• Title of article

    Enhanced-interval linear programming

  • Author/Authors

    Feng Zhou، نويسنده , , Gordon H. Huang، نويسنده , , Guoxian Chen، نويسنده , , Huai-Cheng Guo، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2009
  • Pages
    11
  • From page
    323
  • To page
    333
  • Abstract
    An enhanced-interval linear programming (EILP) model and its solution algorithm have been developed that incorporate enhanced-interval uncertainty (e.g., A±, B± and C±) in a linear optimization framework. As a new extension of linear programming, the EILP model has the following advantages. Its solution space is absolutely feasible compared to that of interval linear programming (ILP), which helps to achieve insight into the expected-value-oriented trade-off between system benefits and risks of constraint violations. The degree of uncertainty of its enhanced-interval objective function (EIOF) would be lower than that of ILP model when the solution space is absolutely feasible, and the EIOF’s expected value could be used as a criterion for generating the appropriate alternatives, which help decision-makers obtain non-extreme decisions. Moreover, because it can be decomposed into two submodels, EILP’s computational requirement is lower than that of stochastic and fuzzy LP models. The results of a numeric example further indicated the feasibility and effectiveness of EILP model. In addition, EI nonlinear programming models, hybrid stochastic or fuzzy EILP models as well as risk-based trade-off analysis for EI uncertainty within decision process can be further developed to improve its applicability.
  • Keywords
    Linear programming , Optimization , Feasibility , Risk-based decision making , Solution algorithm , Uncertainty
  • Journal title
    European Journal of Operational Research
  • Serial Year
    2009
  • Journal title
    European Journal of Operational Research
  • Record number

    1314002