Traffic flow prediction method, prediction model generation method and device
A technology of traffic flow and prediction model, which is applied in traffic flow detection, biological neural network model, special data processing application, etc.
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Embodiment 1
[0067] The first embodiment of the present invention provides a traffic flow prediction method, the flow chart of which is as follows image 3 As shown, the method includes the following steps:
[0068] Step 301: For the road to be predicted, obtain historical traffic flow data of the time period before the current time of the road to be predicted;
[0069] The previous period of the current moment refers to a period that includes the current moment and the current moment forward. For example, if the current moment is tc, the previous period of the current moment is [t c-N+1 , T c ]. In general, road traffic data is released every 2 minutes. Therefore, if the previous period is half an hour, then 15 traffic data are released in the previous period. Assuming that the time interval for publishing traffic data is Tinterval, the number of traffic data for a road published throughout the day is (24*60) / Tinterval.
[0070] Step 302: Obtain the traffic flow prediction model corresponding ...
Embodiment 2
[0109] In order to further enable those skilled in the art to understand this solution, a specific example will be described below.
[0110] Suppose that the road to be predicted is R0, the historical traffic flow data is published every 2 minutes, the selected historical traffic flow data is 150 historical traffic data from 9:02-14:00, and the preset initial BP neural network model The parameters are as follows:
[0111] The number of input data allowed in the input layer is N=15, the number of output data in the middle layer (hidden layer) is M=15, the number of output data in the output layer is L=15, and the first variance threshold E min = 0.02 and training learning rate η = 0.1;
[0112] The weight matrix V and W of the BP neural network model are as follows:
[0113] V = v 0,0 v 0,1 . . . v 0 , M v 1,0 v 1,1 . . . v 1 , M . . . . . . . . . . . . v N ...
Embodiment 3
[0158] Based on the same inventive concept as the foregoing traffic flow prediction method, the third embodiment of the present invention provides a traffic flow prediction device. Figure 5 As shown, it includes: a training module 51, a storage module 52, a historical traffic data acquisition module 53, a traffic flow prediction model acquisition module 54 and a prediction module 55, where:
[0159] The training module 51 is used to train the preset neural network model according to the historical traffic flow data of the road in advance to obtain the prediction of the subsequent period of the road according to the historical traffic flow data of the previous period of the road at the current moment Traffic flow prediction model based on traffic flow data;
[0160] The storage module 52 is configured to store the corresponding relationship between the road and its traffic flow prediction model obtained by the training module 51;
[0161] The historical traffic data acquisition modul...
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