A model-based crash prediction technique for Chinese roadway segments
Date
2014Author
Vaghefi, Seyed A.Jafari, Mohsen A.
Jafari, Bobby
Rezvani, Amir Zahiredin
Gang, Tao
Al-Khalifa, Khalifa Nasser M.N.
...show more authors ...show less authors
Metadata
Show full item recordAbstract
This paper presents development and application of a statistical crash prediction model for various types of crashes in Chinese roadway segments. The model is constructed based upon a Negative Binomial Generalized Linear Model and is applied for a large amount of data collected from a wide range of urban, suburban and rural areas. The Negative Binomial Regression proposes a link function to fit a set of roadway characteristics data and traffic flow with crash frequency and at the same time handles the overdispersion problem. Through a real-world example, the performance of the model is evaluated and practical issues regarding input data quality issues and model validation are discussed. The results reveal that the proposed model can appropriately predict the crash data and enables safety traffic engineers to identify and prioritize the high crash locations and diagnose the roadway characteristics, which significantly affect the crash frequencies.
Collections
- Traffic Safety [163 items ]