Predicting and identifying traffic hot spots applying neuro-fuzzy systems in intercity roads
Providing safety in roads for the purpose of protecting human assets and preventing social and economic losses resulted from road accidents is a significant issue. Identifying the traffic hot spots of the roads provides the possibility of promoting the road safety which is also related to investigat...
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Veröffentlicht in: | International journal of environmental science and technology (Tehran) 2009, Vol.6 (2), p.309-314 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Providing safety in roads for the purpose of protecting human assets
and preventing social and economic losses resulted from road accidents
is a significant issue. Identifying the traffic hot spots of the roads
provides the possibility of promoting the road safety which is also
related to investigate frequency and intensity of occurred accidents.
Accidents are multidimensional and complicated events. Identifying the
accident factors is based on applying a comprehensive and integrated
system for making decisions. Therefore, applying common mathematical
and statistical methods in this field can be resulted in some problems.
Hence, the new research methods with abilities to infer meaning from
complicated and ambiguous data seem useful. Therefore, along with
identifying the traffic hot spots, adaptive Neuro-Fuzzy inference
system is used to predict traffic hot spots on rural roads. In this
process, a fuzzy inference system from Sugeno type is trained applying
hybrid optimization routine (back propagation algorithm in combination
with a least square type of method) and accident data of Karaj-Chalus
road in Tehran Province. Then the system was tested by a complete set
of data. Finally, the stated system could predict 96.85 % of accident
frequencies in the studied blocks. Furthermore, the amount of effective
false negative in all cases included only 0.82 % of predictions, which
indicated a good approximation of predictions and model credibility. |
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ISSN: | 1735-1472 1735-2630 |
DOI: | 10.1007/BF03327634 |