A NEW HYBRID FRUIT FLY OPTIMIZATION ALGORITHM FOR SOLVING BENCHMARK PROBLEMS
Özet Görüntüleme: 15 / PDF İndirme: 11
Anahtar Kelimeler:
Optimization, Fruit Fly optimization algorithm, Sine Cosine Optimization Algorithm, Hybrid Fruit Fly Optimization AlgorithmÖzet
The process of finding the best element (solution) to a given problem is called optimization. Many
algorithms such as GA (John Holland, 1975), PSO (Eberhart & Kennedy, 1995), ABC (Karaboğa,
2005) etc. have been developed to fix optimization issues. The Fruit Fly Optimization Algorithm
(FOA) is a part of these algorithms, it’s a new category of global optimization evolutionary algorithm
with a potential to solve complex optimization issues. The FOA is developed by Wen Tsao Pan in
2011, totally built on the foraging characteristics of Fruit Fly. The algorithm has several varieties of
search specially based on vision and olfactory. It has a specific technique to find food quickly, after
determine the position, and then fly to the object. FOA is used in many applications, especially in the
Wireless Sensor Network Coverage Optimization proposed (Ren, Zhichao and Liu, 2018), travelling
salesman problem (Nitin S. Choubey, 2014), Short-term Traffic forecasting (Yuanyuan and
Yongdong, 2017), and so on. To avoid falling into a local optimum and to overcome the weakness of
the updating strategies which are used to find optimal solution. We have developed a new hybrid Fruit
Fly Optimization algorithm (HFOA) which uses Sine Cosine Algorithm (SCA) and it powerful
updating and excellent search capabilities. The developed hybrid is tested on a set of 13 Benchmark
test functions and its performance is compared with other optimization algorithms. The results
obtained showed the successfulness and efficacy of the new hybrid algorithm HFOA, it outperforms
the other meta-heuristics algorithms.
Referanslar
Kaveh, A. & Farhoudi, N. (2013). A new optimization method: Dolphin echolocation. Advances
in Engineering Software, 59, 53-70.
Chakri, A., Khelif, R., Benouaret, M. & Yang, X.S. (2017). New directional bat algorithm for
continuous optimization problems. Expert Systems with Applications, 69, 159-175.
Xie, J., Zhou, Y. & Chen, H. (2013). A novel bat algorithm based on differential operator and
Lévy flights trajectory. Computational intelligence and neuroscience, 2013.
Fei, S. W., Miao, Y.B. & Liu, C.L. (2009). Chinese Grain Production Forecasting Method Based
on Particle Swarm Optimization-based Support Vector Machine. Recent Patents on
Engineering, 3(1), 8-12.
Katiyar, S., Ibraheem, N., & Ansari, A.Q. (2015, August). Ant colony optimization: a tutorial
review. In Proceedings of the National Conference on Advances in Power and Control, Manav
Rachna International University, Faridabad, Haryana, India (Vol. 574).
Geem, Z.W., Kim, J.H. & Loganathan, G.V. (2001). A new heuristic optimization algorithm:
harmony search. Simulation, 76(2), 60-68.
Karaboga, D., & Basturk, B. (2007, June). Artificial bee colony (ABC) optimization algorithm for
solving constrained optimization problems. In International fuzzy systems association world
congress (pp. 789-798). Springer, Berlin, Heidelberg.
Digalakis, J.G. & Margaritis, K.G. (2001). On benchmarking functions for genetic
algorithms. International journal of computer mathematics, 77(4), 481-506.
Yang, H., Wang, S., Li, G. & Mao, T. (2018). A new hybrid model based on fruit fly optimization
algorithm and wavelet neural network and its application to underwater acoustic signal
prediction. Mathematical problems in engineering, 2018.
Gonidakis, D. & Vlachos, A. (2019). A new sine cosine algorithm for economic and emission
dispatch problems with price penalty factors. Journal of Information and Optimization
Sciences, 40(3), 679-697.
Gholizadeh, S. & Sojoudizadeh, R. (2019). Modified Sine-Cosine Algorithm for Sizing
Optimization of Truss Structures with Discrete Design Variables. Iran University of Science &
Technology, 9(2), 195-212.
Huang, H., Feng, X.A., Zhou, S., Jiang, J., Chen, H., Li, Y. & Li, C. (2019). A new fruit fly
optimization algorithm enhanced support vector machine for diagnosis of breast cancer based on
high-level features. BMC bioinformatics, 20(8), 290.
Ye, F., Lou, X.Y. & Sun, L.F. (2017). An improved chaotic fruit fly optimization based on a
mutation strategy for simultaneous feature selection and parameter optimization for SVM and its
applications. PloS one, 12(4), e0173516.
Mirjalili, S. & Lewis, A. (2016). The whale optimization algorithm. Advances in Engineering
Software, 95, 51-67.
Mirjalili, S., Mirjalili, S.M. & Lewis, A. (2014). Grey wolf optimizer. Advances in Engineering
Software, 69, 46-61.
Mirjalili, S. (2015). The ant lion optimizer. Advances in Engineering Software, 83, 80-98.
İndir
Yayınlanmış
Nasıl Atıf Yapılır
Sayı
Bölüm
Lisans
Telif Hakkı (c) 2019 Euroasia Journal of Mathematics, Engineering, Natural & Medical Sciences
Bu çalışma Creative Commons Attribution-NonCommercial 4.0 International License ile lisanslanmıştır.