Short-time traffic-flow combination prediction method

A short-term traffic flow and combined forecasting technology, applied in traffic flow detection, biological neural network models, etc., can solve problems such as limited accuracy, low prediction accuracy, and poor ability in unexpected traffic situations, achieving high accuracy and reliability stability, improve prediction accuracy, and reduce non-stationary effects

Inactive Publication Date: 2015-11-11
NANJING UNIV OF INFORMATION SCI & TECH
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Problems solved by technology

[0003] At present, there are many methods for modeling and predicting short-term traffic flow. Common models include: historical average model, time series model, Kalman filter model, and neural network model. Among them, the historical average model is suitable for Road sections with small traffic flow fluctuations, but low prediction accuracy and poor ability to deal with unexpected traffic conditions; for road sections with small traffic flow fluctuations, the time series model can meet the prediction requirements due to its good real-time performance and stability, but the prediction The accuracy is too dependent on the number of samples; the Kalman filter model has high prediction accuracy for steady-state traffic flow, but the prediction accuracy depends on the linear characteristics of traffic flow, which is suitable for linear non-real-time online traffic fl

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  • Short-time traffic-flow combination prediction method

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[0037] Embodiments of the present invention are described in detail below, examples of which are shown in the drawings, wherein the same or similar reference numerals designate the same or similar elements or elements having the same or similar functions throughout. The embodiments described below by referring to the figures are exemplary only for explaining the present invention and should not be construed as limiting the present invention.

[0038] Such as figure 1 As shown, the flow of a short-term traffic flow combination forecasting method is as follows:

[0039] Select the appropriate traffic flow composition sequence for the forecast day, that is, determine whether the forecast day belongs to a major holiday, and then select a suitable data sample; divide the forecast of the target forecast day into non-major holidays and major holidays, and use the same method for non-major holidays. The traffic flow data of "day of the week" is used as a data sample (for example, to ...

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Abstract

The invention discloses a short-time traffic-flow combination prediction method. The method comprises the following steps of step 1, presetting an acquisition period and collecting traffic flow time sequence data of a prediction target point according to the acquisition period; if a prediction day of the prediction target point is not a holiday, collecting traffic flow time sequence data of days in at least adjacent previous three weeks, wherein the days are the same weekday with the prediction day; if the prediction day of the prediction target point is a holiday, collecting traffic flow time sequence data of days in at least adjacent previous three years, wherein the days are the same holiday with the prediction day; step 2, using a set experience modal decomposition method to decompose the traffic flow time sequence data into several intrinsic mode components possessing a same characteristic; step 3, using a BP neural network algorithm to carry out prediction on each intrinsic mode component obtained through decomposition by using the set experience modal decomposition method respectively, superposing prediction results of the intrinsic mode components and acquiring a final prediction result. By using the prediction method in the invention, prediction precision of the short-time traffic flow can be effectively increased.

Description

technical field [0001] The invention relates to a short-term traffic flow combination forecasting method, in particular to a short-term traffic flow combined forecasting method based on ensemble empirical mode decomposition (EEMD) and BP neural network, belonging to the field of intelligent traffic forecasting. Background technique [0002] Short-term traffic flow prediction has always been a hot research field in intelligent transportation systems. Real-time and accurate traffic flow prediction is the premise and key of traffic control and traffic guidance, and it is of great significance to alleviate urban traffic congestion and avoid waste of social resources. . [0003] At present, there are many methods for modeling and predicting short-term traffic flow. Common models include: historical average model, time series model, Kalman filter model, and neural network model. Among them, the historical average model is suitable for Road sections with small traffic flow fluctua...

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Application Information

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IPC IPC(8): G08G1/01G06N3/02
Inventor 杨春霞符义琴伍文璐张瑾鲍铁男倪君
Owner NANJING UNIV OF INFORMATION SCI & TECH
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