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Evaluation of Vehicle-Based Crash Severity Metrics

机译:基于车辆的碰撞严重性指标评估

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Objective: Vehicle change in velocity (delta-v) is a widely used crash severity metric used to estimate occupant injury risk. Despite its widespread use, delta-v has several limitations. Of most concern, delta-v is a vehicle-based metric which does not consider the crash pulse or the performance of occupant restraints, e.g. seatbelts and airbags. Such criticisms have prompted the search for alternative impact severity metrics based upon vehicle kinematics. The purpose of this study was to assess the ability of the occupant impact velocity (OIV), acceleration severity index (ASI), vehicle pulse index (VPI), and maximum delta-v (delta-v) to predict serious injury in real world crashes.Methods: The study was based on the analysis of event data recorders (EDRs) downloaded from the National Automotive Sampling System / Crashworthiness Data System (NASS-CDS) 2000-2013 cases. All vehicles in the sample were GM passenger cars and light trucks involved in a frontal collision. Rollover crashes were excluded. Vehicles were restricted to single-event crashes that caused an airbag deployment. All EDR data were checked for a successful, completed recording of the event and that the crash pulse was complete. The maximum abbreviated injury scale (MAIS) was used to describe occupant injury outcome. Drivers were categorized into either non-seriously injured group (MAIS2-) or seriously injured group (MAIS3+), based on the severity of any injuries to the thorax, abdomen, and spine. ASI and OIV were calculated according to the Manual for Assessing Safety Hardware. VPI was calculated according to ISO/TR 12353-3, with vehicle-specific parameters determined from U.S. New Car Assessment Program crash tests. Using binary logistic regression, the cumulative probability of injury risk was determined for each metric and assessed for statistical significance, goodness-of-fit, and prediction accuracy.Results: The dataset included 102,744 vehicles. A Wald chi-square test showed each vehicle-based crash severity metric estimate to be a significant predictor in the model (p < 0.05). For the belted drivers, both OIV and VPI were significantly better predictors of serious injury than delta-v (p < 0.05). For the unbelted drivers, there was no statistically significant difference between delta-v, OIV, VPI, and ASI.Conclusions: The broad findings of this study suggest it is feasible to improve injury prediction if we consider adding restraint performance to classic measures, e.g. delta-v. Applications, such as advanced automatic crash notification, should consider the use of different metrics for belted versus unbelted occupants.
机译:目标:车辆速度变化(delta-v)是一种广泛使用的碰撞严重性指标,用于估计乘员受伤的风险。尽管delta-v得到了广泛的应用,但它还是有一些局限性。最受关注的是,delta-v是一种基于车辆的度量标准,不考虑碰撞脉冲或乘员约束的性能,例如安全带和安全气囊。这些批评促使人们根据车辆运动学来寻找替代性影响严重性指标。这项研究的目的是评估乘员撞击速度(OIV),加速度严重性指数(ASI),车辆脉搏指数(VPI)和最大delta-v(delta-v)预测现实世界中严重伤害的能力方法:该研究基于对事件数据记录器(EDR)的分析,该数据记录器是从2000-2013年美国国家汽车采样系统/耐撞性数据系统(NASS-CDS)案例中下载的。样本中所有车辆均为涉及正面碰撞的通用乘用车和轻型卡车。滚动崩溃不包括在内。车辆仅限于导致安全气囊展开的单次碰撞。检查所有EDR数据是否成功,完整地记录了事件,并且碰撞脉冲已完成。最大缩写伤害量表(MAIS)用于描述乘员伤害结果。根据对胸部,腹部和脊椎的任何伤害的严重程度,将驾驶员分为非严重伤害组(MAIS2-)或严重伤害组(MAIS3 +)。 ASI和OIV是根据《安全硬件评估手册》计算的。 VPI是根据ISO / TR 12353-3计算的,车辆特定参数是根据美国新车评估计划的碰撞测试确定的。使用二元logistic回归分析确定每个指标的受伤风险累积概率,并评估其统计显着性,拟合优度和预测准确性。结果:数据集包括102,744辆车。 Wald卡方检验显示,每个基于车辆的碰撞严重性指标估算值都是模型中的重要预测指标(p <0.05)。对于安全带驾驶员,OIV和VPI均比delta-v更好地指示严重伤害(p <0.05)。对于未系安全带的驾驶员,delta-v,OIV,VPI和ASI之间没有统计学上的显着差异。结论:这项研究的广泛发现表明,如果我们考虑将约束性能添加到经典措施中,例如对三角洲诸如高级自动碰撞通知之类的应用程序应考虑对有安全带和无安全带的乘员使用不同的度量标准。

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