A comparative analysis of black spot identification methods and road accident segmentation methods.

Indicating road safety-related aspects in the phase of planning and operating is always a challenging task for experts. The success of any method applied in identifying a high-risk location or black spot (BS) on the road should depend fundamentally on how data is organized into specific homogeneous segments. The appropriate combination of black spot identification (BSID) method and segmentation method contributes significantly to the reduction in false positive (a site involved in safety investigation while it is not needed) and false negative (not involving a site in safety investigation while it is needed) cases in identifying BS segments. The purpose of this research is to study and compare the effect of methodological diversity of road network segmentation on the performance of different BSID methods. To do this, four commonly applied BS methods (empirical Bayesian (EB), excess EB, accident frequency, and accident ratio) have been evaluated against four different segmentation methods (spatial clustering, constant length, constant traffic volume, and the standard Highway Safety Manual segmentation method). Two evaluations have been used to compare the performance of the methods. The approach first evaluates the segmentation methods based on the accuracy of the developed safety performance function (SPF). The second evaluation applies consistency tests to compare the joint performances of the BS methods and segmentation methods. In conclusion, BSID methods showed a significant change in their performance depending on the different segmentation method applied. In general, the EB method has surpassed the other BSID methods in case of all segmentation approaches.

[1]  Ferit Yakar,et al.  Identification of Accident-Prone Road Sections by Using Relative Frequency Method , 2015 .

[2]  Wen Cheng,et al.  Experimental evaluation of hotspot identification methods. , 2005, Accident; analysis and prevention.

[3]  Hwasoo Yeo,et al.  Evaluating the performance of network screening methods for detecting high collision concentration locations on highways. , 2013, Accident; analysis and prevention.

[4]  James Cui,et al.  QIC Program and Model Selection in GEE Analyses , 2007 .

[5]  William R. Black,et al.  ACCIDENTS ON BELGIUM'S MOTORWAYS: A NETWORK AUTOCORRELATION ANALYSIS. , 1998 .

[6]  W. Pan Akaike's Information Criterion in Generalized Estimating Equations , 2001, Biometrics.

[7]  I. Thomas Spatial data aggregation: exploratory analysis of road accidents. , 1996, Accident; analysis and prevention.

[8]  Craig Lyon,et al.  Empirical Bayes Procedure for Ranking Sites for Safety Investigation by Potential for Safety Improvement , 1999 .

[9]  Maen Ghadi,et al.  Comparison Different Black Spot Identification Methods , 2017 .

[10]  Qiang Meng,et al.  A note on hotspot identification for urban expressways , 2014 .

[11]  Glen Koorey Road Data Aggregation and Sectioning Considerations for Crash Analysis , 2009 .

[12]  Michel Mouchart,et al.  The local spatial autocorrelation and the kernel method for identifying black zones. A comparative approach. , 2003, Accident; analysis and prevention.

[13]  Gordon K. Smyth,et al.  Pearson's goodness of fit statistic as a score test statistic , 2003 .

[14]  T. Caliński,et al.  A dendrite method for cluster analysis , 1974 .

[15]  S. Cafiso,et al.  Comparison of Italian and Hungarian Black Spot Ranking , 2016 .

[16]  Alfonso Montella Safety reviews of existing roads: Quantitative safety assessment methodology , 2005 .

[17]  H. Akaike A new look at the statistical model identification , 1974 .

[18]  Kay Fitzpatrick,et al.  Using the Rural Two-Lane Highway Draft Prototype Chapter , 2006 .

[19]  Maen Ghadi,et al.  Integration of Probability and Clustering Based Approaches in the Field of Black Spot Identification , 2018, Periodica Polytechnica Civil Engineering.

[20]  Mario De Luca,et al.  Road Safety Management Using Bayesian and Cluster analysis , 2012 .

[21]  Robert C. Deen,et al.  IDENTIFICATION OF HAZARDOUS RURAL HIGHWAY LOCATIONS , 1975 .

[22]  Geert Wets,et al.  Traffic accident segmentation by means of latent class clustering. , 2008, Accident; analysis and prevention.

[23]  Salvatore Cafiso,et al.  Investigating Influence of Segmentation in Estimating Safety Performance Functions for Roadway Sections , 2013 .

[24]  Alfonso Montella,et al.  A comparative analysis of hotspot identification methods. , 2010, Accident; analysis and prevention.

[25]  Rune Elvik Comparative Analysis of Techniques for Identifying Locations of Hazardous Roads , 2008 .

[26]  Maen Ghadi,et al.  Comparison of Different Road Segmentation Methods , 2019 .

[27]  Wen Cheng,et al.  New Criteria for Evaluating Methods of Identifying Hot Spots , 2008 .