2001
DOI: 10.2514/2.1392
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Mathematical and Pragmatic Perspectives of Physical Programming

Abstract: Physical programming (PP) is an emerging multiobjective and design optimizationmethod that has been applied successfully in diverse areas of engineering and operations research. The application of PP calls for the designer to express preferences by de ning ranges of differing degrees of desirability for each design metric. Although this approach works well in practice, it has never been shown that the resulting optimal solution is not unduly sensitive to these numerical range de nitions. PP is shown to be nume… Show more

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Cited by 48 publications
(14 citation statements)
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“…The advantages of it are [9,10]: After confirming the designer's preferences, the optimal design that agrees with it can be obtained. Compared with the traditional method which set the weighting coefficient of the object back and force, it can reduce the burden of the compute greatly.…”
Section: Optimization Programming (1) Physical Programmingmentioning
confidence: 96%
“…The advantages of it are [9,10]: After confirming the designer's preferences, the optimal design that agrees with it can be obtained. Compared with the traditional method which set the weighting coefficient of the object back and force, it can reduce the burden of the compute greatly.…”
Section: Optimization Programming (1) Physical Programmingmentioning
confidence: 96%
“…The optimization is based on minimization of an aggregate preference function determined by the preference functions (class functions) with the preferences set a priori. The notion of the generalized Pareto optimal solution is introduced in the PP-based method [20] on the basis of the PP class functions. To provide a well-distributed Pareto set, the off-set strategy is introduced in the PP-based algorithm in [18].…”
Section: Survey Of Pareto Quasi-even Set Generatorsmentioning
confidence: 99%
“…To avoid this limitation the notion of a generalized Pareto optimal solution is introduced in [20]. The correspondence between the standard and generalized Pareto optimal solutions is provided in [24].…”
Section: Aggregate Function Single-objective Optimizationmentioning
confidence: 99%
“…Other methods include goal programming (Zou and Mahadevan, 2006), compromise decision support problem Mistree, 1993, 1995;Chen et al, 1996), compromise programming (CP) (Zalney, 1973;Zhang, 2003;Chen et al, 1999) and physical programming (Messac, 1996;Messac et al, 2001;Messac and Ismail-Yahaya, 2002;Chen et al, 2000). Each of these methods has its own advantages and limitations.…”
Section: Multi-objective Optimizationmentioning
confidence: 99%