chapter 14: goal programming
DESCRIPTION
Chapter 14: Goal Programming. Goal programming is used to solve linear programs with multiple objectives, with each objective viewed as a "goal". - PowerPoint PPT PresentationTRANSCRIPT
1 Slide
Chapter 14: Goal Programming
Goal programming is used to solve linear programs with multiple objectives, with each objective viewed as a "goal".
In goal programming, di+ and di
- , deviation variables, are the amounts a targeted goal i is overachieved or underachieved, respectively.
The goals themselves are added to the constraint set with di
+ and di- acting as the
surplus and slack variables.
2 Slide
Goal Programming
One approach to goal programming is to satisfy goals in a priority sequence. Second-priority goals are pursued without reducing the first-priority goals, etc.
For each priority level, the objective function is to minimize the (weighted) sum of the goal deviations.
Previous "optimal" achievements of goals are added to the constraint set so that they are not degraded while trying to achieve lesser priority goals.
3 Slide
Goal Programming Formulation
Step 1: Decide the priority level of each goal.
Step 2: Decide the weight on each goal. If a priority level has more than one
goal, for each goal i decide the weight, wi , to be placed on the deviation(s), di
+ and/or di-, from the goal.
Step 3: Set up the initial linear program.Min w1d1
+ + w2d2-
s.t. Functional Constraints, and Goal Constraints
Step 4: Solve the current linear program. If there is a lower priority level, go to
step 5. Otherwise, a final solution has been reached.
4 Slide
Goal Programming Formulation
Step 5: Set up the new linear program.Consider the next-lower priority level
goals and formulate a new objective function based on these goals. Add a constraint requiring the achievement of the next-higher priority level goals to be maintained. The new linear program might be:
Min w3d3+ + w4d4
- s.t. Functional Constraints, Goal Constraints, and w1d1
+ + w2d2- = k
Go to step 4. (Repeat steps 4 and 5 until all priority levels have been examined.)
5 Slide
GP Example: Conceptual Products
Conceptual Products produces CP400 and CP500 computers that use memory modules, external hard drives, and cases. The CP400 model uses two memory modules and no external hard drive, whereas the CP500 uses one memory module and one external hard drive. Both models use one case.
Suppliers can provide Conceptual Products with1000 memory modules, 500 external hard drives, and600 cases on a weekly basis. It takes one hour tomanufacture a CP400 and its profit is $200 and it takesone and one-half hours to manufacture a CP500 andits profit is $500.
6 Slide
GP Example: Conceptual Products
The company has four goals:
Priority 1: Meet a state contract of 200 CP400 machines weekly. (Goal 1)
Priority 2: Make at least 500 total computers weekly. (Goal 2)
Priority 3: Make at least $250,000 weekly. (Goal 3)
Priority 4: Use no more than 400 man-hours per week. (Goal 4)
7 Slide
GP Example: Formulation
Variables x1 = number of CP400 computers produced
weekly x2 = number of CP500 computers produced
weekly di
- = amount the right hand side of goal i is deficient
di+ = amount the right hand side of goal i is
exceededFunctional ConstraintsAvailability of memory modules: 2x1 + x2 < 1000Availability of external hard drives: x2 < 500Availability of cases: x1 + x2 < 600
8 Slide
GP Example: Formulation
Goals(1) 200 CP400 computers weekly:
x1 + d1- - d1
+ = 200 (2) 500 total computers weekly:
x1 + x2 + d2- - d2
+ = 500 (3) $250(in thousands) profit: .2x1 + .5x2 + d3
- - d3+ =
250 (4) 400 total man-hours weekly:
x1 + 1.5x2 + d4- - d4
+ = 400
Non-negativity: x1, x2, di
-, di+ > 0 for all i
9 Slide
GP Example: Formulation
Objective Functions Priority 1: Minimize the amount the state
contract is not met: Min d1-
Priority 2: Minimize the number under 500 computers produced
weekly: Min d2-
Priority 3: Minimize the amount under $250,000 earned weekly: Min d3
-
Priority 4: Minimize the man-hours over 400 used weekly: Min d4
+
10 Slide
GP Example: Formulation
Formulation SummaryMin P1(d1
-) + P2(d2-) + P3(d3
-) + P4(d4+)
s.t. 2x1 +x2 < 1000
+x2 < 500
x1 +x2 < 600
x1 +d1- -d1
+ = 200
x1 +x2 +d2- -d2
+ = 500
.2x1+ .5x2 +d3- -d3
+ = 250
x1+1.5x2 +d4-
-d4+ = 400
x1, x2, d1-, d1
+, d2-, d2
+, d3-, d3
+, d4-, d4
+ > 0
11 Slide
GP Example: Graphical Solution
Iteration 1To solve graphically, first graph the
functional constraints. Then graph the first goal: x1 = 200. Note on the next slide that there is a set of points that exceed x1 = 200 (where d1
- = 0).
