Regional traffic demand prediction method based on convolutional long-term and short-term memory network

A long-short-term memory and traffic demand technology, which is applied in the field of computer data analysis, can solve problems such as low prediction efficiency and insufficient utilization of external influencing factors, and achieve good prediction results, improve generalization ability, and improve prediction accuracy.

Active Publication Date: 2019-12-31
DALIAN UNIV OF TECH
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Problems solved by technology

[0011] In order to solve the technical problems of low prediction efficiency of traditional traffic demand forecasting methods and insufficient use of time-space correlation and external influence factors, the present invention designs a traffic demand forecasting method bas...

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  • Regional traffic demand prediction method based on convolutional long-term and short-term memory network
  • Regional traffic demand prediction method based on convolutional long-term and short-term memory network
  • Regional traffic demand prediction method based on convolutional long-term and short-term memory network

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Embodiment Construction

[0061] The present invention will be described in further detail below in conjunction with specific embodiments, but the present invention is not limited to specific embodiments.

[0062] A regional traffic demand forecasting method based on a convolutional long-term short-term memory network, including the training of the network model and the traffic demand forecasting part.

[0063] A method for forecasting regional traffic demand based on convolutional long-short-term memory network, the steps are as follows:

[0064] (1) Training set and test set:

[0065] We evaluate the performance of our proposed network model using the New York taxi dataset (TaxiNY). There are two types of taxis in New York, yellow taxis and green taxis. Yellow taxis pick up passengers mainly in Manhattan, while green taxis operate mostly in the suburbs. The dataset contains GPS trajectories of yellow taxis and green taxis from January 2009 to June 2016. Each track contains the pick-up location an...

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Abstract

The invention relates to a regional traffic demand prediction method based on a convolutional long-term and short-term memory network, and belongs to the field of computer data analysis. The inventionprovides a framework integrating multiple tasks. For a traffic flow prediction problem, a multi-task learning layer is added. Through underlying parameter sharing, multiple prediction targets are completed at the same time, and the generalization ability is improved. According to a traditional traffic demand prediction method, only a single prediction task is processed, and the characteristic that multiple related tasks can be parallel is not considered. The idea of multi-task learning is introduced, and multiple tasks are integrated on the topmost layer of the model and trained at the same time, and the situation that each task is trained separately is replaced. By adding the multi-task layer, the shared weight in the network can be fully utilized, and a better prediction result is provided.

Description

technical field [0001] The invention relates to the field of computer data analysis, in particular to a method for obtaining specific time and space information based on deep learning. Background technique [0002] Regional traffic demand forecasting is very important for urban vehicle management. It can help the traffic management platform to better complete the space scheduling of vehicles and reduce the waiting time of passengers. The prediction of regional traffic demand needs to consider factors such as time, space, weather and holidays, so it is challenging. Regional traffic demand is generally based on historical time series data, and mathematical algorithms are used to predict specific location traffic demand, such as time series entropy calculation, Markov chain simulation, distribution balance, Poisson distribution and other algorithms. Deep learning methods have also been widely used in the field of regional traffic demand forecasting, such as using long-term sho...

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Application Information

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IPC IPC(8): G06Q10/04G06N3/04G06N3/08
CPCG06Q10/04G06N3/04G06N3/08
Inventor 魏金泽尹宝才申彦明齐恒
Owner DALIAN UNIV OF TECH
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