how to solve a multi objective optimization using genetic algorithm

조회 수: 5 (최근 30일)
ashwin p
ashwin p 2016년 3월 30일
댓글: Alan Weiss 2016년 3월 30일
MINIMIZE SR = -0.0841111 - 0.0006945 Speed - 11.9767 Feed + 4.48667 Depth of cut + 2.66833e-007Speed*Speed + 68.3333 Feed*Feed - 2.61867 Depth of cut*Depth of cut MAXIMIZE MRR = -2114.54 + 0.228237 Speed + 4571.23 Feed + 4132.55 Depth of cut +3.60467e-005 Speed*Speed + 14388.7 Feed*Feed - 2306.69 Depth of Cut*Depth of cut CONSTRAINTS SPEED:1000 TO 3000 rpm FEED :0.05 TO 0.15 mm/min DOC:0.5 TO 1 mm how to solve the above equations in genetic algorithm (which is multi objective)
  댓글 수: 2
John D'Errico
John D'Errico 2016년 3월 30일
Please learn to format your questions so they are readable. As it is, this is strung out into one unreadable mess of a single paragraph.
Alan Weiss
Alan Weiss 2016년 3월 30일
To format, use the {} Code button.
Alan Weiss
MATLAB mathematical toolbox documentation

댓글을 달려면 로그인하십시오.

답변 (1개)

John D'Errico
John D'Errico 2016년 3월 30일
편집: John D'Errico 2016년 3월 30일
The standard solution to multi-criteria optimization is to optimize the sum of a linear combination of those competing objectives.
Thus, make them all minimization problems, by negating those that are maximization. Then choose a set of weights for the various objectives to make them of all comparable importance. Form the weighted sum, and at least in theory, you have ONE optimization problem that any optimization tool can handle.
You really cannot do much better than that, because no solution will make all of the objectives completely "happy". An intelligent choice of weights is of course crucial.

카테고리

Help CenterFile Exchange에서 Direct Search에 대해 자세히 알아보기

태그

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by