Dynamic prediction method and device for urban fine population distribution based on depth learning

A technology of dynamic forecasting and deep learning, applied in forecasting, instruments, biological neural network models, etc., can solve the problems of forecasting efficiency impact, not considering the temporal and spatial coupling characteristics of population distribution changes at the same time, and less consideration of urban population distribution forecasting models, etc., to achieve The effect of improving accuracy

Inactive Publication Date: 2019-02-22
CENT SOUTH UNIV
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Problems solved by technology

[0014] (1) Most of the existing studies on population distribution prediction focus on the problem of population development model at a large scale, and there are limitations in the prediction of population distribution at a fine scale;
[0015] (2) Most of the existing methods only consider the dependence of population distribution change in the time dimension or the correlation of space dimension, but do not consider the temporal-spatial coupling characteristics of population

Method used

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  • Dynamic prediction method and device for urban fine population distribution based on depth learning
  • Dynamic prediction method and device for urban fine population distribution based on depth learning
  • Dynamic prediction method and device for urban fine population distribution based on depth learning

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Embodiment 1

[0059] This embodiment is proposed to solve the above deficiencies in the prior art. The technical problem to be solved by the present invention is to provide a dynamic prediction method for the refined distribution of urban population based on deep learning, specifically gridding the urban population data, And the convolutional long-short-term memory network model is used to extract the spatial-temporal characteristics of urban population distribution, so as to realize the dynamic prediction of the refined distribution of urban population.

[0060] Its technical scheme is as follows:

[0061] This embodiment provides a dynamic prediction method for the refined distribution of urban population based on deep learning, which mainly includes the following steps:

[0062] Step 1: Construct a sample set and divide the corresponding training set and test set

[0063] Gridding the research area and constructing a timing grid diagram mainly includes the following steps:

[0064] 1.1...

Embodiment 2

[0090] This embodiment further mentions the flow process of the technical method as figure 1 shown. In order to make the object, technical solution and advantages of the present invention more clear, the present invention will be further described in detail below with reference to the accompanying drawings and implementations as examples. It should be understood that the specific embodiments described here are only used to explain the present invention, not to limit the present invention. After reading the present invention, modifications to various equivalent forms of the present invention by those skilled in the art fall within the scope defined by the appended claims of the present application.

[0091] The specific implementation of the present invention in the real-time prediction of the fine distribution of urban population will be described below in conjunction with the real-time prediction of the fine distribution of urban population in Changsha City as an example:

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Abstract

The invention discloses a dynamic prediction method of urban population refinement distribution based on depth learning, which comprises the following steps: 1, grid processing is carried out on the research area under the scale required by the research, the sample set is constructed, and the corresponding training set and test set are divided; 2, construct a prediction model of urban population distribution, and training that prediction model accord to historical data; 3, input that data of the distribution state of the urban population at the first j times as an input variable into the trainmodel in the step 2, and predicting and obtaining the distribution state of the urban population at a certain time in the future; The prediction model can predict all the regions divided by the urbangrid simultaneously. Convolution long-short memory network extracts spatial features through convolution structure, and acquires temporal features through long-short memory network structure.The bottom layer of the algorithm combines convolution neural network with long-short memory network to learn the high-dimensional spatio-temporal features of population distribution changes, and effectivelyfuses the spatial dimensions of time dimension, so as to improve the prediction accuracy.

Description

technical field [0001] The invention relates to the fields of spatio-temporal big data mining and spatio-temporal analysis and modeling, in particular to a method for dynamic prediction of refined urban population distribution. Background technique [0002] Urban population distribution refers to the spatial distribution of population in a city at a certain moment. my country's economy is developing rapidly, industrialization and urbanization are accelerating, and the population of large cities is constantly gathering, resulting in environmental degradation, traffic congestion, and increasingly serious public safety hazards, which have brought severe challenges to modern urban management and development. Mastering the urban population distribution and development dynamics at a fine spatio-temporal scale can provide important scientific basis and timely and effective services for the exploration of urban residents' travel activities, the optimization of urban public resource ...

Claims

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Application Information

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IPC IPC(8): G06Q10/04G06Q50/26G06K9/62G06N3/04
CPCG06Q10/04G06Q50/26G06N3/045G06F18/214
Inventor 邓敏罗靓陈雪莹石岩刘慧敏杨学习
Owner CENT SOUTH UNIV
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