traffic incident clearance time and arrival time prediction based on hazard models

traffic incident clearance time and arrival time prediction based on hazard models

;Yang beibei Ji;Rui Jiang;Ming Qu;Edward Chung
journal of power sources 2014 Vol. 2014 pp. -
165
ji2014mathematicaltraffic

Abstract

Accurate prediction of incident duration is not only important information of Traffic Incident Management System, but also an effective input for travel time prediction. In this paper, the hazard based prediction models are developed for both incident clearance time and arrival time. The data are obtained from the Queensland Department of Transport and Main Roads’ STREAMS Incident Management System (SIMS) for one year ending in November 2010. The best fitting distributions are drawn for both clearance and arrival time for 3 types of incident: crash, stationary vehicle, and hazard. The results show that Gamma, Log-logistic, and Weibull are the best fit for crash, stationary vehicle, and hazard incident, respectively. The obvious impact factors are given for crash clearance time and arrival time. The quantitative influences for crash and hazard incident are presented for both clearance and arrival. The model accuracy is analyzed at the end.

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ID: 129078
Ref Key: ji2014mathematicaltraffic
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0x95644003c57E6F55A65596E3D9Eac6813e3566dA
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129078
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10.1155/2014/508039
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