Quantifying the Shape of Pareto Fronts During Multi-Objective Trade Space Exploration

Author:

Unal Mehmet1,Warn Gordon P.1,Simpson Timothy W.2

Affiliation:

1. Civil and Environmental Engineering, The Pennsylvania State University, University Park, PA 16802 e-mail:

2. Mechanical & Nuclear Engineering, The Pennsylvania State University, University Park, PA 16802 e-mail:

Abstract

Recent advances in simulation and computation capabilities have enabled designers to model increasingly complex engineering problems, taking into account many dimensions, or objectives, in the problem formulation. Increasing the dimensionality often results in a large trade space, where decision-makers (DM) must identify and negotiate conflicting objectives to select the best designs. Trade space exploration often involves the projection of nondominated solutions, that is, the Pareto front, onto two-objective trade spaces to help identify and negotiate tradeoffs between conflicting objectives. However, as the number of objectives increases, an exhaustive exploration of all of the two-dimensional (2D) Pareto fronts can be inefficient due to a combinatorial increase in objective pairs. Recently, an index was introduced to quantify the shape of a Pareto front without having to visualize the solution set. In this paper, a formal derivation of the Pareto Shape Index is presented and used to support multi-objective trade space exploration. Two approaches for trade space exploration are presented and their advantages are discussed, specifically: (1) using the Pareto shape index for weighting objectives and (2) using the Pareto shape index to rank objective pairs for visualization. By applying the two approaches to two multi-objective problems, the efficiency of using the Pareto shape index for weighting objectives to identify solutions is demonstrated. We also show that using the index to rank objective pairs provides DM with the flexibility to form preferences throughout the process without closely investigating all objective pairs. The limitations and future work are also discussed.

Publisher

ASME International

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications,Mechanical Engineering,Mechanics of Materials

Reference41 articles.

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2. Ross, A. M., and Hastings, D. E., 2005, “The Tradespace Exploration Paradigm,” INCOSE International Symposium, Rochester, NY, July 10–14, pp. 1706–1718.https://pdfs.semanticscholar.org/7f44/1744fb3fbc12ef26deb7df92b9167a584553.pdf

3. Balling, R., 1999, “Design by Shopping: A New Paradigm?,” Third World Congress of Structural and Multidisciplinary Optimization (WCSMO), Buffalo, NY, May 17–21, pp. 295–297.

4. Many Objective Visual Analytics: Rethinking the Design of Complex Engineered Systems,2013

5. Guest Editors' Introduction—Visual Analytics;IEEE Comput. Graphics Appl.,2004

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