Urban road traffic jam multi-reason automatic real-time identification method and system

A technology for road traffic and traffic congestion, applied in the field of traffic management, can solve the problems of time-consuming subjective judgment, low precision, and strong subjectivity.

Active Publication Date: 2020-10-20
HUAQIAO UNIVERSITY
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0003] At present, there are few researches on the automatic real-time identification of congestion reasons. After encountering congestion, the reasons for congestion are mainly analyzed from human subjective experience, which has strong subjectivity, low precision, poor real-time performance, and cannot

Method used

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  • Urban road traffic jam multi-reason automatic real-time identification method and system
  • Urban road traffic jam multi-reason automatic real-time identification method and system
  • Urban road traffic jam multi-reason automatic real-time identification method and system

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Experimental program
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Effect test

Embodiment 1

[0142] 1) for the 5 cause types studied in the present invention, they are respectively pedestrian impact, cross-street traffic impact, traffic peak, unreasonable signal timing and parking occupation of these 5 cause types, with reference to Quanxiu Street, Quanzhou City, Fujian Province Road to Tian'an Road direction), some roads are divided into three sections A, B, and C, and the road structure is as follows image 3 shown. The congestion cause type variable table is shown in Table 1, which is recorded as {c 1 ,c 2 ,c 3 ,c 4 ,c 5}. According to the road monitoring video, the observable traffic state variables on the road section are shown in Table 2.

[0143] 2) In order to meet the modeling requirements, continuous variables need to be treated as discrete variables. The settings of each variable are shown in Table 2. The data before setting are shown in Table 3, and the corresponding data after setting are shown in Table 4.

[0144] Table 2 Observable traffic state ...

Embodiment 2

[0155] Under the influence of various factors related to traffic congestion, the results of the parameter learning part of this model are shown in Table 5.

[0156] Table 5 Example of some results of parameter learning

[0157]

[0158]

Embodiment 3

[0160] The present invention uses a BP neural network model as a comparative experiment, wherein the number of hidden layer nodes is set to 13, the maximum number of training times is set to 300, and the maximum number of verification failure times is set to 50.

[0161] The average accuracy rate of the analysis results of the model constructed by the present invention and the comparison model on the impact of pedestrians, peak traffic flow, parking occupation, unreasonable signal timing and cross-street traffic flow is shown in Table 6.

[0162] Table 6 model accuracy

[0163] congestion type Bayesian network BP neural network Pedestrian impact 80.26% 56.55% rush hour 85.53% 71.88% parking in lane 81.58% 86.16% Signal timing is unreasonable 95.39% 89.49% The impact of cross-street traffic 87.50% 64.55%

[0164] According to the specific embodiments provided by the invention, the invention discloses the following technical e...

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Abstract

The invention discloses an urban road traffic jam multi-reason automatic real-time identification method and system. The identification method comprises the following steps: acquiring n observable data of a historical traffic state of an urban road in a research area range as input, taking m traffic jam reasons as output, and establishing a training sample data set containing p historical records;determining a causal relationship between each traffic jam reason and n observable data, and constructing a causal Bayesian network structure; training parameters of the causal Bayesian network by adopting historical records in the training sample data sets to obtain a trained causal Bayesian network; and inputting a plurality of observable data of the current traffic state of the urban road intothe trained causal Bayesian network, and outputting the identified multiple reasons of the current jam of the urban road by the Bayesian network. The causal Bayesian network is utilized to realize automatic real-time identification of multiple reasons of urban road traffic jam only according to a plurality of observable data.

Description

technical field [0001] The invention relates to the technical field of traffic management, in particular to an automatic real-time identification method and system for multiple causes of urban road traffic congestion. Background technique [0002] With the rapid development of cities and the increasing popularity of cars, traffic congestion has seriously worsened. Traffic congestion will not only lead to the decline of various social functions, but also lead to the continuous deterioration of the urban environment and become a serious problem hindering development. Controlling traffic congestion is the basis for the further healthy development of cities, and it is also an urgent need related to the vital interests of the public. [0003] At present, there are few researches on the automatic real-time identification of the cause of congestion. After encountering the congestion situation, the analysis of the cause of the congestion is mainly based on human subjective experien...

Claims

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Application Information

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IPC IPC(8): G06K9/00G06K9/62G06N3/08G08G1/01
CPCG06N3/084G08G1/0125G08G1/0137G06V20/54G06F18/29G06F18/214Y02A30/60
Inventor 王成王新艺曹堉高悦尔张惠臻王靖陈建伟
Owner HUAQIAO UNIVERSITY
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