Squeeze casting parameter optimization using swarm intelligence and evolutionary algorithms

No Thumbnail Available

Date

2018

Authors

Manjunath Patel G.C.
Krishna P.
Parappagoudar M.B.
Vundavilli P.R.
Bharath Bhushan S.N.

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

This chapter is focused to locate the optimum squeeze casting conditions using evolutionary swarm intelligence and teaching learning-based algorithms. The evolutionary and swarm intelligent algorithms are used to determine the best set of process variables for the conflicting requirements in multiple objective functions. Four cases are considered with different sets of weight fractions to the objective function based on user requirements. Fitness values are determined for all different cases to evaluate the performance of evolutionary and swarm intelligent methods. Teaching learning-based optimization and multiple-objective particle swarm optimization based on crowing distance have yielded similar results. Experiments have been conducted to test the results obtained. The performance of swarm intelligence is found to be comparable with that of evolutionary genetic algorithm in locating the optimal set of process variables. However, TLBO outperformed GA, PSO, and MOPSO-CD with regard to computation time. © 2018, IGI Global.

Description

Keywords

Citation

Critical Developments and Applications of Swarm Intelligence, 2018, Vol., pp.245-270

Collections

Endorsement

Review

Supplemented By

Referenced By