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operationsresearch chapter1 linearprogrammingproblem prof bibhasc giri departmentofmathematics jadavpuruniversity kolkata india email bcgiri jumath gmail com introduction 1 0 linear programming lp is a popular tool for solving optimization problems of ...

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            OPERATIONSRESEARCH
                  Chapter1
         LinearProgrammingProblem
               Prof. BibhasC.Giri
             DepartmentofMathematics
                JadavpurUniversity
                 Kolkata,India
             Email: bcgiri.jumath@gmail.com
           Introduction
       1.0
       Linear programming (LP) is a popular tool for solving optimization problems of spe-
       cialkind. In1947,GeorgeBernardDantzigdevelopedanefficientmethod,thesimplex
       algorithm, for solving linear programming problem (LPP). Since the development of
       the simplex algorithm, LP has been used to solve optimization problems in industries
       as diverse as banking, education, forestry, petroleum, manufacturing, and trucking.
       Themostcommonproblemintheseindustriesinvolvesallocationoflimitedresources
       amongcompeting activities in the best possible (optimal) way. Real world situations
       where LP can be applied are thus diverse, ranging from the allocation of production
       facilities to products to the allocation of national resources to domestic needs, from
       portfolio selection to the selection of shipping patterns, and so on. In this unit, we
       will discuss the mathematical formulation of LPP, the graphical method for solving
       two-variable LPP, and simplex algorithm, duality, dual simplex and revised simplex
       methodsforsolvingLPPofanynumberofvariables.
             MODULE-1: Mathematical Formulation
             of LPP and Graphical Method for Solving
             LPP
             1.1   MathematicalFormulationofLPP
           TherearefourbasiccomponentsofanLPP:
           • Decision variables - The quantities that need to be determined in order to solve the
           LPParecalleddecisionvariables.
           •Objective function - The linear function of the decision variables, which is to be max-
           imized or minimized, is called the objective function.
           • Constraints - A constraint is something that plays the part of a physical, social or
           financial restriction such as labor, machine, raw material, space, money, etc. These
           limits are the degrees to which an objective can be achieved.
           • Sign restriction - If a decision variable x can only assume nonnegative values, then
                                            i
           weusethesignrestrictionxi ≥0. If a variable xi can assume positive, negative or zero
           values, then we say that xi is unrestricted in sign.
           Alinearprogrammingproblem(LPP)isanoptimizationprobleminwhich
           (i) the linear objective function is to be maximized (or minimized);
           (ii) the values of the decision variables must satisfy a set of constraints where each
           constraint must be a linear equation or linear inequality;
           (iii) A sign restriction must be associated with each decision variable.
           Two of the most basic concepts associated with LP are feasible region and optimal
                                             3
                       solution.
                       •Feasible region - The feasible region for an LPP is the set of all points that satisfy all
                       the constraints and sign restrictions.
                       • Optimal solution - For a maximization problem, an optimal solution is a point in
                       the feasible region with the largest value of the objective function. Similarly, for a
                       minimization problem, an optimal solution is a point in the feasible region with the
                       smallest value of the objective function.
                       1.1.1          GeneralLinearProgrammingProblem
                       Agenerallinearprogrammingproblemcanbemathematicallyrepresentedasfollows:
                                               Maximize(or Minimize)Z =c x +c x +...+c x
                                                                                                  1 1       2 2              n n
                                               subject to,
                                               a x +a x +a x +...+a x +...+a x (≤,=,≥) b
                                                 11 1        12 2         13 3              1j j              1n n                      1
                                               a x +a x +a x +...+a x +...+a x (≤,=,≥) b
                                                 21 1        22 2         23 3              2j j              2n n                      2
                                               .............................................................................................
                                               a x +a x +a x +...+a x +...+a x (≤,=,≥) b
                                                 i1 1        i2 2        i3 3              ij  j            in n                     i
                                               .............................................................................................
                                               a     x +a x +a x +...+a x +...+a x (≤,=,≥) b
                                                 m1 1         m2 2         m3 3                mj j              mn n                       m
                                               andx1,x2,...,xn ≥ 0
                             Theabovecanbewrittenincompactformas
                                                                                                              n
                                                          Maximize(or Minimize) Z =∑c x                                                                       (1.1)
                                                                                                                    j  j
                                                                                                             j=1
                                                          subject to,
                                                            n
                                                           ∑a x (≤,=,≥) b ; i =1,2,...,m                                                                      (1.2)
                                                                  ij  j                   i
                                                           j=1
                                                          xj ≥ 0; j = 1,2,...,n.                                                                              (1.3)
                       The problem is to find the values of xj’s that optimize (maximize or minimize) the
                       objective function (1.1). The values of xj’s must satisfy the constraints (1.2) and non-
                       negativity restrictions (1.3). Here, the coefficients c ’s are referred to as cost coefficients
                                                                                                            j
                       anda ’sastechnological coefficients; a represents the amount of the ith resource con-
                                ij                                                   ij
                       sumedperunitvariablex andb ,thetotalavailability of the ith resource.
                                                                  j           i
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...Operationsresearch chapter linearprogrammingproblem prof bibhasc giri departmentofmathematics jadavpuruniversity kolkata india email bcgiri jumath gmail com introduction linear programming lp is a popular tool for solving optimization problems of spe cialkind in georgebernarddantzigdevelopedanecientmethod thesimplex algorithm problem lpp since the development simplex has been used to solve industries as diverse banking education forestry petroleum manufacturing and trucking themostcommonproblemintheseindustriesinvolvesallocationoflimitedresources amongcompeting activities best possible optimal way real world situations where can be applied are thus ranging from allocation production facilities products national resources domestic needs portfolio selection shipping patterns so on this unit we will discuss mathematical formulation graphical method two variable duality dual revised methodsforsolvinglppofanynumberofvariables module mathematicalformulationoflpp therearefourbasiccomponentsof...

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