Analysis of a Traffic Accident in Turkey (original) (raw)
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International Journal of Automotive Engineering and Technologies, 2015
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Neural Network Paradigms in Crash Modeling on Non Urban Highways in India
Proceedings of 10th World Congress on Computational Mechanics, 2014
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