Cite

1. Zhang, P., H. N. Wu, R. P. Chen, T. H. T. Chan. Hybrid Meta-Heuristic and Machine Learning Algorithms for Tunneling-Induced Settlement Prediction: A Comparative Study. – Tunnelling and Underground Space Technology, Vol. 99, 2020, No 103383, pp. 1-13.10.1016/j.tust.2020.103383Search in Google Scholar

2. Wu, L., G. Huang, J. Fan, X. Ma, H. Zhou, W. Zeng. Hybrid Extreme Learning Machine with Meta-Heuristic Algorithms for Monthly Pan Evaporation Prediction. – Computer and Electronics in Agriculture, Vol. 168, 2020, No 105115, pp. 1-12.10.1016/j.compag.2019.105115Search in Google Scholar

3. Das, S. R., D. Mishra, D. Rout, M. Rout. Stock Market Prediction Using Firefly Algorithm with Evolutionary Framework Optimized Feature Reduction for OSELM Method. – Expert Systems with Applications, Vol. 4, 2019, No 100016, pp. 1-24.10.1016/j.eswax.2019.100016Search in Google Scholar

4. Altan, A., S. Karasu, S. Bekiros. Digital Currency Forecasting with Chaotic Meta-Heuristic Bio-Inspired Signal Processing Techniques. – Chaos, Solitons & Fractals, Vol. 126, 2019, No September 2019, pp. 325-336.10.1016/j.chaos.2019.07.011Search in Google Scholar

5. Naderi, M., E. Khamehchi, B. Karimi. Novel Statistical Forecasting Models for Crude Oil Price, Gas Price, and Interest Rate Based on Meta-Heuristic Bat Algorithm. – Journal of Petroleum Science and Engineering, Vol. 172, 2019, No January 2019, pp. 13-22.10.1016/j.petrol.2018.09.031Search in Google Scholar

6. Milan, S. T., L. Rajabion, H. Ranjbar, N. J. Navimipour. Nature Inspired Meta-Heuristic Algorithms for Solving the Load-Balancing Problem in Cloud Environments. – Computers & Operations Research, Vol. 110, 2019, No October 2019, pp. 159-187.10.1016/j.cor.2019.05.022Search in Google Scholar

7. Alkhanak, E. N., S. P. Lee. A Hyper-Heuristic Cost Optimisation Approach for Scientific Workflow Scheduling in Cloud Computing. – Future Generation Computer Systems, Vol. 86, 2018, No September 2018, pp. 480-506.10.1016/j.future.2018.03.055Search in Google Scholar

8. Reddy, S. S., P. R. Bijwe. – Efficiency Impruvements in Meta-Heuristic Algorithms to Solve the Optimal Power Flow Problem. – International Journal Electrical Power Energy Systems, Vol. 82, 2016, No November 2016, pp. 288-302.10.1016/j.ijepes.2016.03.028Search in Google Scholar

9. Seghier, M. E. A. B., B. Keshtegar, K. F. Tee, T. Zayed, R. Abbassi, N. T. Trung. Prediction of Maximum Pitting Corrosion Depth in Oil and Gas Pipelines. – Engineering Failure Analysis, Vol. 112, 2020, No 104505, pp. 1-14.10.1016/j.engfailanal.2020.104505Search in Google Scholar

10. Gambhir, S., S. K. Malik, Y. Kumar. PSO-ANN Based Diagnostic Model for the Early Detection of Dengue Disease. – New Horizons Translational Medicine, Vol. 4, 2017, No 1-4, pp. 1-8.10.1016/j.nhtm.2017.10.001Search in Google Scholar

11.Al-Qaness, M. A. A., A. Ewees, H. Fan, M. A. El Aziz. Optimization of Method for Forecasting Confirmed Cases of COVID-19 in China. – J. Clininal Med., Vol. 9, 2020, No 674, pp. 1-15.10.3390/jcm9030674714118432131537Search in Google Scholar

