Mahdi Hasanipanah


Ontology type: schema:Person     


Person Info

NAME

Mahdi

SURNAME

Hasanipanah

Publications in SciGraph latest 50 shown

  • 2022-04-28 A novel TS Fuzzy-GMDH model optimized by PSO to determine the deformation values of rock material in NEURAL COMPUTING AND APPLICATIONS
  • 2021-11-01 An indirect measurement of rock tensile strength through optimized relevance vector regression models, a case study in ENVIRONMENTAL EARTH SCIENCES
  • 2021-07-06 A Novel Combination of Gradient Boosted Tree and Optimized ANN Models for Forecasting Ground Vibration Due to Quarry Blasting in NATURAL RESOURCES RESEARCH
  • 2021-04-27 Integrating the LSSVM and RBFNN models with three optimization algorithms to predict the soil liquefaction potential in ENGINEERING WITH COMPUTERS
  • 2021-03-14 A novel solution for simulating air overpressure resulting from blasting using an efficient cascaded forward neural network in ENGINEERING WITH COMPUTERS
  • 2021-03-08 Improving the performance of LSSVM model in predicting the safety factor for circular failure slope through optimization algorithms in ENGINEERING WITH COMPUTERS
  • 2021-01-16 A novel systematic and evolved approach based on XGBoost-firefly algorithm to predict Young’s modulus and unconfined compressive strength of rock in ENGINEERING WITH COMPUTERS
  • 2021-01-02 An integrated approach of ANFIS-grasshopper optimization algorithm to approximate flyrock distance in mine blasting in ENGINEERING WITH COMPUTERS
  • 2020-11-04 A new auto-tuning model for predicting the rock fragmentation: a cat swarm optimization algorithm in ENGINEERING WITH COMPUTERS
  • 2020-10-28 A GMDH Predictive Model to Predict Rock Material Strength Using Three Non-destructive Tests in JOURNAL OF NONDESTRUCTIVE EVALUATION
  • 2020-10-13 Prediction of Blast-Induced Ground Vibration in a Mine Using Relevance Vector Regression Optimized by Metaheuristic Algorithms in NATURAL RESOURCES RESEARCH
  • 2020-09-18 Automated design of a new integrated intelligent computing paradigm for constructing a constitutive model applicable to predicting rock fractures in ENGINEERING WITH COMPUTERS
  • 2020-08-03 Nonlinear models based on enhanced Kriging interpolation for prediction of rock joint shear strength in NEURAL COMPUTING AND APPLICATIONS
  • 2020-07-13 An ANN-adaptive dynamical harmony search algorithm to approximate the flyrock resulting from blasting in ENGINEERING WITH COMPUTERS
  • 2020-06-10 Stochastic fractal search-tuned ANFIS model to predict blast-induced air overpressure 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
  • 2020-05-14 A SVR-GWO technique to minimize flyrock distance resulting from blasting in BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT
  • 2020-03-09 Predicting ground vibration induced by rock blasting using a novel hybrid of neural network and itemset mining in NEURAL COMPUTING AND APPLICATIONS
  • 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
  • 2020-01-23 Predicting the blast-induced vibration velocity using a bagged support vector regression optimized with firefly algorithm in ENGINEERING WITH COMPUTERS
  • 2020-01-20 A Fuzzy Rule-Based Approach to Address Uncertainty in Risk Assessment and Prediction of Blast-Induced Flyrock in a Quarry in NATURAL RESOURCES RESEARCH
  • 2020-01-13 Developing a new uncertain rule-based fuzzy approach for evaluating the blast-induced backbreak in ENGINEERING WITH COMPUTERS
  • 2019-12-12 A new design of evolutionary hybrid optimization of SVR model in predicting the blast-induced ground vibration in ENGINEERING WITH COMPUTERS
  • 2019-11-28 Prediction of Vibration Velocity Generated in Mine Blasting Using Support Vector Regression Improved by Optimization Algorithms in NATURAL RESOURCES RESEARCH
  • 2019-09-10 GA-SVR: a novel hybrid data-driven model to simulate vertical load capacity of driven piles in ENGINEERING WITH COMPUTERS
  • 2019-08-02 ORELM: A Novel Machine Learning Approach for Prediction of Flyrock in Mine Blasting in NATURAL RESOURCES RESEARCH
  • 2019-07-16 Performance evaluation of hybrid FFA-ANFIS and GA-ANFIS models to predict particle size distribution of a muck-pile after blasting in ENGINEERING WITH COMPUTERS
  • 2019-07-03 Intelligent Prediction of Blasting-Induced Ground Vibration Using ANFIS Optimized by GA and PSO in NATURAL RESOURCES RESEARCH
  • 2019-05-11 Development of a novel hybrid intelligent model for solving engineering problems using GS-GMDH algorithm in ENGINEERING WITH COMPUTERS
  • 2019-03-11 Novel approach for forecasting the blast-induced AOp using a hybrid fuzzy system and firefly algorithm in ENGINEERING WITH COMPUTERS
  • 2018-12-14 An intelligent based-model role to simulate the factor of safe slope by support vector regression in ENGINEERING WITH COMPUTERS
  • 2018-10-31 Simulating the peak particle velocity in rock blasting projects using a neuro-fuzzy inference system in ENGINEERING WITH COMPUTERS
  • 2018-05-21 Development of GP and GEP models to estimate an environmental issue induced by blasting operation in ENVIRONMENTAL MONITORING AND ASSESSMENT
  • 2018-01-16 Proposing a novel hybrid intelligent model for the simulation of particle size distribution resulting from blasting in ENGINEERING WITH COMPUTERS
  • 2018-01-16 A Risk-Based Technique to Analyze Flyrock Results Through Rock Engineering System in GEOTECHNICAL AND GEOLOGICAL ENGINEERING
  • 2017-12-08 Proposing a new model to approximate the elasticity modulus of granite rock samples based on laboratory tests results in BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT
  • 2017-11-22 Developing a least squares support vector machine for estimating the blast-induced flyrock in ENGINEERING WITH COMPUTERS
  • 2017-11-20 Developing GPR model for forecasting the rock fragmentation in surface mines in ENGINEERING WITH COMPUTERS
  • 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
  • 2017-02-28 Estimation of blast-induced ground vibration through a soft computing framework in ENGINEERING WITH COMPUTERS
  • 2017-01-19 A Monte Carlo technique in safety assessment of slope under seismic condition in ENGINEERING WITH COMPUTERS
  • 2016-12-24 A hybrid artificial bee colony algorithm-artificial neural network for forecasting the blast-produced ground vibration in ENGINEERING WITH COMPUTERS
  • 2016-12-24 Development of a precise model for prediction of blast-induced flyrock using regression tree technique in ENVIRONMENTAL EARTH SCIENCES
  • 2016-12-02 Feasibility of PSO–ANFIS model to estimate rock fragmentation produced by mine blasting in NEURAL COMPUTING AND APPLICATIONS
  • 2016-09-14 Airblast prediction through a hybrid genetic algorithm-ANN model in NEURAL COMPUTING AND APPLICATIONS
  • 2016-08-30 Feasibility of ICA in approximating ground vibration resulting from mine blasting in NEURAL COMPUTING AND APPLICATIONS
  • 2016-08-30 Forecasting blast-induced ground vibration developing a CART model in ENGINEERING WITH COMPUTERS
  • 2016-08-20 Developing a new hybrid-AI model to predict blast-induced backbreak in ENGINEERING WITH COMPUTERS
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