Risk Assessment of Filling Pipeline Wearing Based on Improved PCA and Ordered Multi-class Logistic
Received date: 2018-08-14
Revised date: 2018-12-11
Online published: 2019-11-07
The filling mining method is mainstream mining method used in major mines today.The safe implementation of filling technology depends on the construction of a good filling pipeline transportation system.Considering the complexity of the filled pipeline system and the large number and variety of influencing factors,in order to accurately predict the wear risk of the filling pipeline of the mine,a wear risk assessment of the filling pipeline based on the improved PCA and the ordered multi-class Logistic regression combination model was built.On the basis of practical experience,a total of 12 items including the volume fraction of the filling slurry,the filling doubled line,the corrosiveness of the filling slurry,and the material of the pipe were selected.Reasonable risk levels were divided according to the characteristics of each indicator and the corresponding evaluation model was constructed.The filling production data of four mines such as Jinchuan Longshou mine and Dahongshan copper mine were taken as samples.The improved PCA algorithm was used to analyze the correlation of each index,and the three principal components with a cumulative contribution rate of 91.125% and factor load of the principal component of each indicator were obtained.In the end,the two indicators with low correlation and small influence index,the density of the filling slurry(27.75) and the corrosiveness of the filling slurry(27.60) were deleted.The preferred main indicators were substituted into the ordered multi-class Logistic regression model,the continuous indicator values were linearly fitted to the discrete risk levels,and the regression coefficients,standard errors and significance levels of each index were calculated,and the equations of probability fluctuations were solved. Finally,the probability of four mines corresponding to different wear risks Ⅰ(not easy to wear),Ⅱ(relatively easy to wear),Ⅲ(easy to wear),Ⅳ(very easy to wear) were obtained. They were: Jinchuan Longshou mine is 0.247,0.440,0.154,0.153; Dahongshan copper mine is 0.179,0.240,0.323,0.258; Hedong gold mine is 0.181,0.227,0.345,0.247; Xincheng gold mine is 0.181,0.227,0.345,0.247.From a theoretical point of view,the risk level corresponding to the probability of the largest value was used as the final judgment level of the wear risk of the mine filling pipeline,and Jinchuan Longshou mine is Ⅱ,Dahongshan copper mine is Ⅲ,Hedong gold mine is Ⅲ,Xincheng gold mine is Ⅲ. The mine also makes corresponding level protection and maintenance measures based on this.From the actual production application,it is said that the probability of the Ⅳ risk level should be paid special attention,and the normal operation of the filling pipeline should be guaranteed to the greatest extent within the scope permitted by technology and funds. The mathematical method combining improved PCA and ordered multi-class Logistic regression avoids the collinearity between the various indicators,reduces the interference of the weak indicators on the evaluation results,and obtains the accurate risk of wear risk of filling the pipeline.It provides a theoretical basis for scientific prediction of pipeline wear risk and the implementation of effective and economical protection measures for similar mines.The mine can construct an appropriate filling pipeline protection system according to its own development.
Shi WANG , Yi TANG , Xiao FENG . Risk Assessment of Filling Pipeline Wearing Based on Improved PCA and Ordered Multi-class Logistic[J]. Gold Science and Technology, 2019 , 27(5) : 740 -746 . DOI: 10.11872/j.issn.1005-2518.2019.05.740
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