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Mata kuliah:K0164/ Pemrograman Matematika Tahun:2008 Fuzzy Linear Programming Pertemuan 10:

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Presentation on theme: "Mata kuliah:K0164/ Pemrograman Matematika Tahun:2008 Fuzzy Linear Programming Pertemuan 10:"— Presentation transcript:

1 Mata kuliah:K0164/ Pemrograman Matematika Tahun:2008 Fuzzy Linear Programming Pertemuan 10:

2 Learning Outcomes Mahasiswa dapat menyelesaiakan masalah Fuzzy Linear Programming untuk berbagai masalah.

3 Outline Materi: Pengertian Fuzzy LP Kasus Maksimalisasi Kasus Minimalisasi Contoh pemakaian

4 Fuzzy Sets If X is a collection of objects denoted generically by x, then a fuzzy set à in X is a set of ordered pairs: Ã= A fuzzy set is represented solely by stating its membership function.

5 Linear Programming Min z=c’x St. Ax<=b, x>=0, Linear Programming can be solved efficiently by simplex method and interior point method. In case of special structures, more efficiently methods can be applied.

6 Fuzzy Linear Programming There are many ways to modify a LP into a fuzzy LP. The objective function maybe fuzzy The constraints maybe fuzzy The relationship between objective function and constraints maybe fuzzy. ……..

7 Our model for fuzzy LP Ĉ~fuzzy constraints {c,Uc} Ĝ~fuzzy goal (objective function) {g,Ug} Ď= Ĉ and Ĝ{d,Ud} Note: Here our decision Ď is fuzzy. If you want a crisp decision, we can define: λ=max Ud to be the optimal decision

8 Our model for fuzzy LP Cont’d

9 Maximize λ St. λpi+Bix<=di+pi i= 1,2,….M+1 x>=0 It’s a regular LP with one more constraint and can be solved efficiently.

10 Example A Crisp LP

11 Example A cont’d Fuzzy Objective function ( keep constraints crisp)

12 Example A cont’d

13 Example B Crisp LP

14 Example B cont’d Fuzzy Objective function Fuzzy Constraints Maximize λ St. λpi+Bix<=di+pi i= 1,2,….M+1 x>=0 Apply this to both of the objective function and constraints.

15 Example B cont’d Now d=(3700000,170,1300,6) P=(500000,10,100,6)

16 Conclusion Here we showed two cases of fuzzy LP. Depends on the models used, fuzzy LP can be very differently. ( The choosing of models depends on the cases, no general law exits.) In general, the solution of a fuzzy LP is efficient and give us some advantages to be more practical.

17 Conclusion Cont’d Advantages of our models: 1. Can be calculated efficiently. 2. Symmetrical and easy to understand. 3. Allow the decision maker to give a fuzzy description of his objectives and constraints. 4. Constraints are given different weights.

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