Title: Ch 7 LINEAR PROGRAMMING
1Ch 7 LINEAR PROGRAMMING
- Linear programming1 is a mathematical technique
that enables a decision maker to arrive at the
optimal solution to problems involving the
allocation of scarce resources. - Typically, many economic and technical problems
involve maximization or minimization of a certain
objective subject to some restrictions. - 1During World War II US army began to formulate
certain linear optimization problems. Their
solutions were called plans or programs. Today
important application areas include airline crew
scheduling, shipping or telecommunication
networks, oil refining and blending, and stock
and bond portfolio selection.
2The History of Linear Programming
Leonid Kantorovich
George Dantzig
3- Programming problems, in general, are concerned
with the use or allocation of scarce resources -
labor, materials, machines, and capital - in the
best possible manner so that costs are
minimized or profits maximized. -
- In using the term best possible it is implied
that some choice or set of alternative courses of
actions is available for making the decision.
4Typical Applications of Linear Programming
- 1. A manufacturer wants to develop a production
schedule and inventory policy that will satisfy
sales demand in future periods and same time
minimize the total production and inventory cost. - 2. A financial analyst must select an investment
portfolio from a variety of stock and bond
investment alternatives. He would like to
establish the portfolio that maximizes the return
on investment.
5Typical Applications of Linear Programming
continued
- 3. A marketing manager wants to determine how
best to allocate a fixed advertising budget among
alternative advertising media such as radio, TV,
newspaper, and magazines. The goal is to maximize
advertising effectiveness. - 4. A company has warehouses in a number of
locations throughout the country. For a set of
customer demands for its products, the company
would like to determine how much each warehouse
should ship to each customer so that the total
transportation costs are minimized.
6Constructing Linear Programming Models
- Next we list what is required in order to
construct a linear programming model - 1. Objective Function. There must be an objective
(or goal or target) the firm or organization
wants to achieve. For example, maximize dollar
profits, minimize dollar cost, maximize total
number of expected potential customers, minimize
total time used, and so forth.
7Constructing Linear Programming Models continued
- 2. Restrictions and Decisions. There must be
alternative courses of action or decisions, one
of which will achieve the objective. - 3. Linear Objective Function and Linear
Constraints. We must be able to express the
decision problem incorporating the objective and
restrictions on the decisions using only linear
equations and linear inequalities. i.e., we must
be able to state the problem as a linear
programming model.
8Economic Significance of Linearity
- The simplifying assumption of linearity causes
some problems - 1. In profit-maximizing production problem
linearity of the objective function implies
constant profit rate per unit as output
increases this means - a) that the selling price is constant and
9- b) that average variable cost is constant
- the law of diminishing returns does not
influence the production process, and input
prices are constant - ? perfect competition in output and input markets
- 2. Linear resource constraints imply constant
combination of inputs - this means constant returns to scale.
10Summary of the Economic Implications of the
Linearity Assumption
Linear objective function
Constant gross profit per unit (GP P - AVC
constant)
Price (P) is constant
Constant input prices
Constant returns to variable inputs
Firm is a price taker in the output market
11The three basic steps in constructing a linear
programming model
- Step I
- Identify the unknown variables to be determined
(decision variables), and represent them in terms
of algebraic symbols.
12- Step II
- Identify all the restrictions or constraints in
the problem and express them as linear equations
or inequalities which are linear functions of the
unknown variables.
13- Step III
- Identify the objective or criterion and
represent it as a linear function of the decision
variables, which is to be maximized or minimized.
14Example 1 Product-Mix Problem
- The Handy-Dandy Company wishes to schedule the
production of a kitchen appliance which requires
two resources labor and material. The company
is considering three different models of this
appliance and its engineering department has
furnished the following data
15The supply of raw materials is restricted to 200
pounds per day. The daily availability of
manpower is 150 hours. Formulate a linear
programming model to determine the daily
production rate of the various models of
appliances in order to maximize the total profit.
16- Step I
- Identify the Decision Variables. The unknown
activities to be determined are the daily rate of
production for the three models (A, B, C) in
order to maximize the total profit. Representing
them by algebraic symbols, -
- xA daily production of model A
- xB daily production of model B
- xC daily production of model C
17- Step II
- Identify the Constraints. In this problem the
constraints are the limited availability of the
two resources (labor and material). - Model A requires 7 hours of labor for each unit,
and its production quantity is xA. Hence, the
requirement of manpower for model A alone will be
7xA hours (assuming a linear relationship).
