Multiobjective Location Problems with Variable Domination Structures and an Application to Select a New Hub Airport
Abstract
:1. Introduction
2. Preliminaries
- (i)
- is a minimal solution of if is a minimal element of w.r.t. the domination map , i.e,The set of all minimal elements of w.r.t is denoted by
- (ii)
- is a non-dominated solution of if is a non-dominated element of w.r.t. the domination map , i.e,The set of all non-dominated elements of w.r.t is denoted by
- (iii)
- is a weakly non-dominated solution of if is a weakly non-dominated element of w.r.t. the domination map , i.e,In this case, it is assumed that , for all . The set of all weakly non-dominated elements of w.r.t. is denoted by
3. Minimal and Weakly Non-Dominated Solutions of Vector Optimization Problems and Inverse Variational Inequality
- If the following inequality holds for all ,Then, is a weakly non-dominated element of w.r.t. .
- Furthermore, for , , if the following assertion holds true for all ,is a minimal element of w.r.t. .
4. MCDM Problems w.r.t. Variable Domination Structures
4.1. MCDM Problems
- Determining the goal of the decision-making process;
- Selecting the set of criteria or objective functions;
- Collecting the alternatives or locations in location problems (feasible set);
- Considering a cone in order to compare the objective function values;
- Choosing a weighting method to represent the relative importance of criteria (if needed);
- Choosing a method to solve the MCDM problem.
4.2. Decision Matrix and Weight Matrix
4.3. Solution Concepts for MCDM Problems w.r.t. Variable Domination Structure
- is a solution of Type I of if the performance of this alternative (corresponding to its weight vector ) does not exceed the performances of other alternatives corresponding to the weight vector . This is equivalent tofor all .
- is a solution of Type II of if the performance of this alternative (corresponding to an arbitrary weight vector ) does not exceed the performances of alternative corresponding to its weight vector , for all . This is equivalent tofor all .
5. Selection of a New Hub Airport Using the MCDM Problem w.r.t. Variable Domination Structure
- Climatological characteristics of the airport;
- Geographical location and proximity to most in-demand destinations;
- Airport size (millions of passengers per year);
- The market size of the airport;
- Airport capacity;
- Number of destinations served;
- Number of gates at the airport;
- Per capita income;
- Generalized access cost;
- Total airline cost of operating this hub;
- Market share at the given airport;
- The efficiency of airport capacity throughout the peaks.
- Feasible set:
- The decision maker collects a set of candidate airports for a new hub. represents a feasible airport, , . For a numerical experiment, the decision maker considers seven feasible airports as : Amsterdam-Schiphol, : Brussels, : Düsseldorf, : Frankfurt-Main, : London-Heathrow, : Milan-Malpensa, and : Paris-Charles de Gaulle CDG. Moreover, we propose
- Objective functions:
- The decision maker proposes the following seven objective functions:
- : Airport size (millions of passengers per year);
- : Airport capacity (aircraft/hour);
- : Population of the airport (million);
- : Per capita income (ECU/inhabitant);
- : Total airline cost of operating two hubs (million euros);
- : Generalized access cost (euros/passenger); and
- : the average airport cost per service (euros/WLU).
Let be the objective function, defined by - Preference relation:
- The social, political, and governmental regulations and financial risks are different in each country/state. For instance, optimizing generalized access cost has different preferences at each airport than optimizing the other objective functions; the decision maker assigns an appropriate parameter for each objective function at each feasible location by a pairwise comparison matrix.
6. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Author Name | Year | Title | Source |
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Chr. Tammer et al. | 2003 | Location Problems in Mining Landscapes | Wirtschaftsinformatik und Operations Research |
R. Zanjirani Farahani et al. | 2010 | Multiple criteria facility location problems: A survey | Applied Mathematical Modelling |
H. A. Eiselt et al. | 2011 | Foundations of location problems | Springer New York Dordrecht Heidelberg London |
S. Alzorba et al. | 2017 | A new algorithm for solving planar multiobjective location problems involving the Manhattan norm | European Journal of Operational Research |
B. Zargini et al. | 2018 | Multi-objective location problems with variable domination structure | Investigacion Operacional |
Ch. Bierwirth et al. (Editorial) | 2019 | Preface “Logistics Management” | Springer |
M. Behnke et al. | 2021 | A column generation approach for an emission-oriented vehicle routing problem on a multigraph | European Journal of Operational Research |
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Normalization Method | Condition of Use | Formula |
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Linear normalization sum-based method | Minimization criteria | |
Linear normalization sum-based method | Maximization criteria | |
Vector normalization | Minimization criteria | |
Vector normalization | Maximization criteria |
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Zargini, B. Multiobjective Location Problems with Variable Domination Structures and an Application to Select a New Hub Airport. Logistics 2022, 6, 24. https://doi.org/10.3390/logistics6020024
Zargini B. Multiobjective Location Problems with Variable Domination Structures and an Application to Select a New Hub Airport. Logistics. 2022; 6(2):24. https://doi.org/10.3390/logistics6020024
Chicago/Turabian StyleZargini, Bettina. 2022. "Multiobjective Location Problems with Variable Domination Structures and an Application to Select a New Hub Airport" Logistics 6, no. 2: 24. https://doi.org/10.3390/logistics6020024
APA StyleZargini, B. (2022). Multiobjective Location Problems with Variable Domination Structures and an Application to Select a New Hub Airport. Logistics, 6(2), 24. https://doi.org/10.3390/logistics6020024