Publication: Experimental study on an efficient dengue disease management system: Planning and optimizing hospital staff allocation
Type:
Article
Date
2018-01
Journal Title
Journal ISSN
Volume Title
Publisher
The Science and Information (SAI) Organization
Abstract
Dengue has become a serious health hazard in Sri
Lanka with the increasing cases and loss of human lives. It is
necessary to develop an efficient dengue disease management
system which could predict the dengue outbreaks, plan the
countermeasures accordingly and allocate resources for the
countermeasures. We have proposed a platform for Dengue
disease management with following modules: (1) a prediction
module to predict the dengue outbreak and (2) an optimization
algorithm module to optimize hospital staff according to the
predictions made on future dengue patient counts. This paper
focuses on the optimization algorithm module. It has been
developed based on two approaches: (1) Genetic Algorithm (GA)
and (2) Iterated Local Search (ILS). We are presenting the
performances of our optimization algorithm module with a
comparison of the two approaches. Our results show that the GA
approach is much more efficient and faster than the ILS
approach.
Description
Keywords
Optimization, genetic algorithm, iterated local searc, algorithm comparison, nurse scheduling
Citation
Jayasuriya, M.M.C. & Galappaththi, G.K.K.T. & Sampath, M.A. & Nipunika, H.N. & Rankothge, Windhya. (2018). Experimental study on an efficient dengue disease management system: Planning and optimizing hospital staff allocation. International Journal of Advanced Computer Science and Applications. 9. 50-54. 10.14569/IJACSA.2018.091107.
