Paper title:

2D Numerical Integration Method Based on Particle Swarm Optimization

Published in: Issue 1, (Vol. 6) / 2012
Publishing date: 2011-04-11
Pages: 60-63
Author(s): KHELIL Naceur , DJEROU Leila
Abstract. In this paper, a novel numerical double integration method based on Particle Swarm Optimization (PSO) was presented. PSO is a technique based on the cooperation between particles. The exchange of information between these particles allows to resolve difficult problems. This approach is carefully handled and tested with an illustrated example.
Keywords: Riemann, Sum Numerical Integration, Particle Swarm Optimization
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