Multi-objective Optimization with PSO

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چکیده

Multi-objective optimization is a class of problems with solutions that can be evaluated along two or more incomparable or conflicting objectives. These types of problems differ from standard optimization problems in that the end result is not a single “best solution” but rather a set of alternatives, where for each member of the set, no other solution is completely better (the Pareto set). Multi-objective optimization problems occur in many different real-world domains, such as architecture (stability vs. cost), and automobile design (performance vs. fuel efficiency) and as such are a very important problem domain.

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تاریخ انتشار 2011