Evolutionary Multiobjective Optimization
نویسندگان
چکیده
Very often real world applications have several multiple conflicting objectives. Recently there has been a growing interest in evolutionary multiobjective optimization algorithms which combines two major disciplines: evolutionary computation and the theoretical frameworks of multicriteria decision making. In this introductory chapter, we define some fundemental concepts of multiobjective optimization emphasizing the motivation and advantages of using evolutionary algorithms. We then layout the important contributions of the remaining chapters of this volume.
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