Please use this identifier to cite or link to this item: https://elibrary.tucl.edu.np/handle/123456789/8027
Title: Development of Crash Frequency Prediction Model and Identification of Hazardous site locations: A case study of BP highway
Authors: Dahal, Bidhan
Keywords: Crash prediction model;Poisson distribution;Generalized Linear Modelling Technique
Issue Date: Dec-2019
Publisher: Pulchowk Campus
Institute Name: Institute of Engineering
Level: Masters
Citation: MASTER OF SCIENCE IN TRANSPORTATION ENGINEERING
Abstract: Crash prediction models (CPMs) have been used in many countries as a useful tool for road safety analysis and design. Each model is different in terms of methodology, data accuracy, variability in highway geometry and predictor variables used to predict crashes. This research focuses on developing a relationship between crash counts and roadway attributes, namely curve density, length of horizontal curves, maximum length of continuous tangent, maximum longitudinal grade, average longitudinal grade, access density, minimum sight distance within a segment, minimum radius of curvature and average lane width. Generalized Linear Modelling Technique based on Poisson distribution was selected for the development of model. The model was developed using the crash and road attribute data of Section II of BP highway. Out of the predictor variables, access density, minimum horizontal sight distance, maximum length of continuous tangent and minimum radius of curvature were found to be the most significant predictors. The proposed model was validated using crash and road attribute data from Section III of BP highway. The R2 values obtained for the initial developed model was 0.509 whereas the one obtained during model validation was 0.4308. R2 value obtained for the final model using both the core data-set and the data used for validation was obtained as 0.516.
Description: Crash prediction models (CPMs) have been used in many countries as a useful tool for road safety analysis and design. Each model is different in terms of methodology, data accuracy, variability in highway geometry and predictor variables used to predict crashes.
URI: https://elibrary.tucl.edu.np/handle/123456789/8027
Appears in Collections:Civil Engineering

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