Title
Development of Incident Detection Model Using Neuro-Fuzzy Algorithm
Abstract
This research aims at model development for incident detection and travel time estimation using a neuro-fuzzy algorithm. Traffic incidents such as accidents, weather and construction, are a major cause of congestion. Thus incident detection and optimal travel time estimation is required for improving general traffic conditions. Until recently, two approaches related to the above were the aim of many studies. One idea is to estimate travel time using data fusion from many sources while another is to estimate optical path through travel time data. As a first step, in this paper we develop an initial model for incident detection using a neuro-fuzzy algorithm. In our experiments we find that our proposed model has a incident detection rate (DR) of over 83% and a false alarm rate (FAR) under 24%. The test results also suggest that the proposed model enhances accuracy of incident detection in an arterial road and we expect the proposed model to contribute to formal traffic policy.
Year
DOI
Venue
2005
10.1109/ICIS.2005.53
ACIS-ICIS
Keywords
Field
DocType
travel time data,travel time,incident detection model,incident detection rate,neuro-fuzzy algorithm,incident detection,model development,traffic incident,optimal travel time estimation,initial model,detectors,data fusion,fuzzy sets,fuzzy set theory,weather,construction,false alarm rate,neural networks,fuzzy systems,neuro fuzzy
Optical path,Neuro-fuzzy,Computer science,Algorithm,Sensor fusion,Fuzzy set,Fuzzy control system,Constant false alarm rate,Artificial neural network,Detector
Conference
ISBN
Citations 
PageRank 
0-7695-2296-3
4
0.58
References 
Authors
9
5
Name
Order
Citations
PageRank
Seungheon Lee1103.49
Jin-woo Choi212316.51
Nam-Kwan Hong340.58
Murlikrishna Viswanathan4216.30
Young-Kyu Yang56310.73