact responses in the anterior-posterior direction. The model with muscle activation levels estimated based on electromyography (EMG) data was secondly validated against four series of volunteer test data on bracing effects for stiffness and thickness of an upper arm muscle, and braced driver's responses under a static environment and a brake deceleration. A muscle controller using reinforcement learning (RL), which is a mathematical model of learning process in the basal ganglia associated with human postural controls, were newly proposed to estimate muscle activity in various occupant conditions including inattentive and attentive conditions. Control of individual muscles predicted by RL reproduced more human like head-neck motions than conventional control of two groups of agonist and antagonist muscles. The model and the controller demonstrated that head-neck motions of an occupant under an impact deceleration of frontal crash were different in between a bracing condition with maximal braking force and an occupant condition predicted by RL. The model and the controller have the potential to investigate muscular effects in various occupant conditions during frontal crashes.
机译:一些报告表明,在几乎相似的条件下,尸体测试与实际事故之间的伤害结果有所不同。这项研究假设肌肉活动可能主要是造成差异的原因,然后开发出具有单个肌肉的人体有限元(FE)模型。将每个肌肉建模为具有主动属性的条形元素和具有被动属性的实体元素的混合模型。首先,针对前后方向碰撞反应的五组尸体测试数据验证了没有肌肉激活的模型。其次,针对四组志愿者测试数据验证了具有基于肌电图(EMG)数据的肌肉激活水平的模型,这些数据涉及上臂肌肉僵硬和粗壮的支撑效果,以及在静态环境和刹车减速度下支撑驾驶员的响应。最近提出了一种使用强化学习(RL)的肌肉控制器,该学习器是与人类姿势控制相关的基底神经节学习过程的数学模型,用于估计各种乘员状况(包括注意力不集中和注意力不集中的情况)下的肌肉活动。与常规的两组激动剂和拮抗剂肌肉的控制方法相比,由RL预测的对单个肌肉的控制方法能复制更多的人像头颈部的动作。该模型和控制器表明,在正面碰撞的冲击减速作用下,乘员的头部-颈部运动在最大制动力的支撑状态和RL预测的乘员状态之间是不同的。该模型和控制器具有研究正面碰撞过程中各种乘员状况下的肌肉效应的潜力。

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