Danial Jahed Armaghani

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Jahed Armaghani

Publications in SciGraph latest 50 shown

  • 2021-03-26 Load carrying capacity assessment of thin-walled foundations: an ANFIS–PNN model optimized by genetic algorithm in ENGINEERING WITH COMPUTERS
  • 2020-11-06 Application of Tree-Based Predictive Models to Forecast Air Overpressure Induced by Mine Blasting in NATURAL RESOURCES RESEARCH
  • 2020-09-04 A new hybrid model of information entropy and unascertained measurement with different membership functions for evaluating destressability in burst-prone underground mines in ENGINEERING WITH COMPUTERS
  • 2020-05-25 Two novel combined systems for predicting the peak shear strength using RBFNN and meta-heuristic computing paradigms in ENGINEERING WITH COMPUTERS
  • 2020-04-12 A Novel Intelligent ELM-BBO Technique for Predicting Distance of Mine Blasting-Induced Flyrock in NATURAL RESOURCES RESEARCH
  • 2020-03-27 Developing a hybrid model of salp swarm algorithm-based support vector machine to predict the strength of fiber-reinforced cemented paste backfill in ENGINEERING WITH COMPUTERS
  • 2020-03-02 A novel approach for forecasting of ground vibrations resulting from blasting: modified particle swarm optimization coupled extreme learning machine in ENGINEERING WITH COMPUTERS
  • 2020-02-13 Design and implementation of a new tuned hybrid intelligent model to predict the uniaxial compressive strength of the rock using SFS-ANFIS in ENGINEERING WITH COMPUTERS
  • 2020-01-10 Investigating the effective parameters on the risk levels of rockburst phenomena by developing a hybrid heuristic algorithm in ENGINEERING WITH COMPUTERS
  • 2020-01-09 A new hybrid simulated annealing-based genetic programming technique to predict the ultimate bearing capacity of piles in ENGINEERING WITH COMPUTERS
  • 2020-01-02 Random Forest and Bayesian Network Techniques for Probabilistic Prediction of Flyrock Induced by Blasting in Quarry Sites in NATURAL RESOURCES RESEARCH
  • 2019-12-21 Evaluation and Optimization of Prediction of Toe that Arises from Mine Blasting Operation Using Various Soft Computing Techniques in NATURAL RESOURCES RESEARCH
  • 2019-12-12 A new design of evolutionary hybrid optimization of SVR model in predicting the blast-induced ground vibration in ENGINEERING WITH COMPUTERS
  • 2019-12-10 Forecasting of TBM advance rate in hard rock condition based on artificial neural network and genetic programming techniques in BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT
  • 2019-11-12 Strength evaluation of granite block samples with different predictive models in ENGINEERING WITH COMPUTERS
  • 2019-10-30 Applying a meta-heuristic algorithm to predict and optimize compressive strength of concrete samples in ENGINEERING WITH COMPUTERS
  • 2019-09-17 Prediction of Lateral Deflection of Small-Scale Piles Using Hybrid PSO–ANN Model in ARABIAN JOURNAL FOR SCIENCE AND ENGINEERING
  • 2019-08-21 A new development of ANFIS–GMDH optimized by PSO to predict pile bearing capacity based on experimental datasets in ENGINEERING WITH COMPUTERS
  • 2019-07-15 Use of Intelligent Methods to Design Effective Pattern Parameters of Mine Blasting to Minimize Flyrock Distance in NATURAL RESOURCES RESEARCH
  • 2019-07-03 Deep neural network and whale optimization algorithm to assess flyrock induced by blasting in ENGINEERING WITH COMPUTERS
  • 2019-05-17 Application of deep neural networks in predicting the penetration rate of tunnel boring machines in BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT
  • 2019-05-11 Development of a novel hybrid intelligent model for solving engineering problems using GS-GMDH algorithm in ENGINEERING WITH COMPUTERS
  • 2019-05-10 The effects of ABC, ICA, and PSO optimization techniques on prediction of ripping production in ENGINEERING WITH COMPUTERS
  • 2019-04-27 Neuro-genetic, neuro-imperialism and genetic programing models in predicting ultimate bearing capacity of pile in ENGINEERING WITH COMPUTERS
