Determining investigatory levels of friction with crash modelling

Author(s):  
R. McCarthy ◽  
G. Flintsch ◽  
S. Katicha ◽  
E. de Leόn Izeppi ◽  
F. Guo
Keyword(s):  
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.


2020 ◽  
Vol 05 (01) ◽  
pp. 40-45
Author(s):  
Ch Anudeep Reddy ◽  
Jella Sowjanya ◽  
Dr. C Naveen Kumar
Keyword(s):  

Author(s):  
Mingyu Kang ◽  
Anne Vernez Moudon ◽  
Haena Kim ◽  
Linda Ng Boyle

Intersection and non-intersection locations are commonly used as spatial units of analysis for modeling pedestrian crashes. While both location types have been previously studied, comparing results is difficult given the different data and methods used to identify crash-risk locations. In this study, a systematic and replicable protocol was developed in GIS (Geographic Information System) to create a consistent spatial unit of analysis for use in pedestrian crash modelling. Four publicly accessible datasets were used to identify unique intersection and non-intersection locations: Roadway intersection points, roadway lanes, legal speed limits, and pedestrian crash records. Two algorithms were developed and tested using five search radii (ranging from 20 to 100 m) to assess the protocol reliability. The algorithms, which were designed to identify crash-risk locations at intersection and non-intersection areas detected 87.2% of the pedestrian crash locations (r: 20 m). Agreement rates between algorithm results and the crash data were 94.1% for intersection and 98.0% for non-intersection locations, respectively. The buffer size of 20 m generally showed the highest performance in the analyses. The present protocol offered an efficient and reliable method to create spatial analysis units for pedestrian crash modeling. It provided researchers a cost-effective method to identify unique intersection and non-intersection locations. Additional search radii should be tested in future studies to refine the capture of crash-risk locations.


2016 ◽  
Vol 86 ◽  
pp. 173-185 ◽  
Author(s):  
Maria-Ioanna M. Imprialou ◽  
Mohammed Quddus ◽  
David E. Pitfield ◽  
Dominique Lord

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