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Digital Library of the
European Council for Modelling and Simulation |
Title: |
Comparision Of Compuational Efficiency Of MOEA\D and NSGA-II For Passive
Vehicle Suspension Optimization |
Authors: |
Tey Jing Yuen, Rahizar Ramli |
Published in: |
(2010).ECMS 2010 Proceedings
edited by A Bargiela S A Ali D Crowley E J H Kerckhoffs. European Council for Modeling and Simulation.
doi:10.7148/2010 ISBN:
978-0-9564944-1-2 24th
European Conference on Modelling and Simulation, Simulation Meets Global Challenges Kuala
Lumpur, June 1-4 2010 |
Citation
format: |
Yuen, T. J., & Ramli, R. (2010). Comparision
Of Compuational Efficiency Of MOEA\D and NSGA-II
For Passive Vehicle Suspension Optimization. ECMS 2010 Proceedings edited by
A Bargiela S A Ali D Crowley E J H Kerckhoffs (pp. 219-225). European Council for Modeling
and Simulation. doi:10.7148/2010-0219-0225 |
DOI: |
http://dx.doi.org/10.7148/2010-0219-0225 |
Abstract: |
This paper evaluates new
optimization algorithms for optimizing automotive suspension systems
employing stochastic methods. This method is introduced as an alternative
over the conventional approach, namely trial and error, or design of
experiment (DOE), to efficiently optimize the suspension system.
Optimizations algorithms employed are the multi-objective evolutionary
algorithms based on decomposition (MOEA\D), and non-sorting genetic algorithm
II (NSGA-II). A two-degree-of-freedom (2- DOF) linear quarter vehicle model
(QVM) traversing a random road profile is utilized to describe the ride
dynamics. The road irregularity is assumed as a Gaussian random process and
represented as a simple exponential power spectral density (PSD). The
evaluated performance indices are the discomfort parameter (ACC), suspension
working space (SWS) and dynamic tyre load (DTL). The
optimised design variables are the suspension
stiffness, Ks and
damping coefficient, Cs.
In this paper, both algorithms are analyzed with different sets of
experiments to compare their computational efficiency. The results indicated
that MOEA\D is computationally efficient in searching for Pareto solutions
compared to NSGA-II, and showed reasonable improvement in ride comfort. |
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