Mathematical Multi-Objective Optimization of the Tactical Allocation of Machining Resources in Functional Workshops
Doktorsavhandling, 2023
In Paper I, we propose a new bi-objective mixed-integer (linear) optimization model for the Tactical Resource Allocation Problem (TRAP). We highlight some of the mathematical properties of the TRAP which are utilized to enhance the solution process. In Paper II, we address the uncertainty in the coefficients of one of the objective functions considered in the bi-objective TRAP. We propose a new bi-objective robust efficiency concept and highlight its benefits over existing robust efficiency concepts. In Paper III, we extend the TRAP with an inventory of semi-finished as well as finished parts, resulting in a tri-objective mixed-integer (linear) programming model. We create a criterion space partitioning approach that enables solving sub-problems simultaneously. In Paper IV, using our knowledge from our previous work we embarked upon a task to generalize our findings to develop an approach for any discrete tri-objective optimization problem. The focus is on identifying a representative set of non-dominated points with a pre-defined desired coverage gap.
Decision-making
Robust efficient solutions
Discrete bi-objective optimization
Capacity planning
Discrete tri-objective optimization
Production planning
Coverage gap
Författare
Sunney Fotedar
Chalmers, Matematiska vetenskaper, Tillämpad matematik och statistik
Bi-objective optimization of the tactical allocation of job types to machines: mathematical modeling, theoretical analysis, and numerical tests
International Transactions in Operational Research,;Vol. 30(2023)p. 3479-3507
Artikel i vetenskaplig tidskrift
Robust optimization of a bi‑objective tactical resource allocation problem with uncertain qualification costs
Autonomous Agents and Multi-Agent Systems,;Vol. 36(2022)
Artikel i vetenskaplig tidskrift
A criterion space decomposition approach to generalized tri-objective tactical resource allocation
Computational Management Science,;Vol. 20(2023)
Artikel i vetenskaplig tidskrift
Fotedar,S., Strömberg,A.-B. A method to identify a representation of the set of non-dominated points for discrete tri-objective optimization problems.
In the aerospace world, every component, from the tiniest screw to the largest engine part, plays a vital role. Ensuring these parts are produced both efficiently and cost-effectively is essential. It's not just about keeping costs down; it's about delivering quality products on time, each time.
The Challenges: Production in aerospace involves the production resources, the materials, and the finished products. One needs to ensure that the resources are always ready for the task at hand, while not spending too much money getting prepared. There's also an inventory to manage—not having too many unused parts lying around. Hence, there is a balancing act to manage.
Our Solution: We developed a series of mathematical models to tackle these challenges. Our first model aimed to tell manufacturers how to allocate resources to get the most out of these, while also minimising costs. In the real world, things don't always go as planned—our second model helps manufacturers remain flexible and prepare for unforeseen challenges. Our third model ensures a balanced inventory, helping manufacturers to hold just the right amount of semi-finished as well as finished parts. Finally, we took all our learnings and used these to create a general model that could be applied to any complex multi-objective decision-making problem.
In Conclusion: It's about working smarter, reducing waste, and ensuring that the aerospace industry can continue to soar to new heights both efficiently and cost-effectively.
Taktisk resursallokering för effektivt kapacitetsutnyttjande
VINNOVA (2017-04845), 2017-11-10 -- 2022-12-31.
Ämneskategorier
Produktionsteknik, arbetsvetenskap och ergonomi
Matematik
Beräkningsmatematik
Annan matematik
Diskret matematik
Drivkrafter
Hållbar utveckling
Styrkeområden
Transport
Produktion
Fundament
Grundläggande vetenskaper
ISBN
978-91-7905-902-6
Doktorsavhandlingar vid Chalmers tekniska högskola. Ny serie: 5368
Utgivare
Chalmers
Pascal, Chalmers Tvärgata 3, Göteborg
Opponent: Prof. Kathrin Klamroth, Institute of Mathematical Modelling, Analysis and Computational Mathematics, University of Wuppertal, Germany