Artificial neural network model for estimating temporal and spatial freeway work zone delay using probe-vehicle data
Document Type
Article
Publication Date
1-1-2016
Abstract
Highway lane closures due to road reconstruction and the resulting work zones have been a major source of nonrecurring congestion on freeways. It is extremely important to calculate the safety and cost impacts of work zones: the use of new technologies that track drivers and vehicles make that possible. A multilayer feed-forward artificial neural network (ANN) model is developed in this paper to estimate work zone delay by using the probe-vehicle data. The probe data include the travel speeds under normal and work zone conditions. Unlike previous models, the proposed model estimates temporal and spatial delays, which are applied to a real world case study in New Jersey. The work zone data (i.e., starting time, duration, length, and number of closed lanes) were collected on New Jersey freeways in 2014 together with actual probe-vehicle speeds. A comparative analysis was conducted; the results indicate that the ANN model outperforms the traditional deterministic queuing model in terms of the accuracy in estimating travel delays. The ANN model can be used to calculate contractor penalty in terms of cost overruns as well as incentivize a reward schedule in case of early work competition. The model can assist work zone planners in designing optimal start and end time of work zone as function of time of day. In assessing the performance of work zones, the model can assist transportation engineers to better develop and evaluate traffic mitigation and management plans.
Identifier
85015616124 (Scopus)
Publication Title
Transportation Research Record
External Full Text Location
https://doi.org/10.3141/2573-20
e-ISSN
21694052
ISSN
03611981
First Page
164
Last Page
171
Volume
2573
Recommended Citation
Du, Bo; Chien, Steven; Lee, Joyoung; Spasovic, Lazar; and Mouskos, Kyriacos, "Artificial neural network model for estimating temporal and spatial freeway work zone delay using probe-vehicle data" (2016). Faculty Publications. 10862.
https://digitalcommons.njit.edu/fac_pubs/10862
