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A Semi-Automated Approach to Real World Motor Vehicle Crash Reconstruction Using a Generic Simplified Vehicle Buck Model

机译:使用通用简化的车辆降压模型进行半自动方法对现实世界机动车碰撞重建

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Computational finite element (FE) modeling of real world motor vehicle crashes (MVCs) is valuable for analyzing crash-induced injury patterns and mechanisms. Due to unavailability of detailed modern FE vehicle models, a simplified vehicle model (SVM) based on laser scans of fourteen modern vehicle interiors was used. A crash reconstruction algorithm was developed to semi-automatically tune the properties of the SVM to a particular vehicle make and model, and subsequently reconstruct a real world MVC using the tuned SVM. The required algorithm inputs are anthropomorphic test device position data, deceleration crash pulses from a specific New Car Assessment Program (NCAP) crash test, and vehicle interior property ranges. A series of automated geometric transformations and five LSDyna positioning simulations were performed to match the FE Hybrid III’s (HIII) position within the SVM to reported data. Once positioned, a baseline simulation using the crash test pulse was created. A Latin hypercube sample space (9 variables) of 120 simulations was created to vary occupant safety and restraint properties. Sprague and Geers magnitude and phase error factors were used to identify an optimal set of restraint parameters to reconstruct the HIII kinematic and kinetic responses. Using the tuned SVM, event data recorder pulses from real world crashes, and the Total HUman Model for Safety, LS-Dyna simulations were used to reconstruct the occupant-vehicle interactions. In a sample case, stress, strain, and dynamic loads were evaluated to predict rib, sternum, and vertebral injuries sustained by the occupant in the crash.
机译:现实世界的机动车事故(MVCS)的模拟计算有限元(FE)是一种用于分析碰撞引起的伤害模式和机制的价值。由于现代的详细FE车型不可用,使用基于14种现代汽车内饰激光扫描简化车辆模型(SVM)。崩溃重建算法被开发用于半自动地调SVM的属性,以一个特定的车辆制造商和型号,并随后使用所调谐的SVM重建真实世界MVC。所需的算法输入是拟人化的测试装置的位置数据,从一个特定的新车评估计划(NCAP)碰撞测试,和车辆内部属性范围减速碰撞脉冲。进行一系列的自动几何变换和五个LSDYNA定位模拟匹配SVM到报告的数据中的FE混合III的(HIII)位置。一旦被定位,利用碰撞测试脉冲的基线仿真已创建。的120个模拟一个拉丁超立方样品空间(9个变量)已创建以改变乘员的安全和约束性质。斯普拉格和格尔斯幅度和相位误差因素被用来确定的约束参数的最优集合重构HIII运动学和动力学反应。使用调整SVM,事件数据记录脉冲来自现实世界的崩溃,以及人类总以策安全,LS-DYNA模拟被用于重建乘员车辆的相互作用。在样品的情况下,应力,应变,和动态载荷进行评价预测肋,胸骨和脊椎损伤持续通过在碰撞乘员。

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