Rockburst Prediction Model Based on Entropy Weight Integrated with Grey Relational BP Neural Network

A rockburst prediction model of the entropy weight grey relational backpropagation (BP) neural network is developed. The model needs to select the evaluation factors according to the engineering practice and establish the sample library. The entropy weight method is used to calculate the objective weight of the characteristic factors, and the similarity between the samples is calculated by the combination of grey relational theory and the entropy method. The training sample of the BP neural network is selected by threshold determination. Finally, we use the trained neural network to estimate the rockburst intensity grade of samples to be tested. This model is applied to the rockburst prediction of Qamchiq tunnel project, and the prediction results are in good agreement with the actual conditions of the subsequent construction, thus verifying the feasibility and effectiveness of the model in the rockburst prediction.

[1]  Linming Dou,et al.  Rock burst assessment in multi-seam mining: a case study , 2017, Arabian Journal of Geosciences.

[2]  Jianxun Chen,et al.  Investigating the Long-Term Settlement of a Tunnel Built over Improved Loessial Foundation Soil Using Jet Grouting Technique , 2018, Journal of Performance of Constructed Facilities.

[3]  Ming Ji,et al.  Hierarchic Analysis Method to Evaluate Rock Burst Risk , 2015 .

[4]  Linjun Peng Deep Coal Power Foundation Excavation of Rock Burst Hazard , 2015 .

[5]  Wen-Chieh Cheng,et al.  Investigation into geohazards during urbanization process of Xi’an, China , 2018, Natural Hazards.

[6]  Enyuan Wang,et al.  Extraction of microseismic waveforms characteristics prior to rock burst using Hilbert–Huang transform , 2016 .

[7]  Jun Liu,et al.  A Study on the Mechanical Behavior and Statistical Damage Constitutive Model of Sandstone , 2018 .

[8]  F. Lu,et al.  Analysis of the displacement increment induced by removing temporary linings and corresponding countermeasures , 2018 .

[9]  Xinmin Wang,et al.  Research and application on improved BP neural network algorithm , 2010, 2010 5th IEEE Conference on Industrial Electronics and Applications.

[10]  Q. Yan,et al.  Dynamic Characteristic and Fatigue Accumulative Damage of a Cross Shield Tunnel Structure under Vibration Load , 2018 .

[11]  Shoulin Yin,et al.  An improved particle swarm optimization algorithm used for BP neural network and multimedia course-ware evaluation , 2017, Multimedia Tools and Applications.

[12]  Feng Gao,et al.  Rock burst proneness prediction by acoustic emission test during rock deformation , 2014 .

[13]  Huang Hui,et al.  Hybrid PSO-BP Neural Network Approach for Wind Power Forecasting , 2017 .

[14]  Hao Wang,et al.  Typhoon triggered operation tunnel debris flow disaster in coastal areas of SE China , 2019, Geomatics, Natural Hazards and Risk.

[15]  Heng Zhang,et al.  Natural wind utilization in the vertical shaft of a super-long highway tunnel and its energy saving effect , 2018, Building and Environment.

[16]  Sifeng Liu,et al.  Generalized Hybrid Grey Relation Method for Multiple Attribute Mixed Type Decision Making , 2012, ArXiv.

[17]  Jian Zhou,et al.  Prediction of Classification of Rock Burst Risk Based on Genetic Algorithms with SVM , 2014 .

[18]  Jianxun Chen,et al.  Investigation Progresses and Applications of Fractional Derivative Model in Geotechnical Engineering , 2016 .

[19]  Enlin Ma,et al.  Displacement and Stress Characteristics of Tunnel Foundation in Collapsible Loess Ground Reinforced by Jet Grouting Columns , 2018, Advances in Civil Engineering.

[20]  Jinxing Lai,et al.  Response characteristics and preventions for seismic subsidence of loess in Northwest China , 2018, Natural Hazards.

[21]  Hao Sun,et al.  Traffic Structure Optimization in Historic Districts Based on Green Transportation and Sustainable Development Concept , 2019, Advances in Civil Engineering.

[22]  Simon Haykin,et al.  Neural Networks: A Comprehensive Foundation , 1998 .

[23]  Jian Wang,et al.  An Improved Particle Swarm Optimization Algorithm , 2011 .

[24]  Keguo Sun,et al.  Study on the Characteristics of Safety Distribution Changing with Buried Depth for Metro Station in Upper-Soft and Lower-Hard Stratum , 2018, Advances in Civil Engineering.

[25]  Kaiyun Wang,et al.  Vibration Response Characteristics of the Cross Tunnel Structure , 2016 .

[26]  Yong Fang,et al.  Liner Behavior of a Tunnel Constructed Below a Caved Zone , 2018, KSCE Journal of Civil Engineering.

[27]  Xiuling Wang,et al.  Extreme deformation characteristics and countermeasures for a tunnel in difficult grounds in southern Shaanxi, China , 2018, Environmental Earth Sciences.

[28]  Xiuling Wang,et al.  The catastrophic landside in Maoxian County, Sichuan, SW China, on June 24, 2017 , 2017, Natural Hazards.

[29]  Haobo Fan,et al.  Methane explosion accidents of tunnels in SW China , 2019, Geomatics, Natural Hazards and Risk.

[30]  J. Lai,et al.  Characteristics of seismic disasters and aseismic measures of tunnels in Wenchuan earthquake , 2017, Environmental Earth Sciences.

[31]  Qian Zhang,et al.  Fiber Bragg Grating Sensors-Based In Situ Monitoring and Safety Assessment of Loess Tunnel , 2016, J. Sensors.

[32]  Bo Wang,et al.  Stability of NATM tunnel faces in soft surrounding rocks , 2017 .

[33]  Claude E. Shannon,et al.  Prediction and Entropy of Printed English , 1951 .

[34]  M. Kelbert,et al.  Weighted entropy: basic inequalities , 2017, 1710.10798.

[35]  T. N. Singh,et al.  Prediction of strength properties of some schistose rocks from petrographic properties using artificial neural networks , 2001 .

[36]  Wei-yao Guo,et al.  Progressive mitigation method of rock bursts under complicated geological conditions , 2017 .

[37]  Xiuling Wang,et al.  Numerical Investigation of Particle Concentration Distribution Characteristics in Twin-Tunnel Complementary Ventilation System , 2018, Mathematical Problems in Engineering.

[38]  Xiuling Wang,et al.  Review of the flame retardancy on highway tunnel asphalt pavement , 2019, Construction and Building Materials.

[39]  Baohua Guo,et al.  Test study on a new rock burst tendency index—Yield Degree and its influencing factors , 2014 .

[40]  Xiuling Wang,et al.  Statistical analysis of fire accidents in Chinese highway tunnels 2000–2016 , 2019, Tunnelling and Underground Space Technology.

[41]  Qixiang Yan,et al.  Model tests on longitudinal surface settlement caused by shield tunnelling in sandy soil , 2019, Sustainable Cities and Society.

[42]  Min Wu,et al.  Establishing a Dynamic Self-Adaptation Learning Algorithm of the BP Neural Network and Its Applications , 2015, Int. J. Bifurc. Chaos.