Abstract

This paper introduces a novice solution methodology for multi-objective optimization problems having the coefficients in the form of uncertain variables. The embedding theorem, which establishes that the set of uncertain variables can be embedded into the Banach space C[0, 1] × C[0, 1] isometrically and isomorphically, is developed. Based on this embedding theorem, each objective with uncertain coefficients can be transformed into two objectives with crisp coefficients. The solution of the original m-objectives optimization problem with uncertain coefficients will be obtained by solving the corresponding 2 m-objectives crisp optimization problem. The R & D project portfolio decision deals with future events and opportunities, much of the information required to make portfolio decisions is uncertain. Here parameters like outcome, risk, and cost are considered as uncertain variables and an uncertain bi-objective optimization problem with some useful constraints is developed. The corresponding crisp tetra-objective optimization model is then developed by embedding theorem. The feasibility and effectiveness of the proposed method is verified by a real case study with the consideration that the uncertain variables are triangular in nature.

Highlights

  • An important problem in topology is to decide when a space X can be embedded into another space Y, i.e., when there exists an embedding from X into Y

  • This paper introduces a novice solution methodology for multi-objective optimization problems having the coefficients in the form of uncertain variables

  • We propose and prove the uncertain embedding theorem from the space of uncertain variables to the Banach space C [0, 1] × C [0, 1]

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Summary

Introduction

An important problem in topology is to decide when a space X can be embedded into another space Y, i.e., when there exists an embedding from X into Y. To model uncertainty and vagueness, fuzzy set theory is used by many to characterize uncertain R & D project information. Pereira and junior [15], Coffin and Taylor [16], Machacha and Bhattacharyya [17], Kuchta [18], Mohamed and McCowan [19], Hsu et al [20], Wang and Hwang [21], Kim et al [22], Karsak [23] have applied fuzzy set theory in the field of R & D project portfolio selection. Several research works [29,30] have been done in this area, but none has considered the R & D project portfolio selection problem in the uncertain environment.

Preliminaries
Uncertain Multiple Objective Optimization Method Using Embedding Theorem
Notations
Maximization of Benefit
Formulation of the Constraints
The Set of Feasible Solutions
Conclusions
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