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Linear Programming

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Linear Programming Optimal Solutions and Models Without Unique Optimal Solutions Models With No Solutions - Infeasibility Max 8X1 + 5X2 s.t. 2X1 + 1X2 1000 3X1 ... – PowerPoint PPT presentation

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Title: Linear Programming


1
Linear Programming
  • Optimal Solutions
  • andModels Without Unique Optimal Solutions

2
Models With No Solutions- Infeasibility
  • Max 8X1 5X2
  • s.t. 2X1 1X2 1000
  • 3X1 4X2 2400
  • X1 - X2 350
  • X1 800
  • X1, X2 0

3
Solver - Infeasible
  •                      

4
Solver Results
5
Infeasibility
  • Excel When Solve is clicked
  • A problem is infeasible when there are no
    solutions that satisfy all the constraints.
  • Infeasibility can occur from
  • Input Error
  • Mis-formulation
  • Simply an inconsistent set of constraints

6
Models With An Unbounded Solution
  • Max 8X1 5X2
  • s.t. X1 - X2 350
  • X1 200
  • X2 200

7
Solver - Unbounded
  •                      

8
Solver Results - Unbounded
9
Unboundedness
  • An unbounded solution means you left out some
    constraints you cannot make an infinite
    profit.
  • Excel When Solve is clicked

Means the problem is unbounded
10
Multiple Optimal Solutions
  • Max 8X1 4X2
  • s.t. 2X1 1X2 1000
  • 3X1 4X2 2400
  • X1 - X2 350
  • X1, X2 0

11
Multiple Optimal Solutions
  • When slope of objective function line equals
    slope of binding constraint the problem can have
    multiple optimal solutions.
  • The slope of a line written as aX1 bX2 d
  • is
  • Object function
  • 8X1 4X2 Slope is -8/4 -2
  • Plastic constraint
  • 2X1 1X2 1000 Slope is -2/1 -2

-a/b
12
Multiple Optimal Solutions
  • The constraint must not be a redundant constraint
    but must be a boundary constraint.
  • The objective function must move in the direction
    of the constraint
  • In the previous example if the objective function
    had been MIN 8X1 4X2, then it is moved in the
    opposite direction of the constraint and (0,0)
    would be the optimal solution.
  • Multiple optimal solutions allow the decision
    maker to use secondary criteria to select one of
    the optimal solutions that has another desirable
    characteristic (e.g. Max X1 or X1 3X2, etc.)

13
Alternate Optimal Solution
  • To find the second optimal solution
  • Observe that an Allowable Increase or Allowable
    Decrease for the objective function coefficient
    of some variable Xj is 0
  • Add a constraint that sets the value function
    cell to the optimal value from the first optimal
    solution.
  • Change objective function to
  • If the Allowable Increase 0, change objective
    to maximize Xj
  • If the Allowable Decrease 0, change objective
    to minimize Xj

14
Original Optimal Solution in Excel
15
Multiple Optimal Solutions in Excel
  • Excel Identification of multiple solutions

16
Alternate Optimal Solution in Excel
17
Generating the Multiple Optimal Solutions
  • Any weighted average of optimal solutions is also
    optimal.
  • In the previous example it can be shown that the
    two optimal extreme points are (320,360) and
    (450, 100).
  • Thus .5(320,360) .5(450,100) (385,230) is
    also an optimal point that is half-way between
    these two points.
  • .8(320,360) .2(450,100) (346,308) is also an
    optimal point that is 8/10 of the way up the line
    toward (320,360).

18
Review
  • When a linear programming model is solved it
  • Has a unique optimal solution
  • Has multiple optimal solutions
  • Is infeasible
  • Is unbounded
  • Identification of each
  • By Excel
  • Find alternative solutions for multiple optimal
    solutions problem
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