12. Saptarini, N. G. A. P. H., R. Y. Dillak, P. D. Pakan. Dengue Haemorrhagic Fever Outbreak Prediction Using Elman Levenberg Neural Network and Genetic Algorithm. – In: Proc. of 2nd East Indonesia Conference on Computer and Information Technology (EIConCIT’18), 2018, pp. 188-191.10.1109/EIConCIT.2018.8878529Search in Google Scholar

13. Husin, N. A., N. Mustapha, M. N. Sulaiman, R. Yaakob. A Hybrid Model Using Genetic Algorithm and Neural Network for Predicting Dengue Outbreak. – In: Proc. of 4th Conference on Data Mining and Optimization (DMO), 2012, pp. 23-27.10.1109/DMO.2012.6329793Search in Google Scholar

14. Mustaffa, Z., M. H. Sulaiman, M. F. M. Mohsin, Y. Yusof, F. Ernawan, K. A. M. Rosli. An Application of Hybrid Swarm Intelligence Algorithms for Dengue Outbreak Prediction. – IEEE Jordan International Joint Conference on Electrical Engineering and Information Technology (JEEIT), 2019, pp. 731-735.10.1109/JEEIT.2019.8717436Search in Google Scholar

15. What is Dengue and How It Is Treated, 2017. who.int/news-room/q-a-detail/what-is-dengue-and-how-it-is-treatedSearch in Google Scholar

16. Xu, Z., H. Bambrick, L. Yakob, G. Devine, F. D. Frentiu, R. Marina, P. W. Dhewantara, R. Nusa, R. T. Sasmono, W. Hu. Using Dengue Epidemics and Local Weather in Bali, Indonesia to Predict Imported Dengue in Australia. – Environmental Research., Vol. 175, 2019, No 2019, pp. 213-220.10.1016/j.envres.2019.05.02131136953Search in Google Scholar

17. Cortes, F., C. M. T. Martelli, R. A. D. A. Ximenes, U. R. Montarroyos, J. B. S. Junior, O. G. Cruz, N. Alexander, W. V. D. Souza. Time Series Analysis of Dengue Surveillance Data in Two Brazillian Cities. – Acta Tropica, Vol. 182, 2018, No March 2018, pp. 190-197.10.1016/j.actatropica.2018.03.00629545150Search in Google Scholar

18. Mirjalili, S., A. H. Gandomi, S. Z. Mirjalili, S. Saremi, H. Faris, S. M. Mirjalili. Salp Swarm Algorithm: A Bio-Inspired Optimizer for Engineering Design Problems. – Advances in Engineering Software, Vol. 114, 2017, No December 2017, pp. 163-191.10.1016/j.advengsoft.2017.07.002Search in Google Scholar

19. Kansal, V., J. S. Dhillon. Emended Salp Swarm Algorithm for Multiobjective Electric Power Dispatch Problem. – Applied Soft Computing, Vol. 90, 2020, No 106172, pp. 1-26.10.1016/j.asoc.2020.106172Search in Google Scholar

20. Neggaz, N., A. A. Ewees, M. A. Elaziz, M. Mafarja. Boosting Salp Swarm Algorithm by Sine Cosine Algorithm and Disrupt Operator for Feature Selection. – Expert Systems with Applications, Vol. 145, 2020, No 113103, pp. 1-20.10.1016/j.eswa.2019.113103Search in Google Scholar

21. Qais, M. H., H. M. Hasanien, S. Alghuwainem. Enhanced Salp Swarm Algorithm: Application to Variable Speed Wind Generators. – Engineering Applications of Artificial Intelligence, Vol. 80, 2019, No April 2019, pp. 82-96.10.1016/j.engappai.2019.01.011Search in Google Scholar

22. Tubishat, M., N. Idris, L. Shuib, M. A. M. Abushariah, S. Mirjalili. Improved Salp Swarm Algorithm Based on Opposition Based Learning and Novel Local Search Algorithm for Feature Selection. – Expert Systems with Applications, Vol. 145, 2020, No 113122, pp. 1-10.10.1016/j.eswa.2019.113122Search in Google Scholar

