Using data mining on road asset management data in analysing road crashes
Data(s) |
2010
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Resumo |
Road safety is a major concern worldwide. Road safety will improve as road conditions and their effects on crashes are continually investigated. This paper proposes to use the capability of data mining to include the greater set of road variables for all available crashes with skid resistance values across the Queensland state main road network in order to understand the relationships among crash, traffic and road variables. This paper presents a data mining based methodology for the road asset management data to find out the various road properties that contribute unduly to crashes. The models demonstrate high levels of accuracy in predicting crashes in roads when various road properties are included. This paper presents the findings of these models to show the relationships among skid resistance, crashes, crash characteristics and other road characteristics such as seal type, seal age, road type, texture depth, lane count, pavement width, rutting, speed limit, traffic rates intersections, traffic signage and road design and so on. |
Formato |
application/pdf |
Identificador | |
Relação |
http://eprints.qut.edu.au/41334/1/2010_QDTMR10_Forum_DM_Predicting_Roads_having_crashe_Nayak_R.pdf http://www.roads.org.au/events/show-calendar/97 Nayak, Richi, Emerson, Daniel, Weligamage, Justin, & Piyatrapoomi, Noppadol (2010) Using data mining on road asset management data in analysing road crashes. In 16th annual TMR Engineering & Technology Forum, 3-5 August 2010, Brisbane, Qld. |
Direitos |
Copyright 2010 [please consult the authors] |
Fonte |
Computer Science; Dance; Faculty of Science and Technology |
Palavras-Chave | #090507 Transport Engineering #data mining #road crash |
Tipo |
Conference Item |