Application of artificial immune system approach to develop an algorithm for optimizing multi objective problems

This research work proposes application and implementation of artificial immune system approach to develop an algorithm for optimizing multi objective problems. The objective of this research work is to study, analyze and enhance the artificial immune system approach for developing an algorithm to solve various real life engineering multi-objective optimization problems.

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