23. Gholami, K., M. H. Parvaneh. A Mutated Salp Swarm Algorithm for Optimum Allocation of Active and Reactive Power Sources in Radial Distribution Systems. – Applied Soft Computing, Vol. 85, 2019, No 105833, pp. 1-14.10.1016/j.asoc.2019.105833Search in Google Scholar

24. Ateya, A. A., A. Muthanna, A. Vybornova, A. D. Algarni, A. Abuarqoub, Y. Koucheryavy, A. Koucheryavy. Chaotic Salp Swarm Algorithm for SDN Multi-Controller Networks. – Engineering Science and Technology an International Journal, Vol. 22, 2019, No 4, pp. 1001-1012.10.1016/j.jestch.2018.12.015Search in Google Scholar

25. Levy, P. Theorie de l’Addition des Veriables Aleatoires. Paris, France, Gauthier-Villars, 1937.Search in Google Scholar

26. Salp. https://en.wikipedia.org/wiki/SalpSearch in Google Scholar

27. Liu, M., X. Yao, Y. Li. Hybrid Whale Optimization Algorithm Enhanced with Lévy Flight and Differential Evolution for Job Shop Scheduling Problems. – Applied Soft Computing, Vol. 87, 2020, No105954, pp. 1-16.10.1016/j.asoc.2019.105954Search in Google Scholar

28. Emary, E., H. M. Zawbaa, M. Sharawi. Impact of Lèvy Flight on Modern Meta-Heuristic Optimizers. – Applied Soft Computing, Vol. 75, 2019, No February 2019, pp. 775-789.10.1016/j.asoc.2018.11.033Search in Google Scholar

29. Chegini, S. N., A. Bagheri, F. Najafi. PSOSCALF: A New Hybrid PSO Based on Sine Cosine Algorithm and Levy Flight for Solving Optimization Problems. – Applied Soft Computing, Vol. 73, 2018, No December 2018, pp. 697-726.10.1016/j.asoc.2018.09.019Search in Google Scholar

30. Zhang, Y., Z. Jin, X. Zhao, Q. Yang. Backtracking Search Algorithm with Lévy Flight for Estimating Parameters of Photovoltaic Models. – Energy Conversion and Management, Vol. 208, 2020, No 112615, pp. 1-15.10.1016/j.enconman.2020.112615Search in Google Scholar

31. No Title.https://github.com/alramadona/yews4denv/tree/master/dataSearch in Google Scholar

32. Terziyska, M., Y. Todorov, D. Miteva, M. Doneva, S. Dyankova, P. Metodieva, I. Nacheva. Bayesian Regularized Neural Network for Prediction of the Dose in Gamma Irradiated Milk Products. – Cybernetics and Information Technologies, Vol. 20, 2020, No 2, pp. 141-151.10.2478/cait-2020-0022Search in Google Scholar

33. Toshev, A. Particle Swarm Oprimization and Tabu Search Hybrid Algorithm for Flexible Job Shop Scheduling Problem – Analysis of Test Result. – Cybernetics and Information Technologies, Vol. 19, 2019, No 4, pp. 26-44.10.2478/cait-2019-0034Search in Google Scholar

34. Yusob, B., Z. Mustaffa, J. Sulaiman. Anomaly Detection in Time Series Data Using Spiking Neural Network. – Journal of Computational and Theoretical Nanoscience, Vol. 24, 2018, No 10, pp. 7572-7576.10.1166/asl.2018.12980Search in Google Scholar

35. Firdaus, A., N. B. Anuar, M. F. A. Razak, A. K. Sangaiah. Bio Inspired Computational Paradigm for Feature Investigation and Malware Detection: Interactive Analytics. – Multimedia Tools and Applications, Vol. 77, 2018, No 2018, pp. 17519-17555.10.1007/s11042-017-4586-0Search in Google Scholar

eISSN:
1314-4081
Language:
English
Publication timeframe:
4 times per year
Journal Subjects:
Computer Sciences, Information Technology