12 Slide
GP Example: Graphical Solution
Functional Constraints and Goal 1 Graphed
2x1 + x2 < 1000
Goal 1: x1 > 200
x1 + x2 < 600x2 < 500
PointsSatisfyingGoal 1
x1
x2
1000
800
600
400
200
200 400 600 800 1000 1200
13 Slide
GP Example: Graphical Solution
Iteration 2Now add Goal 1 as x1 > 200 and graph
Goal 2:x1 + x2 = 500. Note on the next slide that there is still a set of points satisfying the first goal that also satisfies this second goal (where d2
- = 0).
14 Slide
GP Example: Graphical Solution
Goal 1 (Constraint) and Goal 2 Graphed
2x1 + x2 < 1000
Goal 1: x1 > 200x1 + x2 < 600
x2 < 500
Points SatisfyingBoth Goals 1 and 2
x1
x2
Goal 2: x1 + x2 > 500
200 400 600 800 1000 1200
1000
800
600
400
200
15 Slide
GP Example: Graphical Solution
Iteration 3Now add Goal 2 as x1 + x2 > 500 and
Goal 3:.2x1 + .5x2 = 250. Note on the next slide that no points satisfy the previous functional constraints and goals and satisfy this constraint.
Thus, to Min d3-, this minimum value is
achieved when we Max .2x1 + .5x2. Note that this occurs at x1 = 200 and x2 = 400, so that .2x1 + .5x2 = 240 or d3
- = 10.
16 Slide
GP Example: Graphical Solution
Goal 2 (Constraint) and Goal 3 Graphed
2x1 + x2 < 1000
Goal 1: x1 > 200x1 + x2 < 600 x2 < 500
Points SatisfyingBoth Goals 1 and 2
x1
x2
Goal 2: x1 + x2 > 500Goal 3: .2x1 + .5x2 = 250
(200,400)
200 400 600 800 1000 1200
1000
800
600
400
200
17 Slide
Goal Programming: More Complex Problems
Now we will formulate and solve a GP problem that involves multiple goals within the same priority level. No tradeoffs occur in the achievement of goals with different priorities. However, tradeoffs can occur in the achievement of goals with the same priority and different weights.A GP problem with p preemptive goal priorities can be solved as a series of p linear programming problems.Solving a GP problem as a series of LPs, the objective functions (always to be minimized) will include only relevant deviation variables and not decision variables.
18 Slide
GP Example 2: Conceptual Products
Conceptual Products is a computer company thatproduces the CP400, CP500, and CP600 computers.Many of the components used in the three computermodels are produced in abundant supply by thecompany. However, the memory modules, externalhard drives, and cases are bought from suppliers.
The CP400 model uses two memory modules andno external hard drive, the CP500 uses one memorymodule and one external hard drive, and the CP600 uses two memory modules and one external harddrive . All three models use the same case.
19 Slide
GP Example 2: Conceptual Products
Suppliers can provide Conceptual Products with1000 memory modules, 500 external hard drives, and600 cases on a weekly basis. It takes one hour tomanufacture a CP400 and its profit is $200; it takesone and one-half hours to manufacture a CP500 andits profit is $500; and it takes two hours to manufacturea CP600 and its profit is $900.
20 Slide
GP Example 2: Conceptual Products
The company has four goals: Priority 1: Meet a state contract of 200
CP400 machines weekly. (Goal 1)
Priority 2: Make at least 500 total computers weekly. (Goal 2)
Priority 3: Make at least $250,000 profit weekly. (Goal 3)
Priority 3: Use no more than 400 man-hours
per week. (Goal 4)Each $1000 underachieved from its profit goal is five times as important as an extra man-hour.
