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Roadside air pollutant concentration prediction method based on reconstruction deep learning

An air pollutant and deep learning technology, applied in the field of roadside air pollutant concentration prediction based on reconstruction deep learning, can solve problems such as low feasibility, real-time and migration defects, and low model accuracy of complex roads , to achieve good migration effect

Active Publication Date: 2017-05-03
UNIV OF SCI & TECH OF CHINA
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Problems solved by technology

[0003] Restricted by economic level and scientific research ability, my country's air quality monitoring work started relatively late. After more than 40 years of development since the 1970s, many provinces and cities in my country have established air quality monitoring systems. There is still a lot of room for improvement in the detection of roadside air pollutant concentrations
The main reasons are as follows: 1. At present, the equipment used to detect the concentration of air pollutants on the roadside is mainly an air monitoring station, which is expensive and can only be equipped with a limited number of stations in the city. and the surrounding environment are complex, the feasibility of real-time prediction of roadside air pollutant concentrations in various areas of the city through detection equipment is very low
2. Based on the low feasibility of comprehensive detection of equipment, scholars from various countries try to solve this problem through prediction methods. At present, in the research on the concentration of roadside air pollutants at home and abroad, the methods adopted are mainly divided into two categories: 1. Gaussian model and Subsequent series of line source models based on Gaussian model, this type of method needs to use different models for roads in different states, and the model accuracy for complex roads is not high; 2. Concentration of roadside pollutants based on neural network Detection, this type of method can identify the simple nonlinear relationship between the input and output data, but it has great limitations in learning the more essential feature mapping between the input and output data. Each neural network can only represent one The relationship between a pollutant and the input has great defects in real-time and mobility

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  • Roadside air pollutant concentration prediction method based on reconstruction deep learning
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  • Roadside air pollutant concentration prediction method based on reconstruction deep learning

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Embodiment Construction

[0044] Such as figure 1 As shown, the specific implementation of the present invention is as follows:

[0045] 1. Based on the diversity of the inducing factors of the air pollutant concentration on the roadside and the correlation characteristics of historical data, combined with the characteristics of the restricted Boltzmann machine and the Elman network, construct a feedforward connection and feedback connection structure with local memory capabilities , The main network is composed of an input layer, a receiving layer, an intermediate layer, and an output layer. The secondary network used for the initialization of the main network contains a visible layer and a hidden layer. The number of input layer, output layer, and visible layer units are respectively 14, 3, 14 deep reconstruction of Elman model.

[0046] Such as figure 2 As shown, the left side of the figure is the secondary network, the right side of the figure is the main network, N is the number of visible units of t...

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Abstract

The invention relates to a roadside air pollutant concentration prediction method based on reconstruction deep learning. On the basis of a reconstruction deep learning method, a depth reconstruction Elman model is provided according to the time-space distribution characteristics of roadside air pollutants; according to the characteristics of a restricted Boltzmann machine, initialization of the depth reconstruction Elman model is completed by utilization of part input data of a roadside air pollutant concentration data set; the depth reconstruction Elman model is trained by adoption of a gradient descent algorithm; and, due to the characteristic mapping function of the model, a real-time roadside air pollutant concentration prediction method based on the factors, such as road network information, weather information and traffic information, can be obtained.

Description

Technical field [0001] The invention relates to problems related to the concentration of roadside air pollutants in the field of environmental detection, and in particular to a roadside air pollutant concentration prediction method based on reconstruction deep learning. Background technique [0002] Urban pollutants are mainly produced by traffic emissions. The main pollutants are carbon monoxide CO, carbon dioxide CO2, nitrogen oxides NOx and so on. CO is a stable substance and will not chemically react with other pollutants or substances in the air. NO can react with ozone O 3 Reflect to generate NO 2 , And NO 2 It can also be converted to NO. CO is not only toxic, but also greenhouse gases with CO2. The greenhouse effect produced is an important hazard to the global environment. NO 2 It is the main substance that causes lung function damage, so real-time prediction of the concentration of air pollutants by the road is of great significance for environmental management and traf...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/50
CPCG06F30/367
Inventor 康宇陈绍冯李泽瑞崔艺王雪峰
Owner UNIV OF SCI & TECH OF CHINA
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