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File: Linear Programming Graphical Method Problems With Solutions Pdf 175248 | Ch02==introduction To Lp And Applications 0
an introduction to linear programming linear programming problem problem formulation a maximization problem graphical solution procedure extreme points and the optimal solution computer solutions a minimization problem special cases linear ...

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              An Introduction to Linear Programming
             Linear Programming Problem
             Problem Formulation
             A Maximization Problem
             Graphical Solution Procedure
             Extreme Points and the Optimal Solution
             Computer Solutions
             A Minimization Problem
             Special Cases
             Linear Programming Applications
                 Linear Programming (LP) Problem
             The maximizationor minimization of some quantity is 
              the objective in all linear programming problems.
             All LP problems have constraints that limit the degree 
              to which the objective can be pursued.
             A feasible solution satisfies all the problem's 
              constraints.
             An optimal solution is a feasible solution that results in 
              the largest possible objective function value when 
              maximizing (or smallest when minimizing).
             A graphical solution method can be used to solve a 
              linear program with two variables.
                                               1
                 Linear Programming (LP) Problem
             If both the objective function and the constraints are 
              linear, the problem is referred to as a linear 
              programming problem.
             Linear functions are functions in which each variable 
              appears in a separate term raised to the first power and 
              is multiplied by a constant (which could be 0).
             Linear constraints are linear functions that are restricted 
              to be "less than or equal to", "equal to", or "greater than 
              or equal to" a constant.
                    Problem Formulation
             Problem formulation or modeling is the process of 
              translating a verbal statement of a problem into a 
              mathematical statement.
                                               2
                                                            Guidelines for Model Formulation
                                             Understand the problem thoroughly.
                                             Describe the objective.
                                             Describe each constraint.
                                             Define the decision variables.
                                             Write the objective in terms of the decision variables.
                                             Write the constraints in terms of the decision variables.
                                                         Example 1:  A Maximization Problem
                                            LP Formulation
                                                                     Max       5x1 + 7x2
                                                                     s.t.            x1           <6
                                                                                  2x1 + 3x2 <19
                                                                                    x1 +   x2 <8
                                                                                         x1, x2 >0
                                                                                                                                                                     3
                                                                                                                Example 1:  Graphical Solution
                                                                                Constraint #1 Graphed
                                                                                                          x2
                                                                                                         8
                                                                                                         7
                                                                                                         6                                                                               x1 <6
                                                                                                         5
                                                                                                         4
                                                                                                         3
                                                                                                         2                                                                       (6, 0)
                                                                                                         1
                                                                                                                    1        2         3         4         5         6         7         8         9         10         x1
                                                                                                                Example 1:  Graphical Solution
                                                                                Constraint #2 Graphed
                                                                                                          x2
                                                                                                         8              (0, 6 1/3)
                                                                                                         7
                                                                                                         6
                                                                                                         5
                                                                                                         4                                                                               2x1 + 3x2 <19
                                                                                                         3
                                                                                                         2                                                                                                       (9 1/2, 0)
                                                                                                         1
                                                                                                                    1        2         3         4         5         6         7         8         9         10         x1
                                                                                                                                                                                                                                                                                                        4
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