Pattern recognition techniques such as artificial neural networks continue to offer potential solutions to many of the existing problems associated with freeway incident-detection algorithms. This study focuses on the application of Fuzzy ART neural networks to incident detection on freeways. Unlike back-propagation models, Fuzzy ART is capable of fast, stable learning of recognition categories. It is an incremental approach that has the potential for on-line implementation. Fuzzy ART is trained with traffic patterns that are represented by 30-s loop-detector data of occupancy, speed, or a combination of both. Traffic patterns observed at the incident time and location are mapped to a group of categories. Each incident category maps inciden...
this paper. Amongst these are HIOCC and PATREG (Collins et al., 1979) and the Comprehensive AID algo...
This paper discusses a multi-layer feedforward (MLF) neural network incident detection model that wa...
In this research, the authors introduce and define a universal incident detection framework that is ...
Pattern recognition techniques such as artificial neural networks continue to offer potential soluti...
Pattern recognition techniques such as artificial neural networks continue to offer potential soluti...
Automatic incident detection on freeways is an essential ingredient for the successful deployment of...
Automatic incident detection on freeways is an essential ingredient for the successful deployment of...
"August 2001."; Executive summary laid in.; Includes bibliographical references.; Final report.; Per...
Non-recurring congestion caused by incidents is a major source of traffic delay in freeway systems. ...
664265093Executive summary.PDFTech ReportFHWA/HWY-03/200214690(0)Advanced traffic management systems...
This paper explores the performance of a relatively new-generation of algorithms for automated freew...
664264528Final report.PDFTech Reporthttp://ntl.bts.gov/lib/34000/34100/34155/PB2002100535.pdfFHWA/HW...
Abstract: This paper attempts to establish a fuzzy neural automatic incident detection (FNAID) algor...
Abstract: Incidents on the freeway disrupt traffic flow and the cost of delay caused by the incident...
A significant body of research on advanced techniques for automated freeway incident detection has b...
this paper. Amongst these are HIOCC and PATREG (Collins et al., 1979) and the Comprehensive AID algo...
This paper discusses a multi-layer feedforward (MLF) neural network incident detection model that wa...
In this research, the authors introduce and define a universal incident detection framework that is ...
Pattern recognition techniques such as artificial neural networks continue to offer potential soluti...
Pattern recognition techniques such as artificial neural networks continue to offer potential soluti...
Automatic incident detection on freeways is an essential ingredient for the successful deployment of...
Automatic incident detection on freeways is an essential ingredient for the successful deployment of...
"August 2001."; Executive summary laid in.; Includes bibliographical references.; Final report.; Per...
Non-recurring congestion caused by incidents is a major source of traffic delay in freeway systems. ...
664265093Executive summary.PDFTech ReportFHWA/HWY-03/200214690(0)Advanced traffic management systems...
This paper explores the performance of a relatively new-generation of algorithms for automated freew...
664264528Final report.PDFTech Reporthttp://ntl.bts.gov/lib/34000/34100/34155/PB2002100535.pdfFHWA/HW...
Abstract: This paper attempts to establish a fuzzy neural automatic incident detection (FNAID) algor...
Abstract: Incidents on the freeway disrupt traffic flow and the cost of delay caused by the incident...
A significant body of research on advanced techniques for automated freeway incident detection has b...
this paper. Amongst these are HIOCC and PATREG (Collins et al., 1979) and the Comprehensive AID algo...
This paper discusses a multi-layer feedforward (MLF) neural network incident detection model that wa...
In this research, the authors introduce and define a universal incident detection framework that is ...