Multifactorial analysis of a gateroad stability at goaf interface during longwall coal mining – A case study DOI Creative Commons
Dmytro Babets,

Olena Sdvyzhkova,

Serhii Hapieiev

et al.

Mining of Mineral Deposits, Journal Year: 2023, Volume and Issue: 17(2), P. 9 - 19

Published: June 30, 2023

Purpose. Creating a generalized algorithm to account for factors (coal seam thickness, enclosed rock mechanical properties, the dimension and bearing capacity of artificial support patterns) causing gateroad state under effect longwall face goaf. Methods. The assessment stability is based on numerical simulation stress-strain (SSS). finite element method used find out changes in SSS surrounding rocks at various stages mining. elastic-plastic constitutive model Hoek-Brown failure criterion implemented codes RS2 RS3 (Rocscience) are applied determine displacements dependently coal strength, width strength (a packwall comprised hardening mixture “BI-lining”). To specify properties material series experimental tests were conducted. A computational experiment dealing with 81 combinations affecting was carried estimate roof slag floor heaving behind face. group data handling (GMDH ) employed generalize relationships between factors. Findings. roof-to-floor closure has been determined intersection goaf packwall, material. It revealed that gains value 30 MPa 3rd day from its beginning use which fully corresponding requirements protective capacity. possibility using untreated mine water liquefy proved, allows simplifying optimizing solute mixing pumping technology. Originality. This study contributes improving understanding influence underground mining operations highlights importance utilizing simulations designs. impact each factor resulting variable (decrease cross-section gate road by height) combinatorial structural identification estimated as follows: 48%, thickness 25%, enclosing 23%, 4%. Practical implications. findings provide stakeholders technique reasonable parameters systems, predictive developed can be mitigate potential instability issues excavations. results have implications similar geological settings valuable design optimization other regions.

Language: Английский

Improved prediction of slope stability using a hybrid stacking ensemble method based on finite element analysis and field data DOI Creative Commons
Navid Kardani, Annan Zhou, Majidreza Nazem

et al.

Journal of Rock Mechanics and Geotechnical Engineering, Journal Year: 2020, Volume and Issue: 13(1), P. 188 - 201

Published: Nov. 23, 2020

Slope failures lead to catastrophic consequences in numerous countries and thus the stability assessment for slopes is of high interest geotechnical geological engineering researches. A hybrid stacking ensemble approach proposed this study enhancing prediction slope stability. In approach, we used an artificial bee colony (ABC) algorithm find out best combination base classifiers (level 0) determined a suitable meta-classifier 1) from pool 11 individual optimized machine learning (OML) algorithms. Finite element analysis (FEA) was conducted order form synthetic database training stage (150 cases) model while 107 real field cases were testing stage. The results by then compared with that obtained OML methods using confusion matrix, F1-score, area under curve, i.e. AUC-score. comparisons showed significant improvement ability has been achieved (AUC = 90.4%), which 7% higher than 82.9%). Then, further comparison undertaken between method basic classifier on prediction. prominent performance over method. Finally, importance variables studied linear vector quantization (LVQ)

Language: Английский

Citations

202

Risk assessment and management of excavation system based on fuzzy set theory and machine learning methods DOI
Song-Shun Lin, Shui‐Long Shen, Annan Zhou

et al.

Automation in Construction, Journal Year: 2020, Volume and Issue: 122, P. 103490 - 103490

Published: Dec. 28, 2020

Language: Английский

Citations

195

Deep learning analysis for energy consumption of shield tunneling machine drive system DOI
Khalid Elbaz, Tao Yan, Annan Zhou

et al.

Tunnelling and Underground Space Technology, Journal Year: 2022, Volume and Issue: 123, P. 104405 - 104405

Published: Feb. 8, 2022

Language: Английский

Citations

81

Ensemble learning framework for landslide susceptibility mapping: Different basic classifier and ensemble strategy DOI Creative Commons
Taorui Zeng, Liyang Wu, Dario Peduto

et al.