18- Similarly, models B and C will require 3xB and
6xC hours, respectively. Thus, the total
requirement of labor will be - 7xA 3xB 6xC, which should not exceed the
available 150 hours. So the labor constraint
becomes - 7xA 3xB 6xC ? 150
19- Similarly, the raw material constraint is given
by - 4xA 4xB 5xC ? 200
- In addition, we restrict the variables to have
non-negative values. This is called the
non-negativity constraint, which the variables
must satisfy - xA, xB and xC ? 0.
20- Step III
- Identifying the Objective. The objective is to
maximize the total profit from the sales.
Assuming that perfect market exists for the
product such that all that is produced can be
sold, the total profit from sales becomes - Z 4xA 2xB 3XC.
21Thus, the linear programming model for our
product mix problem is
- Find numbers xA, xB, xC which will maximize
- Z 4xA 2xB 3XC
- subject to the constrains
- 7xA 3xB 6xC ? 150
- 4xA 4xB 5xC ? 200
- xA ? 0, xB ? 0, xC ? 0
22Exercise 1 Formulating an LP-Problem
- Advertising Media Selection
- An advertising company wishes to plan an
advertising campaign in three different media
television, radio, and magazines. The purpose of
the advertising program is to reach as many
potential customers as possible. Result of a
market study are given below - Â Â
-
-
23Solving Linear Programming Problems
- Graphical Technique
- First graph the constraints
- the solution set of the system is that region
(or set of ordered pairs), which satisfies ALL
the constraints. This region is called the
feasible set
24Solving Linear Programming Problems Graphical
Technique continued
- Locate all the corner points of the graph
- the coordinates of the corners will be
determined algebraically - It is important to note that the optima is
obtained at the boundary of the solution set and
furthermore at the corner points. - For linear programs, it can be shown that the
optima will always be obtained at corner points.
25Solving Linear Programming Problems Graphical
Technique continued
- Determine the optimal value
- test all the corner points to see which yields
the optimum value for the objective function
Objective function
Feasible set
Optimum
26Example 2
- Suppose a company produces two types of widgets,
manual and electric. Each requires in its
manufacture the use of three machines A, B, and
C. A manual widget requires the use of the
machine A for 2 hours, machine B for 1 hour, and
machine C for 1 hour. An electric widget requires
1 hour on A, 2 hours on B, and 1 hour on C.
Furthermore, suppose the maximum numbers of hours
available per month for the use of machines A, B,
and C are 180, 160, and 100, respectively. The
profit on a manual widget is 4 and on electric
widget it is 6. See the table below for a
summary of data. If the company can sell all the
widgets it can produce, how many of each type
should it make in order to maximize the monthly
profit?
27Example 2 continued
- Step I Identify decision variables
-
- x number of manual widgets
- y number of electric widgets
- Step II Identify constraints
- 2x y ? 180
- x 2y ? 160
- x y ? 100
- x ? 0
- y ? 0
28Example 2 continued
- Step III Define objective function
-
- max P 4x 6y
- Solving P for y gives
- y -2/3 P/3.
- This defines a so-called family of parallel
lines, isoprofit lines. - Each line gives all possible combinations of x
and y that yield the same profit.
29Example 2 continued
30Example 2 continued
31Exercise 2 Solving an LP-problem
- A California vintner has available 660 lbs of
Cabernet Sauvignon (CS) grapes, 1860 lbs of Pinot
Noir (PN) grapes, and 2100 lbs of Barbera (B)
grapes. The vintner makes a Pinot Noir (PN) wine,
which contains 20 CS, 60 PN, and 20 B grapes
and sells 3 a bottle, and a Barbera (B) wine,
which contains 10 CS, 20 PN, and 70 B grapes
and sells for 2 a bottle. Assuming each bottle
of wine requires 3 lbs of grapes, determine how
many bottles of each type of wine should be
produced to maximize income.
