ENHANCING MEDICAL OFFICER SCHEDULING IN HEALTHCARE ORGANIZATIONS: A COMPREHENSIVE INVESTIGATION OF GENETIC AND GOOGLE OR TOOLS ALGORITHMS FOR MULTI-PROJECT RESOURCE-CONSTRAINED OPTIMIZATION
Author:
Elhalid Osama Burak1ORCID, Isık Ali Hakan2ORCID
Affiliation:
1. MEHMET AKİF ERSOY ÜNİVERSİTESİ, MÜHENDİSLİK-MİMARLIK FAKÜLTESİ 2. MEHMET AKIF ERSOY UNIVERSITY
Abstract
In healthcare organizations, medical staff scheduling is vital to achieving optimal patient care, ensuring the well-being of medical officers, and the efficiency of operations. This research aims to address the challenges of optimizing the scheduling of limited resources for multiple projects for medical staff, through a comparative analysis of Google OR tools and genetic algorithms. We evaluate the performance of these tools in various scenarios, taking into account factors such as overtime, work balance, and scheduling efficiency. This comparative analysis reveals the strengths and weaknesses of each approach, facilitating the development of improved medical staff scheduling solutions. Additionally, we offer algorithmic optimizations tailored to meet the requirements of specific healthcare settings, which contribute to enhancing the adaptability and effectiveness of scheduling tools. The research findings provide valuable insights to guide decision-making in healthcare institutions, ultimately aiming to enhance the quality of care provided by medical officers and improve the overall efficiency of the healthcare system. In conclusion, the results show that the modified Google OR algorithm significantly outperforms the Google OR tools and the regular genetic algorithm in performance.
Publisher
International Journal of 3D Printing Technologies and Digital Industry
Reference24 articles.
1. 1. Google Corporation, “Google Developers”, http://developers.google.com/, January 9, 2024. 2. 2. GeeksforGeeks, “Genetic Algorithms”, https://www.geeksforgeeks.org/genetic-algorithms/. January 9, 2024. 3. 3. Static, U., Jacko, P., & Kirkbride, C., “Performance evaluation of scheduling policies for the dynamic and stochastic resource-constrained multi-project scheduling problem “, International Journal of Production Research, Vol. 60, Issue 4, Pages 1411-1423, 2022. 4. 4. Browning, T. R., Yassine, A. A., “Resource-constrained multi-project scheduling: Priority rule performance revisited“, International Journal of Production Economics, Vol. 126, Issue 2, Pages 212-228, 2010. 5. 5. Fischer, F. M., Borges, F. N., Rotenberg, L., Latorre, M. R., Soares, N. S., Rosa, P. L., Teixeira, L. R., Nagai, R., Steluti, J., Landsbergis, P., “Workability of health care shift workers: What matters? “, Chronobiol Int., Vol. 23, Issue 6, Pages 1165-79, 2006.
|
|