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Operations Research




                    Notes          The transpose of this matrix which serves as the coefficient matrix for the dual problem is given
                                   by.

                                                          1 3
                                                    A      
                                                         2  4
                                   Step 6: The coefficients of the objective function for the given primal are –6 and 7. They are taken
                                   on the right hand side of the constraints for the dual problem. Hence, the constraints for the dual
                                   problem are represented as
                                                     –y  + 3y    –6
                                                       1    2
                                                     2y  + 4y    7
                                                       1    2
                                                         y , y   0
                                                          1  2
                                          Example 2: Find the dual of the following problem:

                                   Minimise                 Z = 3x  + 4x  + 5x
                                                                 1    2   3
                                   Subject to           x  + x    3
                                                        1   3
                                                        x  + x    4
                                                        2   3
                                                        x ,x ,x   0
                                                        1  2  3
                                   Solution: Let the given problem be denoted as primal. The objective of the primal is minimization
                                   and hence the objective of the dual is maximization. There are two constraints for the primal
                                   problem. Hence, the problem has 2  variables namely, y  and y . The right hand side of  the
                                                                                 1     2
                                   constraints are 3 and 4 which are the coefficients for y  and y  in the objective function for the
                                                                               1    2
                                   dual problem given as
                                   Maximise                 Z = 3y  + 4y
                                                                 1    2
                                   The coefficient of the objective function in the primal problem are 3, 4 and 5 which serve as the
                                   right hand side of the constraints for the dual problem. The inequalities of the constraints of the
                                   type () are converted as () type for the dual problem. The coefficient matrix for primal problem
                                   is
                                                                       1 0 1 
                                                                   A        
                                                                       0 1 1 
                                   And hence the coefficient matrix for the dual problem is
                                                                         1 0 
                                                                        
                                                                    A  1   0 1 
                                                                            
                                                                         1 1 
                                                                            
                                   Hence, the dual problem is represented as
                                   Maximise ‘Z’ = 3y  + 4y
                                                 1    2
                                   Subject to
                                          y  + y   3   is     y   3
                                           1  2                 1
                                          y  + y   4          y   4
                                           1  2                 2
                                          y  + y   5          y  + y   5
                                           1  2                 1   2
                                          y , y   0           y , y   0
                                           1  2                 1  2




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