The Crash Model*

Author(s):  
Kenneth Eriksson ◽  
Donald Estep ◽  
Claes Johnson
Keyword(s):  
IEEE Access ◽  
2017 ◽  
Vol 5 ◽  
pp. 3131-3138 ◽  
Author(s):  
Bernard B. Munyazikwiye ◽  
Hamid Reza Karimi ◽  
Kjell G. Robbersmyr

2020 ◽  
Vol 10 (18) ◽  
pp. 6212
Author(s):  
Piotr Aleksandrowicz

The analyses performed by the experts are crucial for the settlement of court disputes, and they have legal consequences for the parties to legal proceedings. The reliability of the simulation result is crucial. First, in article, an impact simulation was performed with the use of the program default data. Next, the impact parameters were identified from a crash test, and a simulation was presented. Due to the difficulties in obtaining the data identified, the experts usually take advantage of simplifications using only default data provided by the simulation program. This article includes the original conclusions on specific reasons of simplified collision modeling in Multi Body Systems (MBS) programs and provides specific directions of development of the V-SIM4 program used in the study to enhance the models applied. This manuscript indicates a direction for crash model development in MBS programs to consider a varied 3D body space zones stiffness related to the structure of the car body and the internal car elements instead of modeling the car body as a solid with an average stiffness. Such an approach would provide an alternative to Finite Element Method (FEM) convention modeling.


2011 ◽  
Vol 66-68 ◽  
pp. 1167-1172 ◽  
Author(s):  
Zhuo Jun Xie ◽  
Ping Xu ◽  
Yu Qi Luo

As it is tough for the current energy absorb devices of urban vehicles to meet the crashworthiness requirements in the collision scenario of 25km/h, a methodology to improve the general crashworthiness is presented. A multi-criteria optimization, with the deformations and accelerations of all cars as the design functions and the force characteristics of end structures of cars as design variables, is defined and the Pareto Fonts are obtained. Then defining energy absorbed as design function, a single criteria optimization is made and the specific goal is achieved. No explicit relationship could be found between the design variables and the design functions, so a crash model of a train with velocity of 25km/h colliding to another train stopped is built and the genetic algorithm is chosen to solve the optimization problems. The results indicate that the crashworthiness performance of the trains is significantly improved and the crashworthiness requirements could be reached finally.


2021 ◽  
Vol 11 (23) ◽  
pp. 11364
Author(s):  
Monica Meocci ◽  
Valentina Branzi ◽  
Giulia Martini ◽  
Roberto Arrighi ◽  
Irene Petrizzo

Every year in Italy, there are about 20,000 road accidents involving pedestrians, with a significant number of injuries and deaths. Out of these, about 30% occur at pedestrian crossings, where pedestrians should be protected the most. Here, we propose a new accident prediction model to improve pedestrian safety assessments that allows us to accurately identify the sites with the largest potential safety improvements and define the best treatments to be applied. The accident prediction model was developed using the ISTAT dataset, including information about the fatal and injurious crashes that occurred in Italy in a 5-year period. The model allowed us to estimate the risk level of a road section through a machine-learning approach. Gradient Boosting seems to be an appropriate tool to fit classification models for its flexibility that allows us to capture non-linear relationships that would be difficult to detect via a classical approach. The results show the ability of the model to perform an accurate analysis of the sites included in the dataset. The locations analyzed have been classified based on the potential risk in the following three classes: High, medium, and low. The proposed model represents a solid and reliable tool for practitioners to perform accident analysis with pedestrian involvement.


Author(s):  
Jean-Yves Jaskulski ◽  
Mounib Mekhilef

Abstract Currently, in automotive industry, identification of vehicle crash model parameters on test measurements is a key point. This paper outlines an approach based on optimization methods for this problem in the context of side impacts. It presents the problematic of crash model parameter identification. The engineer’s evaluation criteria of correlation are translated into an optimization objective function. Several optimization strategies are applied to identification of side impact crash model parameters. The comportment on our problem of these strategies are characterized, and numerical results show that the method of tabou search provides a good solution.


Author(s):  
R. J. Yang ◽  
C. H. Tho ◽  
C. C. Wu ◽  
D. Johnson ◽  
J. Cheng

Abstract In this paper, numerical crash optimization was performed and studied. Three design optimization approaches: gradient-based, DOE/Penalty/Gradient-based, and DOE/Penalty/Response Surface Method, were employed to solve a front rail crash optimization problem using two single-objective formulations. An in-house explicit code FCRASH was used for solving the nonlinear, transient crash problem. The optimization process was carried out using a commercial software package, iSIGHT from Engineous Software Inc. A front rail crash model was used as the benchmark to demonstrate those approaches. Based on the numerical experiments, a simple, viable, and relatively efficient approach is proposed.


1992 ◽  
Vol 159 (1) ◽  
pp. 57-83 ◽  
Author(s):  
J.P. Mizzi ◽  
L. Jezequel
Keyword(s):  

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