Design reliability and robustness are getting increasingly important for the general design of aerospace systems with many inherently uncertain design parameters. This paper presents a hybrid uncertainty-based design optimization (UDO) method developed from probability theory and interval theory. Most of the uncertain design parameters which have sufficient information or experimental data are classified as random variables using probability theory, while the others are defined as interval variables with interval theory. Then a hybrid uncertainty analysis method based on Monte Carlo simulation and Taylor series interval analysis is developed to obtain the uncertainty propagation from the design parameters to system responses. Three design o...
With progress of space technology and increase of space mission demand, requirements for robustness ...
This paper proposes a way to model uncertainties and to introduce them explicitly in the design proc...
Computational costs of robust-based design optimization methods may be very high. Evaluation of new ...
AbstractIn this paper, we propose an uncertainty analysis and design optimization method and its app...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/76707/1/AIAA-2006-2001-814.pd
ABSTRACT: Uncertainty-based multidisciplinary design optimization considers probabilistic variables ...
Spotlighting the field of Multidisciplinary Design Optimization (MDO), this book illustrates and imp...
International audienceThe design of a space transportation system is a complex multidisciplinary opt...
This paper proposes a robust design optimization methodology under design uncertainties of an aerosp...
A new engineering design optimization method under uncertainties is proposed in this paper, in which...
An investigation of methods for the multidisciplinary design optimisation of conventional space tran...
International audienceThe purpose of this article is to present a Chance Constrained Optimization of...
This paper proposes a way to model uncertainties and to introduce them explicitly in the design proc...
With progress of space technology and increase of space mission demand, requirements for robustness ...
The aim of this work is to present a general overview of state-of-the-art related to design for unce...
With progress of space technology and increase of space mission demand, requirements for robustness ...
This paper proposes a way to model uncertainties and to introduce them explicitly in the design proc...
Computational costs of robust-based design optimization methods may be very high. Evaluation of new ...
AbstractIn this paper, we propose an uncertainty analysis and design optimization method and its app...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/76707/1/AIAA-2006-2001-814.pd
ABSTRACT: Uncertainty-based multidisciplinary design optimization considers probabilistic variables ...
Spotlighting the field of Multidisciplinary Design Optimization (MDO), this book illustrates and imp...
International audienceThe design of a space transportation system is a complex multidisciplinary opt...
This paper proposes a robust design optimization methodology under design uncertainties of an aerosp...
A new engineering design optimization method under uncertainties is proposed in this paper, in which...
An investigation of methods for the multidisciplinary design optimisation of conventional space tran...
International audienceThe purpose of this article is to present a Chance Constrained Optimization of...
This paper proposes a way to model uncertainties and to introduce them explicitly in the design proc...
With progress of space technology and increase of space mission demand, requirements for robustness ...
The aim of this work is to present a general overview of state-of-the-art related to design for unce...
With progress of space technology and increase of space mission demand, requirements for robustness ...
This paper proposes a way to model uncertainties and to introduce them explicitly in the design proc...
Computational costs of robust-based design optimization methods may be very high. Evaluation of new ...