Discrimination of mine inrush water source based on PCA -CRHJ model

Aiming at problems of traditional discriminant model of mine inrush water source, such as poor nonlinear ability, poor model stability and low discrimination accuracy, PCA -CRHJ discriminant model of mine inrush water source is constructed based on principal component analysis (PCA) method and cycle...

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Veröffentlicht in:Gong kuang zi dong hua = Industry and mine automation 2020-11, Vol.46 (11), p.65-71
Hauptverfasser: QIU Xingguo, WANG Ruizhi, ZHANG Weiguo, ZHANG Zhaozhao, ZHANG Jing
Format: Artikel
Sprache:chi
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Zusammenfassung:Aiming at problems of traditional discriminant model of mine inrush water source, such as poor nonlinear ability, poor model stability and low discrimination accuracy, PCA -CRHJ discriminant model of mine inrush water source is constructed based on principal component analysis (PCA) method and cycle reservoir with hierarchical jumps (CRHJ). PCA is introduced to reduce dimension of multivariate time water inrush sequence and extract key features, the water inrush data is reconstructed to obtain principal component water inrush series, and the CRHJ model is trained by reconstructed sequence. The model completed by the training is applied to water inrush source discrimination in Zhangji Coal Mine and Xinzhuangzi Coal Mine for validity verfication. The results show that: ① By comparing with CRHJ、cycle reservoir with regular jumps (CRJ) and echo state network (ESN) models, the results show that PCA -CRHJ model has the best actual discriminant effect and the accuracy can reach 100%. ② The PCA -CRHJ model has five m
ISSN:1671-251X
DOI:10.13272/j.issn.1671-251x.2020040089