4.5 Article

Certifiable Risk-Based Engineering Design Optimization

Journal

AIAA JOURNAL
Volume 60, Issue 2, Pages 551-565

Publisher

AMER INST AERONAUTICS ASTRONAUTICS
DOI: 10.2514/1.J060539

Keywords

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Funding

  1. Air Force Office of Scientific Research Multi-University Research Initiative [FA9550-15-1-0038, FA9550-18-1-0023]
  2. Air Force Center of Excellence on Multi-Fidelity Modeling of Rocket Combustor Dynamics [FA9550-17-1-0195]
  3. Office of Naval Research under Military Interdepartmental Purchase Request [N0001420~WX00519]

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This paper discusses the reliable and risk-averse design of complex engineering systems, introduces two notions of certifiability, and compares them with reliability-based design optimization. By satisfying these notions, certifiable risk-based design optimization can be achieved, effectively mitigating the adverse effects of choosing hard failure thresholds required in traditional methods.
Reliable, risk-averse design of complex engineering systems with optimized performance requires dealing with uncertainties. A conventional approach is to add safety margins to a design that was obtained from deterministic optimization. Safer engineering designs require appropriate cost and constraint function definitions that capture the risk associated with unwanted system behavior in the presence of uncertainties. The paper proposes two notions of certifiability. The first is based on accounting for the magnitude of failure to ensure data-informed conservativeness. The second is the ability to provide optimization convergence guarantees by preserving convexity. Satisfying these notions leads to certifiable risk-based design optimization (CRIBDO). In the context of CRIBDO, risk measures based on superquantile (aka conditional value-at-risk) and buffered probability of failure are analyzed. CRIBDO is contrasted with reliability-based design optimization (RBDO), in which uncertainties are accounted for via the probability of failure through a structural and a thermal design problem. A reformulation of the short column structural design problem leading to a convex CRIBDO problem is presented. The CRIBDO formulations capture more information about the problem to assign the appropriate conservativeness, exhibit superior optimization convergence by preserving properties of underlying functions, and alleviate the adverse effects of choosing hard failure thresholds required in RBDO.

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