System Architecture Optimization Strategies: Dealing with Expensive Hierarchical Problems
Choosing the right system architecture for the problem at hand is challenging due to the large design space and high uncertainty in the early stage of the design process. Formulating the architecting process as an optimization problem may mitigate some of these challenges. This work investigates str...
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Main Authors | , , , , |
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Format | Journal Article |
Language | English |
Published |
02.02.2025
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2502.00838 |
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Summary: | Choosing the right system architecture for the problem at hand is challenging
due to the large design space and high uncertainty in the early stage of the
design process. Formulating the architecting process as an optimization problem
may mitigate some of these challenges. This work investigates strategies for
solving System Architecture Optimization (SAO) problems: expensive, black-box,
hierarchical, mixed-discrete, constrained, multi-objective problems that may be
subject to hidden constraints. Imputation ratio, correction ratio, correction
fraction, and max rate diversity metrics are defined for characterizing hierar
chical design spaces. This work considers two classes of optimization
algorithms for SAO: Multi-Objective Evolutionary Algorithms (MOEA) such as
NSGA-II, and Bayesian Optimization (BO) algorithms. A new Gaussian process
kernel is presented that enables modeling hierarchical categorical variables,
extending previous work on modeling continuous and integer hierarchical
variables. Next, a hierarchical sampling algorithm that uses design space
hierarchy to group design vectors by active design variables is developed.
Then, it is demonstrated that integrating more hierarchy information in the
optimization algorithms yields better optimization results for BO algorithms.
Several realistic single-objective and multi-objective test problems are used
for investigations. Finally, the BO algorithm is applied to a jet engine
architecture optimization problem. This work shows that the developed BO
algorithm can effectively solve the problem with one order of magnitude less
function evaluations than NSGA-II. The algorithms and problems used in this
work are implemented in the open-source Python library SBArchOpt. |
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DOI: | 10.48550/arxiv.2502.00838 |