A Traffic Flow Prediction Method Based on Road Clustering and Bidirectional LSTM

A technology of traffic flow and prediction method, which is applied in the direction of traffic flow detection, road vehicle traffic control system, neural learning method, etc., to achieve the effect of avoiding communication and synchronization, improving prediction accuracy, and increasing speed

Inactive Publication Date: 2019-07-02
凯习(北京)信息科技有限公司
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Problems solved by technology

[0005] Aiming at the current situation that the accuracy and speed of traffic flow prediction by neural network are difficult to improve and some deficiencies in existing designs, a traffic flow prediction method based on road clustering and double-layer bidirectional LSTM deep neural network model is proposed. Using the information hidden in the data and realizing the multiplexing of important information, the correlation clustering of roads improves the accuracy of traffic flow prediction, and avoids the communication and synchronization between nodes of the neural network model during cluster training, which improves the traffic flow prediction accuracy. The speed of cluster training

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  • A Traffic Flow Prediction Method Based on Road Clustering and Bidirectional LSTM

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[0038] In order to make the object, technical solution and advantages of the present invention clearer, the present invention will be further described in detail below in conjunction with the accompanying drawings and embodiments. It should be understood that the specific embodiments described here are only used to explain the present invention, not to limit the present invention. In addition, the technical features involved in the various embodiments of the present invention described below can be combined with each other as long as they do not constitute a conflict with each other.

[0039] The basic idea of ​​the present invention is to fill in the missing data, cluster according to the correlation of some historical traffic flows of the road, fully extract the information of the data and input it into the neural network, and use batch processing scripts (such as HTCondor job submission scripts) Realize the training and testing of neural network model clusters, repeat the s...

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Abstract

The invention discloses a traffic flow forecasting method based on road clustering and double-layer bidirectional LSTM, including: 1) When there is a missing value in the training data, the missing value is filled in the way of surrounding average for the missing value, Improve prediction accuracy; 2) Propose a method of correlation clustering of roads based on historical traffic data, divide roads into several groups, and use time information and spatial information at the same time in the data preprocessing stage to improve prediction accuracy; 3) Design a A two-layer bidirectional LSTM deep neural network model, which improves the prediction accuracy of the model; 4) proposes a method for batch training and testing the network model to speed up the training and testing speed of the neural network model; 5) proposes a Multi-model fusion method to improve prediction accuracy. The invention simultaneously improves the prediction speed and accuracy of the deep neural network in traffic flow prediction.

Description

technical field [0001] The present invention relates to technologies such as deep learning, traffic flow prediction, neural network design, and cluster training of neural network models, especially a deep neural network model based on road clustering and double-layer LSTM (Long Short-Term Memory, long-term short-term memory) The traffic flow forecasting method has guiding significance for improving the accuracy and speed of traffic flow forecasting. Background technique [0002] With the advent of the era of big data, real-time traffic network data in big cities is gradually increasing. As one of the most critical applications in the current popular unmanned driving technology, artificial intelligence traffic prediction can make reasonable predictions on traffic conditions after considering the relationship between time and space. , to help vehicles choose the most suitable route, especially in the case of urban congestion, the route selection has more practical significance...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G08G1/01G08G1/065G06N3/08G06K9/62
CPCG06N3/08G08G1/0129G08G1/065G06F18/23
Inventor 杨海龙黄秋宇栾钟治李云春
Owner 凯习(北京)信息科技有限公司
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