Authors
Tianyu Liu, Licheng Jiao, Wenping Ma, Jingjing Ma, Ronghua Shang
Publication date
2016/11/1
Journal
Applied Soft Computing
Volume
48
Pages
597-611
Publisher
Elsevier
Description
In this paper, a novel CMOQPSO algorithm is proposed, in which cultural evolution mechanism is introduced into quantum-behaved particle swarm optimization (QPSO) to solve multiobjective environmental/economic dispatch (EED) problems. There are growing concerns about the ability of QPSO to handle multiobjective optimization problems. Two important issues in extending QPSO to multiobjective context are the construction of exemplar positions for each particle and the maintenance of population diversity. In the proposed CMOQPSO, one particle is measured for multiple times at each iteration in order to enhance its global searching ability. Belief space, which is based on cultural evolution mechanism and contains different types of knowledge extracted from the particle swarm, is adopted to generate global best positions for the multiple measurements of each particle. Moreover, to maintain population …
Total citations
2017201820192020202120222023202441071013865