  • 2019-02-27 Developing a new intelligent technique to predict overbreak in tunnels using an artificial bee colony-based ANN in ENVIRONMENTAL EARTH SCIENCES
  • 2018-07-28 Predicting tunnel boring machine performance through a new model based on the group method of data handling in BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT
  • 2018-05-28 Applying various hybrid intelligent systems to evaluate and predict slope stability under static and dynamic conditions in SOFT COMPUTING
  • 2018-01-16 A Risk-Based Technique to Analyze Flyrock Results Through Rock Engineering System in GEOTECHNICAL AND GEOLOGICAL ENGINEERING
  • 2017-11-16 Optimizing an ANN model with ICA for estimating bearing capacity of driven pile in cohesionless soil in ENGINEERING WITH COMPUTERS
  • 2017-09-04 Applications of Particle Swarm Optimization in Geotechnical Engineering: A Comprehensive Review in GEOTECHNICAL AND GEOLOGICAL ENGINEERING
  • 2017-08-03 A new developed approach for the prediction of ground vibration using a hybrid PSO-optimized ANFIS-based model in ENVIRONMENTAL EARTH SCIENCES
  • 2017-07-17 Prediction of an environmental issue of mine blasting: an imperialistic competitive algorithm-based fuzzy system in INTERNATIONAL JOURNAL OF ENVIRONMENTAL SCIENCE AND TECHNOLOGY
  • 2017-07-01 A neuro-genetic predictive model to approximate overbreak induced by drilling and blasting operation in tunnels in BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT
  • 2017-06-23 Performance prediction of tunnel boring machine through developing a gene expression programming equation in ENGINEERING WITH COMPUTERS
  • 2017-05-10 Ripping Production Prediction in Different Weathering Zones According to Field Data in GEOTECHNICAL AND GEOLOGICAL ENGINEERING
  • 2017-03-22 Uniaxial compressive strength prediction through a new technique based on gene expression programming in NEURAL COMPUTING AND APPLICATIONS
  • 2016-11-29 Intelligent modelling of sandstone deformation behaviour using fuzzy logic and neural network systems in BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT
  • 2016-09-14 Airblast prediction through a hybrid genetic algorithm-ANN model in NEURAL COMPUTING AND APPLICATIONS
  • 2016-07-11 Prediction of the durability of limestone aggregates using computational techniques in NEURAL COMPUTING AND APPLICATIONS
  • 2016-06-17 Application of PSO to develop a powerful equation for prediction of flyrock due to blasting in NEURAL COMPUTING AND APPLICATIONS
  • 2016-04-28 Prediction of air-overpressure caused by mine blasting using a new hybrid PSO–SVR model in ENGINEERING WITH COMPUTERS
  • 2016-04-27 Risk assessment and prediction of rock fragmentation produced by blasting operation: a rock engineering system in ENVIRONMENTAL EARTH SCIENCES
  • 2016-04-11 Prediction of ground vibration due to quarry blasting based on gene expression programming: a new model for peak particle velocity prediction in INTERNATIONAL JOURNAL OF ENVIRONMENTAL SCIENCE AND TECHNOLOGY
  • 2016-04-06 Modification and prediction of blast-induced ground vibrations based on both empirical and computational techniques in ENGINEERING WITH COMPUTERS
  • 2016-04-01 Development of a new model for predicting flyrock distance in quarry blasting: a genetic programming technique in BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT
  • 2016-03-28 Feasibility of PSO-ANN model for predicting surface settlement caused by tunneling in ENGINEERING WITH COMPUTERS
  • 2016-01-18 Estimation of air-overpressure produced by blasting operation through a neuro-genetic technique in ENVIRONMENTAL EARTH SCIENCES
  • 2016-01-07 Rock strength assessment based on regression tree technique in ENGINEERING WITH COMPUTERS
  • 2015-10-31 Several non-linear models in estimating air-overpressure resulting from mine blasting in ENGINEERING WITH COMPUTERS
  • 2015-10-14 Developing a hybrid PSO–ANN model for estimating the ultimate bearing capacity of rock-socketed piles in NEURAL COMPUTING AND APPLICATIONS
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