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Introduction to Scalarization Methods for Multi-objective Optimization 

Design Impact
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This video is part of the set of lectures for SE 413, an engineering design optimization course at UIUC. This video introduces scalarization methods for solving multi-objective optimization problems. This class of methods converts multi-objective optimization problems into a set of single-objective optimization problems. Each of these subproblems, if solved successfully, produces a non-dominated point. The set of all non-dominated points, or the Pareto set, is the solution to the multi-objective optimization problem. The popular and intuitive weighted sum method is introduced, but then demonstrated to have several critical shortcomings. The epsilon-constraint method is then detailed, which is shown to be a much more effective strategy for many cases. Both methods are demonstrated using a simple example implemented in MATLAB. The MATLAB code is available from: www.mathworks.com/matlabcentr...
This lecture is one of several on the topic of multi-objective optimization problems. Other lectures address the relationship between multi-objective optimization and practical engineering design optimization problems, other example problems, and decision analysis (especially, Arrow's impossibility theorem and the difficulty of defining an optimum to satisfy multiple decision makers).
The following published Google doc lists the sequence of SE 413 lecture videos and provides links to those that are publically available:
tinyurl.com/fg37hj77

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19 фев 2021

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Комментарии : 11   
@edgarduarte6926
@edgarduarte6926 2 года назад
An excelent video with clear explanations. Thanks a lot for your contribution. Please, let us know if you are planning to post more videos like this.
@Reach2Sabya
@Reach2Sabya 2 года назад
Extremely helpful. Thank you.
@TechyonChronosx
@TechyonChronosx Год назад
SO HELPFULLL LOVE U !
@eda7210
@eda7210 2 года назад
Thank you so much
@hanumanatonu
@hanumanatonu 3 года назад
Hello Sir, I learnt a lot from this lecture. Thanks a lot for the video. I have used the weighted sum method for ranking my alternatives of products from which I am choosing the products based on the ranking achieved by the weighted sum method. I have 6 parameters for which I have assigned weights. Now I need to prove that the solution is convex. Could you please guide me on this? How do I proceed to solve that the ranking I have done is optimal?
@farmad100
@farmad100 2 года назад
a very good lecture. please post video on multiobjective optimization thru gravitation search algo (meta heuristic) with matlab code
@farmad100
@farmad100 2 года назад
Dear sir can you please post a video on how to use multiple response optimization in formulation of single objective function
@youssefelamrani7905
@youssefelamrani7905 2 года назад
Good Job, I have a question in the example you gave, what exactly is the solution? all we got at the end was a graph of mu and mu, Can you please elaborate on that? Thank You
@designimpact2178
@designimpact2178 2 года назад
The solution to a multi-objective optimization problem is a set of non-dominated points. The plot shows the set of points that comprise the solution.
@mohamedharidy2200
@mohamedharidy2200 2 года назад
hanks a lot, is it possible to share the slides' file?
@jamesallison753
@jamesallison753 2 года назад
Thank you for asking. Right now I only make slides available to students who enroll in my class or training workshops.
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