A Multi-Objective Optimization Model Using Improved NSGA-II for Optimizing Metal Mines Production Process

@article{Gu2020AMO,
  title={A Multi-Objective Optimization Model Using Improved NSGA-II for Optimizing Metal Mines Production Process},
  author={X. Gu and Xunhong Wang and Z. Liu and Wenhua Zha and Xiaochuan Xu and Minggui Zheng},
  journal={IEEE Access},
  year={2020},
  volume={8},
  pages={28847-28858}
}
  • X. Gu, Xunhong Wang, +3 authors Minggui Zheng
  • Published 2020
  • Computer Science
  • IEEE Access
  • Production process optimization is an indispensable step in industrial production. The optimization of the metal mines production process (MMPP) can increase production efficiency and thus promote the utilization rate of the metal mineral resources in the frame work of sustainable development. This study establishes a multi-objective optimization model for optimizing the MMPP by maximizing economic and resource benefits. To get better non-dominated Pareto optimal solutions, an improved non… CONTINUE READING
    2 Citations
    Effect of genetic algorithm in optimizing deep foundation pit supporting structure
    • H. Wang
    • Arabian Journal of Geosciences
    • 2021

    References

    SHOWING 1-10 OF 45 REFERENCES
    Multiobjective Production Planning Optimization Using Hybrid Evolutionary Algorithms for Mineral Processing
    • 52
    Dynamic Evolutionary Multiobjective Optimization for Raw Ore Allocation in Mineral Processing
    • 8
    A hybrid intelligent optimization method for multiple metal grades optimization
    • 6
    Cutoff grade optimization in open pit mines using genetic algorithm
    • 20
    An improved gradient-based NSGA-II algorithm by a new chaotic map model
    • 3
    Intelligent integrated optimization of mining and ore-dressing grades in metal mines
    • 5
    A modified differential evolution algorithm for unconstrained optimization problems
    • 59