non-linear optimization over a frequency bandwidth

조회 수: 2 (최근 30일)
Joseph
Joseph 2015년 3월 5일
댓글: Chris McComb 2015년 3월 6일
Hi there,
Is it possible to optimize a function over a frequency bandwidth? Given I have a non-linear function say Vout(f) and I want to optimize (e.g. maximize the average voltage output) over a frequency bandwidth as a function of design variables and constraints.
Is there a way to do this and extend a single objective to multi-objectives?
I'm only aware of using fmincon over a single frequency...
Thanks,

채택된 답변

Matt J
Matt J 2015년 3월 5일
편집: Matt J 2015년 3월 5일
You could look at the multi-objective solver fgoalattain to see if that suits what you are trying to do. The average voltage can be computed inside the objective function by filtering Vout(f) with a bandpass filter, parametrized by f1 and f2, and computing the average of the filter output. You just want to make sure that the filter result is differentiable in f1 and f2. Therefore, a rect window bandpass filter would not be suitable. You would need to compromise and use some sort of tapered window.
  댓글 수: 1
Joseph
Joseph 2015년 3월 6일
Thanks for the input Matt. I'll have a go at that. I'll leave the question open for a little longer to see what happens when I try implementation.

댓글을 달려면 로그인하십시오.

추가 답변 (1개)

Chris McComb
Chris McComb 2015년 3월 5일
I think you can do exactly what you said: maximize the average voltage output.
Use fmincon, but write an objective function that computes the voltage output for several frequencies and returns the average. If certain frequencies are more important than others, you can even do a weighted average.
Would that work in your case? Maybe I'm not understanding your question completely.
  댓글 수: 4
Joseph
Joseph 2015년 3월 6일
Hi Chris, yes they are. But first step I'm was looking at maximizing Vout over a frequency bandwidth. Then move onto the f1 and f2.
Chris McComb
Chris McComb 2015년 3월 6일
In that case, I'm afraid I don't see a more elegant solution to your problem. For your first step, I think the brute force approach may be the only way to go. That is, directly computing the average and maximizing that.
When you move on to a multiobjective problem, you'll no longer have a single optimal solution. Instead, you'll have a set of optimal solutions known as a Pareto frontier. In the Pareto frontier, the quality of a solution is denoted by a length n, where n is the number of objective functions.
I've done some work with multi-objective optimization, and once again I'd recommend a somewhat brutish approach (I'm starting to recognize a pattern in my preferences). There are a number of ways to go about this, but the simplest is to re-define your objective function as a weighted combination of -f1, f2 and Vout. Solving the optimization problem with different weights will allow you to resolve different points on the Pareto frontier.
I'm happy to provide more information about any of the above. Sorry I couldn't offer a more elegant solution!

댓글을 달려면 로그인하십시오.

카테고리

Help CenterFile Exchange에서 Multiobjective Optimization에 대해 자세히 알아보기

Community Treasure Hunt

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

Start Hunting!

Translated by