A fuzzy global optimization method for parallel computation

Berk Ustundag*, Osman Kaan Erol

*Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Using the capacity of multiple operated relatively low speed or slack computers instead of expensive supercomputers for the numerical solution of complex problems become popular on the last few years. In this study a fuzzy global optimization algorithm modified for parallel computation is proposed. The main motivation of this study lies in the use of an ordinary controller to find the roots of an objective function by means of a closed loop control system approach. If a transfer function of a plant, in a closed loop control system with a reference input r, is replaced by the objective function f(x) then the output of a properly designed controller driving the plant converges the solution of the equation f(x)-r=0 at the steady-state. The algorithm can also be used to find the roots of the derivative of the objective function that represent the local minimum or maximum. The references will then point to these extremums of the objective function. In a multi-computer environment a master computer dynamically shares and updates the search intervals and the reference levels between the subscribers on the network, resulting in the increase in the search speed. When a slave finds a better local solution while others are trying to solve the equation, this new value is set as a new reference for the other computers. This will increase their errors resulting the output of their respective controllers vary faster than single computer case. By enabling the division of the search space into many sub-intervals, this method offers an increase in the performance of the algorithm.

Original languageEnglish
Title of host publication21st IASTED International Multi-Conference on Applied Informatics
Pages1179-1184
Number of pages6
Publication statusPublished - 2003
Event21st IASTED International Multi-Conference on Applied Informatics - Innsbruck, Austria
Duration: 10 Feb 200313 Feb 2003

Publication series

NameIASTED International Multi-Conference on Applied Informatics
Volume21

Conference

Conference21st IASTED International Multi-Conference on Applied Informatics
Country/TerritoryAustria
CityInnsbruck
Period10/02/0313/02/03

Keywords

  • Fuzzy control
  • Optimization
  • Parallel computing systems
  • Parallel processing

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