We present a new solution approach for multidisciplinary design optimization (MDO) problems that, for the first time in literature, has all of the following characteristics: Each discipline has multiple objectives and constraints with mixed continuous-discrete variables; uncertainty exists in parameters and as a result, uncertainty propagation exists within and across disciplines; probability distributions of uncertain parameters are not available but their interval of uncertainty is known; and disciplines can be fully (two-way) coupled. The proposed multiobjective collaborative robust optimization (McRO) approach uses a multiobjective genetic algorithm as an optimizer. McRO obtains solutions that are as best as possible in a multiobjective and multidisciplinary sense. Moreover, for McRO solutions, the variation of objective and/or constraint functions can be kept within an acceptable range. McRO includes a technique for interdisciplinary uncertainty propagation. The approach can be used for robust optimization of MDO problems with multiple objectives, or constraints, or both together at system and subsystem levels. Results from an application of McRO to a numerical and an engineering example are presented. It is concluded that McRO can solve fully coupled MDO problems with interval uncertainty and obtain solutions that are comparable to a single-disciplinary robust optimization approach.
Skip Nav Destination
e-mail: azarm@umd.edu
Article navigation
August 2008
Research Papers
Multiobjective Collaborative Robust Optimization With Interval Uncertainty and Interdisciplinary Uncertainty Propagation
M. Li,
M. Li
Postdoctoral Research Associate
Department of Mechanical Engineering,
University of Maryland
, College Park, MD 20742
Search for other works by this author on:
S. Azarm
S. Azarm
Professor
Department of Mechanical Engineering,
e-mail: azarm@umd.edu
University of Maryland
, College Park, MD 20742
Search for other works by this author on:
M. Li
Postdoctoral Research Associate
Department of Mechanical Engineering,
University of Maryland
, College Park, MD 20742
S. Azarm
Professor
Department of Mechanical Engineering,
University of Maryland
, College Park, MD 20742e-mail: azarm@umd.edu
J. Mech. Des. Aug 2008, 130(8): 081402 (11 pages)
Published Online: July 14, 2008
Article history
Received:
May 23, 2007
Revised:
March 12, 2008
Published:
July 14, 2008
Citation
Li, M., and Azarm, S. (July 14, 2008). "Multiobjective Collaborative Robust Optimization With Interval Uncertainty and Interdisciplinary Uncertainty Propagation." ASME. J. Mech. Des. August 2008; 130(8): 081402. https://doi.org/10.1115/1.2936898
Download citation file:
Get Email Alerts
Reviewer’s Recognition
J. Mech. Des (May 2025)
Heterogeneous Multi-Source Data Fusion Through Input Mapping and Latent Variable Gaussian Process
J. Mech. Des (April 2025)
Design, Analysis, and Experimental Evaluation of a New Expansion Screw Using Compliant Mechanisms
J. Mech. Des (September 2025)
Design of a 6-DOF Heavy-Duty and High-Precision 3–3 Orthogonal Parallel Robot With Flexible Hinges
J. Mech. Des (September 2025)
Related Articles
Weights, Norms, and Notation in Analytical Target Cascading
J. Mech. Des (May,2005)
The Human Dimension
J. Mech. Des (May,2010)
An Invitation to a Broader Discourse
J. Mech. Des (August,2010)
Probabilistic Framework for Uncertainty Propagation With Both Probabilistic and Interval Variables
J. Mech. Des (February,2011)
Related Proceedings Papers
Related Chapters
Producibility Engineering
Manufacturing Engineering: Principles for Optimization, Third Edition
A Smart Sampling Strategy for One-at-a-Time Sensitivity Experiments (PSAM-0360)
Proceedings of the Eighth International Conference on Probabilistic Safety Assessment & Management (PSAM)
Introduction
Turbo/Supercharger Compressors and Turbines for Aircraft Propulsion in WWII: Theory, History and Practice—Guidance from the Past for Modern Engineers and Students