TY - JOUR ID - 151971 TI - Identification Methods of Accident Hotspots and Providing a Model for Evaluating the Number and Severity of Accidents on Roadways JO - International Journal of Transportation Engineering JA - IJTE LA - en SN - 2322-259X AU - Shafabakhsh, Gholamali AU - sajed, yousef AD - Professor, Faculty of Civil Engineering, Semnan University, Semnan, Iran AD - Assistant Professor, Department of Civil Engineering, Faculty of Technology Engineering, Ardabil Branch, Islamic Azad University, Ardabil, Iran Y1 - 2022 PY - 2022 VL - 10 IS - 1 SP - 865 EP - 875 KW - hotspots identification KW - regression models KW - number and severity of accidents DO - 10.22119/ijte.2022.170379.1458 N2 - Whenever an accident index exceeds a certain limit, then the critical conditions is created for a spot or section. Accordingly, that spot and section are identified as a hotspot or black spot. Therefore, determining the criterion for critical limits is always one of the essential challenges for traffic safety authorities. The purpose of identifying accident hotspots is to achieve high-priority locations in order to optimally and effectively allocate the safety budgets as well as to promote more efficient and faster safety at the road network level. Obviously, a suitable criterion for communities depends on different factors and parameters such as annual safety budgets, technology level, the amount of trained personnel, community operating strengths, and safety strategic plans and projects. Thus, it is not possible to prescribe a definite and stable criterion for different communities.  In recent years, human, vehicle, road and environment have been recognized as the three main effective elements of the road transportation in the occurrence of accidents. In the present study, with combining the parameters related to accidents (including accident time, accident cause and accident severity), geometric parameters of the accident location (including: road width, shoulder width and radius of horizontal and vertical curves, road surface conditions, vertical slopes), and traffic parameters (including: average daily and hourly traffic volume, heavy traffic percentage and average speed), hotspots were identified by using the superior methods of Poisson regression and negative binomial distribution and based on the combined criteria of number and severity of accidents and equivalent damage factors. UR - http://www.ijte.ir/article_151971.html L1 - http://www.ijte.ir/article_151971_7e17010b77adfaf15ff8d819e93f6c11.pdf ER -