Rapid Aerodynamic Shape Optimization Under Parametric and Turbulence Model Uncertainty: A Stochastic Gradient Approach
Llu\'is Jofre, Alireza Doostan

TL;DR
This paper introduces a stochastic gradient method for rapid, robust aerodynamic shape optimization that accounts for model and operating condition uncertainties, significantly improving design performance with minimal additional computational cost.
Contribution
It develops a stochastic gradient approach that efficiently handles high-dimensional uncertainties in aerodynamic optimization, enabling robust designs with reduced computational expense.
Findings
Improved aerodynamic designs with better mean and variance performance.
Method achieves robustness with only a small increase in computational cost.
Applicable to complex turbulence models and parametric uncertainties.
Abstract
Aerodynamic optimization is ubiquitous in the design of most engineering systems interacting with fluids. A common approach is to optimize a performance function defined by a choice of an aerodynamic model, e.g., turbulence RANS model, and at nominal operating conditions. Practical experience indicates that such a deterministic approach may result in considerably sub-optimal designs when the adopted aerodynamic model does not lead to accurate flow predictions or when the actual operating conditions differ from those considered in the design. One approach to address this shortcoming is to consider an average or robust design, wherein the statistical moments of the performance function, given the uncertainty in the operating conditions and the aerodynamic model, is optimized. However, when the number of uncertain inputs is large or the performance function exhibits significant…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Advanced Multi-Objective Optimization Algorithms · Topology Optimization in Engineering
