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Principal component analysis-extreme learning machine (PCA-ELM) based coal mine water inrush prediction method

A prediction method and coal mine technology, applied in special data processing applications, instruments, electrical digital data processing, etc., can solve problems such as information overlap, increase network complexity, and affect prediction accuracy, so as to reduce structural complexity and eliminate information overlap , the effect of improving the convergence speed

Inactive Publication Date: 2014-04-23
CHINA UNIV OF MINING & TECH
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AI Technical Summary

Problems solved by technology

When the influencing factors of coal mine water inrush are used as network input variables, these influencing factors must contain information related to each other. Due to the non-independence between network input variables, information may overlap, which will increase the complexity of the network and reduce network performance. , affecting the prediction accuracy

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  • Principal component analysis-extreme learning machine (PCA-ELM) based coal mine water inrush prediction method
  • Principal component analysis-extreme learning machine (PCA-ELM) based coal mine water inrush prediction method
  • Principal component analysis-extreme learning machine (PCA-ELM) based coal mine water inrush prediction method

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Embodiment 1

[0029] Embodiment 1: use principal component analysis to optimize the input parameters of neural network, at first utilize principal component analysis to carry out preprocessing to multiple factor data, eliminate the information overlap between original data, produce new mutually independent training sample, Retain as much original information as possible, and then use the reconstructed training samples as the input of the extreme learning machine to reduce the structural complexity of the neural network and improve the convergence speed.

[0030] (1) Obtain a large number of data that affect coal mine water inrush under the normal mining operation state of the coal mine;

[0031] (2) Use the principal component analysis method to screen many factors that affect coal mine water inrush, and obtain the main controlling factors that are decisive factors for coal mine water inrush;

[0032] The specific steps for screening the main controlling factors of coal mine water inrush by...

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Abstract

The invention relates to a PCA-ELM based coal mine water inrush prediction method and belongs to the field of coal mine water inrush prediction methods. The method comprises the steps of obtaining a plurality of data affecting coal mine water inrush in the coal mine normal exploitation running state; screening a plurality of factors affecting coal mine water inrush through the PCA to obtain a main controlling factor playing a decisive role in coal mine water inrush; partitioning sample data only containing the main controlling factor into a training set, a verification set and a testing set which are corresponding to model training, verification and testing respectively; building an ELM network model, and training the data through the ELM algorithm; verifying a coal mine water inrush prediction model through the verification data, beginning to rebuild a model from the PCA if the obtaining prediction result has no apparent advantages compared with other algorithms, and using the model as the prediction model for actually predicting the coal mine water inrush prediction condition if the prediction result is ideal.

Description

technical field [0001] The invention relates to a coal mine water inrush prediction method, in particular to a coal mine water inrush prediction method based on PCA-EML. Background technique [0002] Coal mine water inrush is one of the major hidden dangers in coal mine safety production. Timely and correct prediction of water inrush is of great significance to ensure the smooth progress of coal mining. [0003] There are many factors affecting water inrush in coal mines. Most of these factors are uncertain and fuzzy, and there are complex nonlinear relationships among them. It is difficult to establish a prediction model with classical mathematical theories. Based on this, experts and scholars have proposed methods for predicting mine water inrush, such as using BP algorithm to establish a water inrush prediction neural network model based on mine water inrush sample examples, coal mine water inrush prediction method based on genetic neural network, and using support vector...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F19/00
Inventor 赵作鹏宋国娟
Owner CHINA UNIV OF MINING & TECH
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