32Solving an LP-problem continued
- Algebraic Technique
- The graphical method solving linear programming
problems can be used for problems with two
variables (with some difficulty three) - However, for problems were the number of
variables might run into hundreds or thousands,
algebraic techniques must be used - The simplex method, with the aid of the computer,
can solve these problems
33- As with the graphical procedure, the simplex
method finds the optimal corner-point solution of
the set of feasible solutions. - Regardless of the number of decision variables
and regardless of the number of constraints, the
simplex method uses the key property of a linear
programming problem, which is
34- A linear programming problem always has an
optimal solution occurring at a corner-point
solution - Simplex method begins with a feasible solution
and tests whether or not it is optimum. - If not optimum, the method proceeds to a better
solution.
35Solution of a maximum-type linear programming
problem by the simplex algorithm involves the
following steps
- 1. Adding slack variables to convert the
inequalities into equations -
- In the case of less-than-or-equal-to
constraints, slack variables are used to increase
the left-hand side to equal the right-hand side
limits of the constraint conditions.
36- Example max Z 3x1 x2
- st. 2x1 x2 ? 8
- 2x1 3x2 ? 12
- adding slacks and rewriting the object row
- 2x1 x2 s1 8
- 2x1 3x2 s2 12
- -3x1 x2 Z 0
- where x1, x2, s1 and s2 are non-negative.
37 2x1 x2 s1 8 2x1 3x2
s2 12 -3x1 x2 Z 0
- 2. Setting up the initial simplex tableau
-
- Form an augmented coefficient matrix
38- 3. Finding an initial feasible solution
-
- Simplex algorithm starts always from origin (if
possible). In our case it means that the initial
feasible solution is - x1 0, x2 0, s1 8, s2 12.
-
- Simplex method proceeds from this corner point
to an adjacent corner point. Such corner points
are called basic feasible solutions.
394. Introducing basic and nonbasic variables as
the natural way to express basic feasible
solutions
- For any basic feasible solution (B.F.S.), the
variables held zero are called nonbasic variables
and the other are called basic variables. - Moving form one B.F.S. to another means that one
basic variable (we call it a departing or exiting
variable) becomes nonbasic and a nonbasic
variable (entering variable) becomes a basic
variable.
40(No Transcript)
41- 5. Choosing the proper pivot element to advance
the solution and maintain the non-negativity of
all variables -
- How to decide which variable to make basic and
which nonbasic (in other words in which direction
to move from the current B.F.S.)? -
42The natural direction is the one in which the
value of the objective function increases the
most
- If in Z 3x1 x2, x1 is allowed to become
basic, x2 remains at 0 and Z 3x1 thus for each
one-unit increase in x1, Z increases by 3 units.
On the other hand, if x2 is allowed to become
basic, Z will increase only by one unit if x2 is
increased by one unit. This is one way to
determine the pivot column.
43Choosing the proper pivot element continued
- Another way to determine the pivot column is to
examine the bottom row of the simplex tableau
indicators
entering variable
44- The bottom row entries to the left of the
vertical line are called indicators. - We choose the column with the most negative
indicator as the pivot column. - Having chosen the pivot column, we must now
determine the pivot row in order to know which
element in our simplex tableau is the pivoting
element.
45- For that purpose we divide the right hand side
entries of the simplex tableau by corresponding
entries of the pivot column. - Of the resulting quotients we choose the smallest
(minimum quotient). So the pivot element is the
intersection of the pivot column and pivot row.
46The pivot element is the intersection of the
pivot column and pivot row
Quotients 8 2 4 (smaller) 12 2 6
departing variable
entering variable (most negative indicator)
47- Since x1 and s2 will be the basic variables in
our new B.F.S, it would be convenient to change
our previous tableau by elementary row operations
into a form where the values of x1, s2, and Z can
be read off with ease just as in the initial
basic solution. -
48To do this we want to find a matrix which is
equivalent to the tableau above but which has the
form
where the question marks represent numbers to be
determined.
496. Pivoting, which is done column wise
- We must transform the tableau to an equivalent
matrix that has a 1 at the place of the pivot
element (pivot entry) and 0s elsewhere in the
column x1.
departing variable
entering variable
50By elementary row operations, we have
R1 R2 R3
½ R1
-2R1 R2
3R1 R3
51- 7. Continuing and recognizing when the algorithm
terminates. -
- General termination rule all values in the
indicator row are non-negative.
52We have a new simplex tableau
indicators
All values in the indicator row are non-negative.
Hence, we have found the optimal solution for the
problem. The solution is x1 4, x2 0 and Z 12