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Urban road network travel time estimation method based on adaptive multi-task deep learning

A technology of multi-task learning and travel time, applied in the field of travel time estimation of urban road network, can solve the problems of difficulty in obtaining observation values, unsatisfactory model training effect, etc., and achieve the effect of high estimation accuracy.

Active Publication Date: 2018-08-17
SOUTHEAST UNIV
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Problems solved by technology

At the same time, in actual situations, due to the limitation of the number of vehicles and the routes traveled by vehicles, it is difficult to obtain the observed values ​​of the travel time of all road sections. This kind of incompletely labeled data will cause many problems in the process of training the model, making The training effect of the model is not ideal

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  • Urban road network travel time estimation method based on adaptive multi-task deep learning
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  • Urban road network travel time estimation method based on adaptive multi-task deep learning

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Embodiment Construction

[0046] Below in conjunction with accompanying drawing, technical scheme of the present invention is described in further detail:

[0047] Those skilled in the art can understand that, unless otherwise defined, all terms (including technical terms and scientific terms) used herein have the same meaning as commonly understood by one of ordinary skill in the art to which this invention belongs. It should also be understood that terms such as those defined in commonly used dictionaries should be understood to have a meaning consistent with the meaning in the context of the prior art, and will not be interpreted in an idealized or overly formal sense unless defined as herein Explanation.

[0048] refer to figure 1 As shown, this section includes the following five steps. Firstly, the characteristic factors affecting the travel time of road segments are extracted to determine the input of the model. Consider the travel time estimation of all road segments in a time period as a ta...

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Abstract

The invention discloses an urban road network travel time estimation method based on adaptive multi-task deep learning and belongs to the technical field of intelligent transportation. Firstly, features affecting the travel time of a road segment are extracted, then a deep network formed by multiple feature learning layers is constructed with a noise reduction sparse self-encoder as a component, and the feature representation of input is learned layer by layer. Finally, a probability-based method is used to carry out modeling on the uncertainty of the travel time, a multi-task regression layeris constructed, an error from an observation value is outputted by a minimized model, and thus the model automatically adjusts the weight of each task. According to the method, an existing method hasthe defects that a shallow network is difficult to describe a complex non-linear travel time in an urban road network, the manual adjustment of the weight of a joint learning task and only data witha complete task tag can be used are overcome, the efficiency of travel time estimation is improved, and the method has an important practical significance in the estimation of the travel time of the urban road network.

Description

technical field [0001] The invention relates to a method for estimating travel time of an urban road network using a multi-task deep learning method with adaptive weights, and belongs to the technical field of intelligent transportation. Background technique [0002] In real life, we usually divide a large problem into several highly related sub-problems. Considering the learning of each sub-problem as a task, the common method is to learn one task at a time and then combine these learning tasks, but this ignores the high correlation between these sub-tasks, and it is these correlations This allows us to achieve good learning results even with less data available. Compared with single-task learning, multi-task learning adopts the following mode: first, the complex learning problem is decomposed into theoretically independent sub-problems, and then each sub-problem is learned separately, and finally the complex problem is established by combining the learning results of the ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G08G1/01
CPCG08G1/0125
Inventor 陈淑燕唐坤张斌
Owner SOUTHEAST UNIV
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