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全身有限元模型与 PMHS 试验的客观评价方法比较评估。

An evaluation of objective rating methods for full-body finite element model comparison to PMHS tests.

机构信息

Wake Forest University School of Medicine, Winston-Salem, NC 27101, USA.

出版信息

Traffic Inj Prev. 2013;14 Suppl:S87-94. doi: 10.1080/15389588.2013.802777.

Abstract

OBJECTIVE

Objective evaluation methods of time history signals are used to quantify how well simulated human body responses match experimental data. As the use of simulations grows in the field of biomechanics, there is a need to establish standard approaches for comparisons. There are 2 aims of this study. The first is to apply 3 objective evaluation methods found in the literature to a set of data from a human body finite element model. The second is to compare the results of each method, examining how they are correlated to each other and the relative strengths and weaknesses of the algorithms.

METHODS

In this study, the methods proposed by Sprague and Geers (magnitude and phase error, SGM and SGP), Rhule et al. (cumulative standard deviation, CSD), and Gehre et al. (CORrelation and Analysis, or CORA, size, phase, shape, corridor) were compared. A 40 kph frontal sled test presented by Shaw et al. was simulated using the Global Human Body Models Consortium midsized male full-body finite element model (v. 3.5). Mean and standard deviation experimental data (n = 5) from Shaw et al. were used as the benchmark. Simulated data were output from the model at the appropriate anatomical locations for kinematic comparison. Force data were output at the seat belts, seat pan, knee, and foot restraints.

RESULTS

Objective comparisons from 53 time history data channels were compared to the experimental results. To compare the different methods, all objective comparison metrics were cross-plotted and linear regressions were calculated. The following ratings were found to be statistically significantly correlated (P < .01): SGM and CORrelation and Analysis (CORA) size, R (2) = 0.73; SGP and CORA shape, R (2) = 0.82; and CSD and CORA's corridor factor, R (2) = 0.59. Relative strengths of the correlated ratings were then investigated. For example, though correlated to CORA size, SGM carries a sign to indicate whether the simulated response is greater than or less than the benchmark signal. A further analysis of the advantages and drawbacks of each method is discussed.

CONCLUSIONS

The results demonstrate that a single metric is insufficient to provide a complete assessment of how well the simulated results match the experiments. The CORA method provided the most comprehensive evaluation of the signal. Regardless of the method selected, one primary recommendation of this work is that for any comparison, the results should be reported to provide separate assessments of a signal's match to experimental variance, magnitude, phase, and shape. Future work planned includes implementing any forthcoming International Organization for Standardization standards for objective evaluations. Supplemental materials are available for this article. Go to the publisher's online edition of Traffic Injury Prevention to view the supplemental file.

摘要

目的

时间历史信号的客观评价方法用于量化模拟人体反应与实验数据的吻合程度。随着生物力学领域对模拟技术的应用不断增加,需要建立用于比较的标准方法。本研究有两个目的。第一个目的是将文献中发现的 3 种客观评价方法应用于人体有限元模型的一组数据。第二个目的是比较每种方法的结果,研究它们之间的相关性以及算法的优缺点。

方法

在本研究中,比较了 Sprague 和 Geers 提出的方法(幅度和相位误差,SGM 和 SGP)、Rhule 等人提出的方法(累积标准偏差,CSD)和 Gehre 等人提出的方法(相关性和分析,或 CORA,大小、相位、形状、通道)。使用全球人体模型联盟中体型中等的男性全身有限元模型(v.3.5)模拟 Shaw 等人提出的 40km/h 正面碰撞试验。Shaw 等人的实验数据(n=5)的均值和标准差用于作为基准。在适当的解剖位置输出模型的模拟数据以进行运动学比较。在座椅安全带、座椅盘、膝盖和脚部固定装置处输出力数据。

结果

将 53 个时间历史数据通道的客观比较与实验结果进行比较。为了比较不同的方法,将所有客观比较指标进行交叉绘图,并计算线性回归。发现以下评级具有统计学显著相关性(P<.01):SGM 和 CORA 大小,R²=0.73;SGP 和 CORA 形状,R²=0.82;CSD 和 CORA 的通道因子,R²=0.59。然后研究了相关评级的相对优势。例如,虽然与 CORA 大小相关,但 SGM 带有一个符号,表示模拟响应是否大于或小于基准信号。进一步分析了每种方法的优缺点。

结论

结果表明,单个指标不足以全面评估模拟结果与实验的吻合程度。CORA 方法提供了对信号的最全面评估。无论选择哪种方法,本工作的主要建议之一是,对于任何比较,都应报告结果,以便对信号与实验方差、幅度、相位和形状的匹配情况进行单独评估。计划开展的进一步工作包括实施任何即将出台的国际标准化组织客观评估标准。本文提供了补充材料。请访问交通伤害预防杂志的出版商在线版本查看补充文件。

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