Mohammad Mirzehicover image
Mohammad Mirzehiavatar

Mohammad Mirzehi

I am a highly motivated researcher with four years of experience in Mine Planning, Operations Research, Data Science, and Machine Learning. I possess a strong ability to think creatively and have a track record of producing impactful results. I am always eager to discover and grow, and I approach challenges with a positive attitude.
Living in : Iran
Gender : MaleRace : Middle Eastern
Academic Profile
Posts

Contact Information

-Email
live:.cid.48a2c10033a402e6Skype ID
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MohammadMirzehiApplyChance Link

Educations

Tarbiat Modares University logo
Mining EngineeringMaster'sTarbiat Modares University2021-09-15 Iran
Supervisor's name :Dr. Mojtaba Rezakhah
Title :
Short-term Planning in Open-Pit Mines Considering Machine Performance
Amirkabir University of Technology logo
Mining EngineeringBachelor'sAmirkabir University of Technology2018-09-11 Iran
Supervisor's name :Prof. Morteza Osanloo
Title :
Sustainable Development and Environmental assessment of Mining Activities in Sangan Iron Mine

Work Experiences

Research Project
at Dr. Ali Moradi Afrapoli,
I am currently working in this role
Research Assistance
at Department of Mining Engi
I am currently working in this role
Teaching Assistant
at Department of Mining Engi
I am currently working in this role
Research Development
at Vira Pasargad Company
Start : 31-May-2020
End : 30-Jul-2022

Journal Publications

Publication Title :
Incorporating grade uncertainty into open-pit long-term production planning using loss and profit functionsThird author
Journal :
International Journal of Mining and Geo-Engineering
Link :
Publication Title :
A hybrid model for Backbreak prediction using XGBoost machine learning and metaheuristic algorithms in Chadormalu iron mineSecond author
Link :
Publication Title :
Prediction of blast-induced air overpressure using a hybrid machine learning model and gene expression programming (GEP): A case study from an iron ore mineFirst author
Link :
Publication Title :
Application of XGB-based metaheuristic techniques for prediction time-to-failure of mining machineryFirst author
Link :
Publication Title :
A novel hybrid XGBoost methodology in predicting penetration rate of rotary based on rock-mass and material propertiesFirst author
Journal :
Arabian Journal for Science and Engineering
Link :

Research Keywords

Machine Learning
operation research
Data Analysis
Sustainable Development
mine planning
environmental assessment

Awards

First Rank Student in UniversityMaster
Tuition-Waiver Bachelor Degree2014-08-31
Tuition-Waiver Master degree2018-09-01

References

Amin Mousavi
mousavi@modares.ac.ir
Mojtaba Rezakhah
rezakhah@modares.ac.ir
Ali Moradi Afrapoli
ali.moradi@gmn.ulaval.ca
Ahmadreza Sayadi
sayadi@modares.ac.ir