Hybrid quantum-inspired optimization to solve home health care nurse allocation, routing, and scheduling problems
| ABG-135945 | Sujet de Thèse | |
| 23/02/2026 | Financement de l'Union européenne |
- Informatique
Description du sujet
Topic description
The organization of home health care (HHC) presents growing operational complexity due to demographic aging and increasing demand for long-term care. Key decisions such as nurse-to-patient assignment, scheduling of visits, and routing must be managed under various time, capacity, and service continuity constraints. These challenges result in large-scale combinatorial optimization problems, whose integrated resolution is computationally intractable with exact methods under realistic conditions [1]. This project aims to address these challenges by developing time-efficient optimization strategies adapted to the operational context of HHC systems. Given the scale and complexity of the problem, metaheuristics represent a practical alternative to exact methods [2]. However, their computational burden may still pose limitations in time-sensitive situations, such as when rapid rescheduling is required due to cancellations or unforeseen disruptions [3]. To improve efficiency, the project investigates the design of quantum-inspired metaheuristics, which incorporate concepts such as qubit-inspired representations, probabilistic modeling, and parallel search dynamics to enhance the performance of classical search processes [4,5]. These approaches aim to accelerate convergence and improve search robustness in high-dimensional and dynamic settings [5]. To further enhance solution quality and reduce computational cost, learningbased techniques such as surrogate modeling will be integrated into the metaheuristic design [3,6].
References:
[1] Shavarani, S. M., Golabi, M., & Vizvari, B. (2019). Assignment of medical staff to operating rooms in disaster preparedness: A novel stochastic approach. IEEE Transactions on Engineering Management, 67(3).
[2] Boussaïd, I., Lepagnot, J., & Siarry, P. (2013). A survey on optimization metaheuristics. Information sciences, 237.
[3] Sulaman, M., Golabi, M., Essaid, M., Lepagnot, J., Brévilliers, M., & Idoumghar, L. (2024). Surrogateassisted metaheuristics for the facility location problem with distributed demands on network edges. Computers & Industrial Engineering, 188.
[4] Dahi, Z. A., & Alba, E. (2022). Metaheuristics on quantum computers: Inspiration, simulation and real execution. Future Generation Computer Systems, 130.
[5] Pooja, & Sood, S. K. (2024). Scientometric analysis of quantum-inspired metaheuristic algorithms. Artificial Intelligence Review, 57(2).
[6] Azerine, A., Golabi, M., Oulamara, A., & Idoumghar, L. (2024). Enhancing Electric Vehicle Charging Schedules: A Surrogate-Assisted Approach. In Proceedings of the Genetic and Evolutionary Computation Conference Companion.
Prise de fonction :
Nature du financement
Précisions sur le financement
Présentation établissement et labo d'accueil
University of Haute-Alsace (UHA)
The University of Haute-Alsace (UHA), located in Mulhouse and Colmar (France), is a public higher education institution known for its strong regional engagement and international outlook. It offers professionally oriented programs in science, technology, law, economics, and humanities, and conducts research closely connected to socio-economic partners. As a human-sized university, UHA provides personalized support to students and promotes innovation in teaching and research.
IRIMAS – OMEGA Team
IRIMAS (Institute for Research in Computer Science, Mathematics, Control and Systems) is a research laboratory of UHA specializing in computer science, applied mathematics, and systems modeling. Its research areas include artificial intelligence, optimization, operational research, intelligent systems, and mathematical modeling.
The proposed PhD project will be carried out within the OMEGA research team at IRIMAS. The team focuses on optimization, mathematical modeling, and advanced decision-support methods, combining theoretical developments with applied research in collaboration with industrial and institutional partners.
For more details: https://omega-irimas.github.io/
Intitulé du doctorat
Pays d'obtention du doctorat
Etablissement délivrant le doctorat
Ecole doctorale
Profil du candidat
Recommended applicant’s profile
Master’s degree in Computer Science, Applied Mathematics, or a related field (e.g., Operations Research, Data Science, or Engineering with a strong quantitative focus).
Solid programming skills and experience in algorithm implementation.
Background in optimization techniques, particularly metaheuristics.
Familiarity with artificial intelligence and machine learning methods.
Interest in quantum-inspired algorithms; prior exposure to basic concepts in quantum computing is welcome.
Vous avez déjà un compte ?
Nouvel utilisateur ?
Vous souhaitez recevoir nos infolettres ?
Découvrez nos adhérents
ADEME
Medicen Paris Region
Groupe AFNOR - Association française de normalisation
Aérocentre, Pôle d'excellence régional
Institut Sup'biotech de Paris
ONERA - The French Aerospace Lab
Ifremer
Nokia Bell Labs France
ANRT
ASNR - Autorité de sûreté nucléaire et de radioprotection - Siège
Nantes Université
SUEZ
TotalEnergies
Tecknowmetrix
Laboratoire National de Métrologie et d'Essais - LNE
Servier
Généthon
