การวิเคราะห์ปัจจัยองค์ประกอบการเกิดอุบัติเหตุทางถนนในกรณีที่มีผู้เสียชีวิต: กรณีศึกษาพื้นที่เขตเมืองหลักจังหวัดชลบุรี

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ปิยวรรณ ถนัดธนูศิลป์
สุรเมศวร์ พิริยะวัฒน์

บทคัดย่อ

The purpose of this article is presenting the finding a study of road accident component’s factors for fatality cases in Chonburi’s principal urban areas, Chonburi, Sriracha and Banglamung district. A purposive sampling method was employed to select a sample group comprising 1,016 fatalities from road accident reports provided by the Provincial Police Region 2, Chonburi Province. The data were analyzed using Structural Equation Modeling. The findings reveal that road surface types, number of lane, road segment locations, and traffic lane have a direct impact on road-related factors, with statistical significance at the .05 level. Additionally, vehicle types and age are found to have a direct influence on the Traffic accident severity, with statistical significance at the .05 level. The structural equation modeling of influencing to traffic accident severity in Chonburi’s principal urban areas with empirical data. (p  = .11, CMIN/DF = 1.29, GFI = .99, AGFI = .99, CFI= .97, RMR = .05, RMSEA = .02)

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