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Modeling in Xpress-SP

Xpress-SP is an extension to the Mosel language for expressing stochastic concepts in a clear and concise fashion. "mmsp", an extension module for Xpress-Mosel, provides stochastic data types and language components for building stochastic models with familiar Mosel style modeling, several scenario tree building tools, and various advanced features.

The following new types are defined in Xpress-SP:
  • sprand : Random variable that takes different values with certain probability, e.g., demand.
  • sprandexp : Random expression built using reals and sprands.
  • spvar : Stochastic decision variable that takes different values in different scenarios or at different nodes in the scenario tree.
  • splinctr : Stochastic constraint built with reals, sprands, sprandexps, and spvars.


  • Random Events

    Random event e.g. movement of market may give rise to random demand occurring over multiple stages.

    One may create event models e.g. Demand process-

    as follows:



    Scenario tree

    Discretized random events can be used to generate scenario trees. Shown below is the exhaustive generation of binary tree from the distributions of movements belonging to {1 w.p .5, -1 w.p .5} corresponding to up and down movement of market respectively with equal probability.



    Exhaustive, symmetric, and explicit scenario tree generation are provided in Xpress-SP. Additionally, techniques such as deletion and aggregation may also be used for scenario manipulation and can be visualized in IVE.

    Stochastic variables and constraints

    The stochastic variables are associated with stages depending on the occurrence of random events.

    The constraints may contain reals, sprands, and sprandexps as coefficients.

    Solving: The problem is parsed internally into deterministic equivalent problem depending on whether it is scenario based or node based. One can use primal, dual or barrier algorithm to solve the multi-stage lp, or use MIP B&B technique to solve the parsed MILP.

    Advanced features

    One can also create:
  • non-linear random expression and functions with breaks
  • scenario trees with trap stages
  • fix decision variables and hide constraints
  • solve related problems such as expected value and perfect information
  • solve chance constraint problems
  •  


    Related Topics
    Xpress-SP Overview
    Visualization
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