COMPARING MEDICAL ASSISTANT SCHEDULING MEN AND WOMEN WITHIN DIFFERENT WORK SHIFTS USING A GENETIC ALGORITHM, A CASE STUDY AT NASIRIYAH HEART HOSPITAL

Main Article Content

Aseel Ali Mezher
Raad Brzan Mohammed Jawad

Abstract

Organizations today invest their resources optimally through the scheduling process, which is the process of allocating those resources in a certain period of time by achieving a set of constraints , as it has an important role in achieving the goals of organizations and increasing their efficiency, as the service production system in most service organizations, especially specialized hospitals, suffers from a large momentum in the numbers of patients and Providing health services to all governorates and working to improve the service provided to customers (patients).

Article Details

How to Cite
Aseel Ali Mezher, & Raad Brzan Mohammed Jawad. (2024). COMPARING MEDICAL ASSISTANT SCHEDULING MEN AND WOMEN WITHIN DIFFERENT WORK SHIFTS USING A GENETIC ALGORITHM, A CASE STUDY AT NASIRIYAH HEART HOSPITAL. Galaxy International Interdisciplinary Research Journal, 12(5), 365–380. Retrieved from https://internationaljournals.co.in/index.php/giirj/article/view/5596
Section
Articles

References

Akhavizadegan, F., Tavakkoli-Moghaddam, R., Jolai, F., & Ansarifar, J. (2015). Cross-training performance of nurse scheduling with the learning effect. In Multidisciplinary International Scheduling Conference (MISTA2015), Prague, Czech Republic.

Ansari, R., & Saubari, N. (2020). Application of genetic algorithm concept on course scheduling. In IOP conference series: materials science and engineering, IOP Publishing.

, 821 ( 1 ,) 12 - 43.

Anwar, A., Rochman, D. D., & Ferdian, R. (2021). Parallel Machine Scheduling with Shortest Processing Time (SPT) and Longest Processing Time (LPT) TO Minimize MAKESPAN at PT. ABC. Geographical Education (RIGEO), 11(6), 403-407.

Ariyani, M. P., Rosyidi, C. N., & Aisyati, A. (2021). An optimization model of nurse scheduling using goal programming method: a case study. In IOP Conference Series: Materials Science and Engineering, IOP Publishing ,1096(1), 1-10.

Asif, M., Ahmed, K., Alam, S. T., Jahan, S., & Arefin, M. (2022). An empirical analysis of exact algorithms for solving non-preemptive flow shop scheduling problem. International journal of research in industrial engineering, 11(3), 306-321.

Baghalzadeh, S, M., Moradinia, S. F., Keivani, A., & Azizi, M. (2022). Application of Classic and Novel Metaheuristic Algorithms in a BIM-Based Resource Tradeoff in Dam Projects. Smart Cities, 5(4), 1441-1464.

Bamford, D., & Forrester, P. (2010). Essential guide to operations management: concepts and case notes. John Wiley & Sons.

Bengtlars, A., & Väljamets, E. (2014). Optimization of Pile Groups: A practical study using Genetic Algorithm and Direct Search with four different objective functions. Master Thesis within Structural Engineering and Bridges Stockholm, University.

Chawla, S., & Singari, R. M. (2022). Prioritizing Scheduling Parameters in the Automotive Industry Using Fuzzy TOPSIS-DEMATEL Model. Journal of Engg. Research ICAPIE Special Issue, 198, 207.

Chipperfield, A. J., & Fleming, P. J. (1995). The MATLAB genetic algorithm toolbox.4-1.

Cunha, B., Madureira, A., Fonseca, B., & Matos, J. (2021). Intelligent scheduling with reinforcement learning. Applied Sciences, 11(8), 3710.

Drachal, K., & Pawłowski, M. (2021). A review of the applications of genetic algorithms to forecasting prices of commodities. Economies, 9(1), 6.

Fouad, A., Zenger, K., & Gao, X. Z. (2018). A novel flower pollination algorithm based on genetic algorithm operators. In Proceedings of the 9th EUROSIM Congress on Modelling and Simulation, Eurosim 2016, The 57th SIMS Conference on Simulation and Modelling SIMS 2016 .142, 1060-1066.

Hamid, M., Tavakkoli-Moghaddam, R., Golpaygani, F., & Vahedi-Nouri, B. (2020). A multi-objective model for a nurse scheduling problem by emphasizing human factors. Proceedings of the institution of mechanical engineers, Part H: journal of engineering in medicine, 234(2), 179-199.

Helal, A., Amer, M., & Eldosouki, H. (2012). Optimal location and sizing of distributed generation based on gentic algorithm. In CCCA12, IEEE,1-6.

Karakaya, Ş., & Soykasap, Ö. (2009). Buckling optimization of laminated composite plates using genetic algorithm and generalized pattern search algorithm. Structural and Multidisciplinary Optimization, 39(5), 477-486.

Karimi, G., & Jahanian, O. (2012). Genetic algorithm application in swing phase optimization of AK prosthesis with passive dynamics and biomechanics considerations. Genetic Algorithms in Applications.

Krajewski, L. J., & Malhotra, M. K. (2022). Operations management: Processes and supply chains. (14thEd). Pearson Education Limited.