Bayesian methodology incorporating expert judgment for ranking countermeasure effectiveness under uncertainty: Example applied to at grade railroad crossings in Korea
Data(s) |
2006
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Resumo |
This paper describes the formalization and application of a methodology to evaluate the safety benefit of countermeasures in the face of uncertainty. To illustrate the methodology, 18 countermeasures for improving safety of at grade railroad crossings (AGRXs) in the Republic of Korea are considered. Akin to “stated preference” methods in travel survey research, the methodology applies random selection and laws of large numbers to derive accident modification factor (AMF) densities from expert opinions. In a full Bayesian analysis framework, the collective opinions in the form of AMF densities (data likelihood) are combined with prior knowledge (AMF density priors) for the 18 countermeasures to obtain ‘best’ estimates of AMFs (AMF posterior credible intervals). The countermeasures are then compared and recommended based on the largest safety returns with minimum risk (uncertainty). To the author's knowledge the complete methodology is new and has not previously been applied or reported in the literature. The results demonstrate that the methodology is able to discern anticipated safety benefit differences across candidate countermeasures. For the 18 at grade railroad crossings considered in this analysis, it was found that the top three performing countermeasures for reducing crashes are in-vehicle warning systems, obstacle detection systems, and constant warning time systems. |
Identificador | |
Publicador |
Elsevier Ltd |
Relação |
DOI:10.1016/j.aap.2005.08.005 Washington, Simon & Oh, Jutaek (2006) Bayesian methodology incorporating expert judgment for ranking countermeasure effectiveness under uncertainty: Example applied to at grade railroad crossings in Korea. Accident Analysis and Prevention, 38(2), pp. 234-247. |
Fonte |
Centre for Accident Research & Road Safety - Qld (CARRS-Q); Faculty of Health; School of Psychology & Counselling |
Palavras-Chave | #111700 PUBLIC HEALTH AND HEALTH SERVICES #150700 TRANSPORTATION AND FREIGHT SERVICES #170100 PSYCHOLOGY #Railroad safety, Bayesian methods, Accident modification factor, Countermeasure selection |
Tipo |
Journal Article |