21 Slide
GP Example 2: Formulation
Variables x1 = number of CP400 computers produced
weekly x2 = number of CP500 computers produced
weeklyx3 = number of CP600 computers produced weekly
di- = amount the right hand side of goal i is
deficient di
+ = amount the right hand side of goal i is exceededFunctional ConstraintsAvailability of memory modules: 2x1 + x2 + x3 < 1000Availability of external hard drives: x2 + x3 < 500Availability of cases: x1 + x2 + x3 < 600
22 Slide
GP Example 2: Formulation
Goals(1) 200 CP400 computers weekly:
x1 + d1- - d1
+ = 200 (2) 500 total computers weekly:
x1 + x2 + x3 + d2- - d2
+ = 500
(3) $250(in thousands) profit: .2x1 + .5x2 + .9x3 + d3
- - d3
+ = 250 (4) 400 total man-hours weekly:
x1 + 1.5x2 + 2x3 + d4- - d4
+ = 400
Non-negativity: x1, x2, x3, di
-, di+ > 0 for all
i
23 Slide
GP Example 2: Conceptual Products
Objective Functions Priority 1: Minimize the number of CP400
under 200 units: Min d1-
Priority 2: Minimize the number under 500 computers produced
weekly: Min d2-
Priority 3: Minimize the amount under $250,000 earned weekly: Min 5d3
-
Priority 3: Minimize the man-hours over 400 used weekly: Min d4
+
24 Slide
GP Example 2: Conceptual Products
Priority 1 Formulation Min d1
-
s.t. 2x1 +x2 +x3 < 1000
+x2 +x3 < 500
x1 +x2 +x3 < 600
x1 +d1- -d1
+ = 200
x1 +x2 +x3 +d2- -d2
+ = 500
.2x1+ .5x2 +.9x3 +d3- -d3
+ = 250
x1+1.5x2 +2x3 +d4
- -d4+ = 400
x1, x2, x3, d1-, d1
+, d2-, d2
+, d3-, d3
+, d4
-, d4+ > 0
25 Slide
GP Example 2: Conceptual Products
Computer Solution (First LP) Objective Function Value = 0.000 Variable Value Reduced
Cost x1 200.000 0.000 x2 0.000
0.000 x3 233.333 0.000 d1
- 0.000 1.000 d1
+ 0.000 0.000 d2
- 66.667 0.000 d2
+ 0.000 0.000
d3- 0.000 0.000
d3+ 0.000
0.000 d4
- 0.000 0.000
d4+ 266.667 0.000
26 Slide
GP Example 2: Conceptual Products
Priority 2 Formulation Min d2
-
( include the previous 7 constraints, i.e. 3 functional constraints and
4 goal constraints )
( add the constraint: d1- = 0 )
27 Slide
GP Example 2: Conceptual Products
Computer Solution (Second LP) Objective Function Value = 0.000 Variable Value Reduced
Cost x1 285.714 0.000 x2 0.000
0.000 x3 214.286 0.000 d1
- 0.000 0.000 d1
+ 85.714 0.000 d2
- 0.000 1.000 d2
+ 0.000 0.000
d3- 0.000 0.000
d3+ 0.000
0.000 d4
- 0.000 0.000
d4+ 314.286 0.000
28 Slide
GP Example 2: Conceptual Products
Priority 3 Formulation Min 5d3
- + d4+
( include the previous 8 constraints i.e. 3 functional constraints and
4 goal constraints and d1
- = 0 )
( add the constraint: d2- = 0 )
29 Slide
GP Example 2: Conceptual Products
Computer Solution (Third LP) Objective Function Value = 314.286 Variable Value Reduced
Cost x1 285.714 0.000 x2 0.000
0.071 x3 214.286 0.000 d1
- 0.000 0.000 d1
+ 85.714 0.000 d2
- 0.000 0.000 d2
+ 0.000 0.714
d3- 0.000 3.571
d3+ 0.000
1.429 d4
- 0.000 1.000
d4+ 314.286 0.000
30 Slide
GP Example 2: Conceptual Products
Final Solution
Thus the optimal recommendation is to produce 285.714 CP400 computers, 0 CP500 computers, and weekly and 214.286 CP600 computers weekly. All goals will be met except goal 4. 314.286 extra man-hours or a total of 714.286man-hours will be used.