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Study on the Abnormal Traffic Incident Forewarning Model Based Advanced Neural Networks

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1 Author(s)
Yin Zhu ; Traffic Manage. Eng. Dept., Chinese People''s Public Security Univ., Beijing, China

This paper introduces the abnormal traffic incident dynamic forewarning core model based on the neural network. And then the calculate steps are presented in detail. Finally, there are several real examples on demonstrating the effectiveness of system algorithms. Though the collection of the real test data and screening in Beijing, it achieves the forewarning of abnormal traffic incident and gives the assessment the situation as well.

Published in:
Intelligent Systems and Applications (ISA), 2010 2nd International Workshop on

Date of Conference: 22-23 May 2010

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