Geoscience Frontiers, Journal Year: 2023, Volume and Issue: 14(6), P. 101645 - 101645

Published: June 7, 2023

The application of ensemble learning models has been continuously improved in recent landslide susceptibility research, but most studies have no unified framework. Moreover, few papers discussed the applicability model mapping at township level. This study aims defining a robust framework that can become benchmark method for future research dealing with comparison different models. For this purpose, present work focuses on three basic classifiers: decision tree (DT), support vector machine (SVM), and multi-layer perceptron neural network (MLPNN) two homogeneous such as random forest (RF) extreme gradient boosting (XGBoost). hierarchical construction deep relied leading technologies (i.e., homogeneous/heterogeneous bagging, boosting, stacking strategy) to provide more accurate effective spatial probability occurrence. selected area is Dazhou town, located Jurassic red-strata Three Gorges Reservoir Area China, which strategic economic currently characterized by widespread risk. Based long-term field investigation, inventory counting thirty-three slow-moving polygons was drawn. results show do not necessarily perform better; instance, Bagging based DT-SVM-MLPNN-XGBoost performed worse than single XGBoost model. Amongst eleven tested models, Stacking RF-XGBoost model, ensemble, showed highest capability predicting landslide-affected areas. Besides, factor behaviors DT, SVM, MLPNN, RF reflected characteristics landslides reservoir area, wherein unfavorable lithological conditions intense human engineering activities water level fluctuation, residential construction, farmland development) are proven be key triggers. presented approach could used occurrence prediction similar regions other fields.

Language: Английский

Citations

76

Permeability prediction of heterogeneous carbonate gas condensate reservoirs applying group method of data handling DOI

Masoud Zanganeh Kamali,

Shadfar Davoodi, Hamzeh Ghorbani

et al.

Marine and Petroleum Geology, Journal Year: 2022, Volume and Issue: 139, P. 105597 - 105597

Published: Feb. 22, 2022

Language: Английский

Citations

72

Deep learning technologies for shield tunneling: Challenges and opportunities DOI
Cheng Zhou,

Yuyue Gao,

Elton J. Chen

et al.

Automation in Construction, Journal Year: 2023, Volume and Issue: 154, P. 104982 - 104982

Published: June 27, 2023

Language: Английский

Citations

57

Deep reinforcement learning approach to optimize the driving performance of shield tunnelling machines DOI
Khalid Elbaz, Annan Zhou, Shui‐Long Shen

et al.

Tunnelling and Underground Space Technology, Journal Year: 2023, Volume and Issue: 136, P. 105104 - 105104

Published: March 21, 2023

Language: Английский

Citations

43

Machine learning and interactive GUI for concrete compressive strength prediction DOI Creative Commons
Mohamed Kamel Elshaarawy, Mostafa M. Alsaadawi, Abdelrahman Kamal Hamed

et al.

Scientific Reports, Journal Year: 2024, Volume and Issue: 14(1)

Published: July 19, 2024

Concrete compressive strength (CS) is a crucial performance parameter in concrete structure design. Reliable prediction reduces costs and time design prevents material waste from extensive mixture trials. Machine learning techniques solve structural engineering challenges such as CS prediction. This study used Learning (ML) models to enhance the of CS, analyzing 1030 experimental data ranging 2.33 82.60 MPa previous research databases. The ML included both non-ensemble ensemble types. were regression-based, evolutionary, neural network, fuzzy-inference-system. Meanwhile, consisted adaptive boosting, random forest, gradient boosting. There eight input parameters: cement, blast-furnace-slag, aggregates (coarse fine), fly ash, water, superplasticizer, curing days, with output. Comprehensive evaluations include visual quantitative methods k-fold cross-validation assess study's reliability accuracy. A sensitivity analysis using Shapley-Additive-exPlanations (SHAP) was conducted understand better how each variable affects CS. findings showed that Categorical-Gradient-Boosting (CatBoost) model most accurate during testing stage. It had highest determination-coefficient (R

Language: Английский

Citations

38

Hybrid LBM and machine learning algorithms for permeability prediction of porous media: A comparative study DOI
Qing Kang, K.K. Li, Jinlong Fu

et al.

Computers and Geotechnics, Journal Year: 2024, Volume and Issue: 168, P. 106163 - 106163

Published: Feb. 19, 2024

Language: Английский

Citations

28

Enhancing Discharge Prediction over Type-A Piano Key Weirs: An Innovative Machine Learning Approach DOI

Wei‐Ming Tian,

Haytham F. Isleem,

Abdelrahman Kamal Hamed

et al.

Flow Measurement and Instrumentation, Journal Year: 2024, Volume and Issue: 100, P. 102732 - 102732

Published: Nov. 4, 2024

Language: Английский

Citations

18