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Unit 3: Linear Programming Problem – Simplex Method




          Step 5: Third iteration of Simplex Method.                                            Notes
            BV    CB        XB          y1         y2       S1   S2      Min. Ratio
             y2   3      9/3.8 = 2.37   0      3.8/3.8 = 1   -    -          -
             y1   5     2 –2.37(0.4) =   1    0.4 –1(0.4) = 0   -   -        -
                           1.052
                            Zj          5          3
                            Cj          5          3
                           Zj – Cj      0          0

               Therefore, Maximise Z   = C X
                                      B  B
                                         = (3 × 2.37) + (5 × 1.052)
                Maximum value of‘Z’ = 12.37





             Notes  Real life complex applications usually involve hundreds of constraints and thousands
             of variables. So, virtually these problems  cannot be solved manually. For solving  such
             problems, you will have to rely on employing an electronic computer.

          Self Assessment

          1.   Solve the following LPP problem using simplex method.
               Maximize ‘Z’ = 7x  + 5x               [Subject to constraints]
                             1    2
                         x  + x  6
                         1   2
                         4x  + 3x   12
                          1    2
               Where,    x , x   0                  [Non-negativity constraints]
                         1  2
          2.   Solve the following LPP problem using simplex method.
               Maximise          ‘Z’  = 5x  + 7x     [Subject to constraints]
                                   1   2
                                = x  + x   4
                                  1   2
                                = 3x  – 8x   24
                                   1   2
                                = 10x  + 7x   35
                                    1   2
               Where,           x , x   0           [Non-negativity constraints]
                                 1  2
          3.1.2  Minimization Cases



                Example:
          Minimize                  ‘Z’ = – x  – 2x  [Subject to constraints]
                                         1   2
                             – x  + 3x   10
                                1   2
                               x  + x   6
                                1   2
                                x  – x   2
                                 1  2
                     Where, x , x   0            [Non-negativity constraints]
                            1  2



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