Parameter tuning in modeling and simulations by using swarm intelligence optimization algorithms

Modeling and simulation of real-world environments has in recent times being widely used. The modeling of environments whose examination in particular is difficult and the examination via the model becomes easier. The parameters of the modeled systems and the values they can obtain are quite large, and manual tuning is tedious and requires a lot of effort while it often it is almost impossible to get the desired results. For this reason, there is a need for the parameter space to be set. The studies conducted in recent years were reviewed, it has been observed that there are few studies for parameter tuning problem in modeling and simulations. In this study, work has been done for a solution to be found to the problem of parameter tuning with swarm intelligence optimization algorithms Particle swarm optimization and Firefly algorithms. The performance of these algorithms in the parameter tuning process has been tested on 2 different agent based model studies. The performance of the algorithms has been observed by manually entering the parameters found for the model. According to the obtained results, it has been seen that the Firefly algorithm where the Particle swarm optimization algorithm works faster has better parameter values. With this study, the parameter tuning problem of the models in the different fields were solved.

[1]  Paramate Horkaew,et al.  Improving performance for emergent environments parameter tuning and simulation in games using GPU , 2010, 2010 3rd International Conference on Computer Science and Information Technology.

[2]  Pierre Glize,et al.  Real Time Learning of Behaviour Features for Personalised Interest Assessment , 2010, PAAMS.

[3]  R. Eberhart,et al.  Particle Swarm Optimization-Neural Networks, 1995. Proceedings., IEEE International Conference on , 2004 .

[4]  Pierre Glize,et al.  A multi-agent system for building dynamic ontologies , 2007, AAMAS '07.

[5]  Pierre Glize,et al.  MECHANISM TYPE SYNTHESIS BASED ON SELF-ASSEMBLING AGENTS , 2004, Appl. Artif. Intell..

[6]  Marie-Pierre Gleizes,et al.  Self-organising Software - From Natural to Artificial Adaptation , 2011, Natural Computing Series.

[7]  Michael J. North,et al.  Tutorial on Agent-Based Modeling and Simulation PART 2: How to Model with Agents , 2006, Proceedings of the 2006 Winter Simulation Conference.

[8]  Guillaume Hutzler,et al.  Adaptative Dichotomic Optimization: a New Method for the Calibration of Agent-Based Models , 2007 .

[9]  Felix Dobslaw,et al.  A parameter-tuning framework for metaheuristics based on design of experiments and artificial neural networks , 2010 .

[10]  F. Imbault,et al.  A stochastic optimization approach for parameter tuning of support vector machines , 2004, ICPR 2004.

[11]  Guillaume Hutzler,et al.  Automatic Tuning of Agent-Based Models Using Genetic Algorithms , 2005, MABS.

[12]  Ajith Abraham,et al.  Inertia Weight strategies in Particle Swarm Optimization , 2011, 2011 Third World Congress on Nature and Biologically Inspired Computing.

[13]  Bruce A. Draper,et al.  Automatically Searching for Optimal Parameter Settings Using a Genetic Algorithm , 2011, ICVS.