Effectiveness of Nature Inspired Krill Herd Algorithms for Performing Phase Stability and Equilibrium Thermodynamic Calculations

Authors

  • Dinesh Kumar V
  • Anandan M
  • Arangarajan M

Keywords:

Metaheuristic algorithms, artificial bee colony, krill herd algorithm, Thermodynamics.

Abstract

The search for reliable and efficient global optimization algorithms for solving phase stability and phase equilibrium problems in applied thermodynamics is an ongoing area of research. In this study, we evaluated and compared the reliability and efficiency of eight selected nature-inspired metaheuristic algorithms for solving difficult phase stability and phase equilibrium problems. These algorithms are the cuckoo search (CS), intelligent firefly (IFA), bat (BA), artificial bee colony (ABC), MAKHA, a hybrid between monkey algorithm and krill herd algorithm, covariance matrix adaptation evolution strategy (CMAES), magnetic charged system search (MCSS), and bare bones particle swarm optimization (BBPSO). The results clearly showed that CS is the most reliable of all methods as it successfully solved all thermodynamic problems tested in this study. CS proved to be a promising nature-inspired optimization method to perform applied thermodynamic calculations for process design.

Downloads

Download data is not yet available.

Downloads

Published

2020-08-25

How to Cite

Dinesh Kumar V, Anandan M, & Arangarajan M. (2020). Effectiveness of Nature Inspired Krill Herd Algorithms for Performing Phase Stability and Equilibrium Thermodynamic Calculations. International Journal of Progressive Research in Science and Engineering, 1(5), 94–101. Retrieved from https://journal.ijprse.com/index.php/ijprse/article/view/159

Issue

Section

Articles