CrashNet: an encoder–decoder architecture to predict crash test outcomes

Author:

Belaid Mohamed Karim,Rabus Maximilian,Krestel RalfORCID

Abstract

AbstractDestructive car crash tests are an elaborate, time-consuming, and expensive necessity of the automotive development process. Today, finite element method (FEM) simulations are used to reduce costs by simulating car crashes computationally. We propose CrashNet, an encoder–decoder deep neural network architecture that reduces costs further and models specific outcomes of car crashes very accurately. We achieve this by formulating car crash events as time series prediction enriched with a set of scalar features. Traditional sequence-to-sequence models are usually composed of convolutional neural network (CNN) and CNN transpose layers. We propose to concatenate those with an MLP capable of learning how to inject the given scalars into the output time series. In addition, we replace the CNN transpose with 2D CNN transpose layers in order to force the model to process the hidden state of the set of scalars as one time series. The proposed CrashNet model can be trained efficiently and is able to process scalars and time series as input in order to infer the results of crash tests. CrashNet produces results faster and at a lower cost compared to destructive tests and FEM simulations. Moreover, it represents a novel approach in the car safety management domain.

Funder

Hasso-Plattner-Institut für Digital Engineering gGmbH

Publisher

Springer Science and Business Media LLC

Subject

Computer Networks and Communications,Computer Science Applications,Information Systems

Reference40 articles.

1. Bai S, Kolter JZ, Koltun V (2018) An empirical evaluation of generic convolutional and recurrent networks for sequence modeling. arXiv preprint arXiv:1803.01271

2. Bastien C, Blundell M, Neal-Sturgess C (2017) A study into the kinematic response for unbelted human occupants during emergency braking. Int J Crashworthiness 22:689–703

3. Bishop CM et al (1995) Neural networks for pattern recognition. Oxford University Press, Oxford

4. Bohlien J (2016) Stochastic crash simulations to analyze the influence of joint and assemble scattering on the deformation behavior of vehicle structures under crash. Master’s thesis, Universität Stuttgart

5. Böttcher CS, Frik S, Gosolits B (2005) 20 years of crash simulation at opel-experiences for future challenges

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