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Reliability-based robust assessment for multiobjective optimization design of improving occupant restraint system performance

机译:基于可靠性的鲁棒评估,用于改善乘员约束系统性能的多目标优化设计

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摘要

Optimal performance of vehicle occupant restraint system (ORS) requires an accurate assessment of occupant injury values including head, neck and chest responses, etc. To provide a feasible framework for incorporating occupant injury characteristics into the ORS design schemes, this paper presents a reliability-based robust approach for the development of the ORS. The uncertainties of design variables are addressed and the general formulations of reliable and robust design are given in the optimization process. The ORS optimization is a highly nonlinear and large scale problem. In order to save the computational cost, an optimal sampling strategy is applied to generate sample points at the stage of design of experiment (DOE). Further, to efficiently obtain a robust approximation, the support vector regression (SVR) is suggested to construct the surrogate model in the vehicle ORS design process. The multiobjective particle swarm optimization (MPSO) algorithm is used for obtaining the Pareto optimal set with emphasis on resolving conflicting requirements from some of the objectives and the Monte Carlo simulation (MCS) method is applied to perform the reliability and robustness analysis. The differences of three different Pareto fronts of the deterministic, reliable and robust multiobjective optimization designs are compared and analyzed in this study. Finally, the reliability-based robust optimization result is verified by using sled system test. The result shows that the proposed reliability-based robust optimization design is efficient in solving ORS design optimization problems.
机译:车辆乘员约束系统(ORS)的最佳性能需要准确评估乘员伤害值,包括头部,颈部和胸部的反应等。为将乘员伤害特性纳入ORS设计方案提供可行的框架,本文提出了一种可靠性-基于强大的方法来开发ORS。解决了设计变量的不确定性,并在优化过程中给出了可靠而可靠的设计的一般公式。 ORS优化是一个高度非线性的大规模问题。为了节省计算成本,在实验设计(DOE)阶段采用了最佳采样策略来生成采样点。此外,为了有效地获得鲁棒近似,建议在车辆ORS设计过程中使用支持向量回归(SVR)来构建替代模型。多目标粒子群优化算法(MPSO)用于获得帕累托最优集,重点是从某些目标中解决冲突需求,并采用蒙特卡罗模拟(MCS)方法进行可靠性和鲁棒性分析。在本研究中,对确定性,可靠性和鲁棒性多目标优化设计的三个不同Pareto前沿的差异进行了比较和分析。最后,通过雪橇系统测试验证了基于可靠性的鲁棒优化结果。结果表明,所提出的基于可靠性的鲁棒优化设计能够有效解决ORS设计优化问题。

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