Hybrid Inverse Weed Optimization Algorithm with Math-Flame Optimization Algorithm

Authors

  • Radhwan Basim Thanoon Department of Mathematics computer , University of Mosul– Iraq

DOI:

10.33395/sinkron.v8i3.13755

Keywords:

optimization, Invasive Weed optimization Algorithm, Moth-Flame optimization Algorithm, Crossbred Algorithms

Abstract

In this work, two Meta-Heuristic Algorithms were  hybridized, the first is the Invers Weed optimization algorithm (IWO), which is a passing multiple algorithm, and the second is the Moth-flame Optimization Algorithm (MFO). Which depend in their behavior on the intelligence of the swarm and the intelligence of society, and they have unique characteristics that exceed the characteristics of the intelligence of other swarms because they are efficient in achieving the right balance between exploration and exploitation. So the new algorithm improves the initial population that is randomly generated, A process of hybridization was made between the IWO and MFO Algorithm to call The new hybrid algorithm (IWOMFO). The new hybrid algorithm was used for 16 high-scaling optimization functions with different community sizes and 250 repetitions. The Algorithm showed access to optimal solutions by achieving the value Minority () for most of these functions and the results of this algorithm are compared with the basic algorithms IWO, MFO

GS Cited Analysis

Downloads

Download data is not yet available.

References

Basak, A., Pal, S., Das, S., Abraham, A., & Snasel, V. (2010). A modified invasive weed optimization algorithm for time-modulated linear antenna array synthesis. Paper presented at the IEEE Congress on Evolutionary Computation.

Razmjooy, N., & Ramezani, M. (2014). An improved quantum evolutionary algorithm based on invasive weed optimization. Indian J Sci Res, 4(2), 413-422.

Ahmadi, M., & Mojallali, H. (2012). Chaotic invasive weed optimization algorithm with application to parameter estimation of chaotic systems. Chaos, Solitons & Fractals, 45(9-10), 1108-1120.

Basak, A., Maity, D., & Das, S. (2013). A differential invasive weed optimization algorithm for improved global numerical optimization. Applied Mathematics and Computation, 219(12), 6645-6668.

حسن, ب. ا., & خضر, ع. ا. م. (2019). خوارزمية أمثلة الأعشاب الضارة الجديدة (IWO) باستخدام خوارزمية أمثلة الحوت (WOA) لحل مسائل الأمثلية ذات القياس العالي. Journal of Economics and Administrative Sciences, 25(110), 426-426.

Giri, R., Chowdhury, A., Ghosh, A., Das, S., Abraham, A., & Snasel, V. (2010). A modified invasive weed optimization algorithm for training of feed-forward neural networks. Paper presented at the 2010 IEEE international conference on systems, man and cybernetics.

Yaseen, H. T., Mitras, B. A., & Khidhir, A. S. M. (2018). Hybrid Invasive Weed Optimization Algorithm with Chicken Swarm Optimization Algorithm to solve Global Optimization Problems. International Journal of Computer Networks and Communications Security, 6(8), 173-181.

Hajimirsadeghi, H., & Lucas, C. (2009). A hybrid IWO/PSO algorithm for fast and global optimization. Paper presented at the Ieee Eurocon 2009.

Mallahzadeh, A. R., Oraizi, H., & Davoodi-Rad, Z. (2008). Application of the invasive weed optimization technique for antenna configurations. Progress in Electromagnetics Research, 79, 137-150.

Bai, Y.-Y., Xiao, S., Liu, C., & Wang, B.-Z. (2012). A hybrid IWO/PSO algorithm for pattern synthesis of conformal phased arrays. IEEE Transactions on antennas and Propagation, 61(4), 2328-2332.

Sedighy, S., Mallahzadeh, A., Soleimani, M., & Rashed-Mohassel, J. (2010). Optimization of printed Yagi antenna using invasive weed optimization (IWO). IEEE Antennas and Wireless Propagation Letters, 9, 1275-1278.

Mehrabian, A. R., & Lucas, C. (2006). A novel numerical optimization algorithm inspired from weed colonization. Ecological informatics, 1(4), 355-366.

Khalilpourazari, S., & Khalilpourazary, S. (2019). An efficient hybrid algorithm based on Water Cycle and Moth-Flame Optimization algorithms for solving numerical and constrained engineering optimization problems. Soft Computing, 23, 1699-1722.

Mirjalili, S. (2015). Moth-flame optimization algorithm: A novel nature-inspired heuristic paradigm. Knowledge-based systems, 89, 228-249.

Mohanty, B., Acharyulu, B., & Hota, P. (2018). Moth‐flame optimization algorithm optimized dual‐mode controller for multiarea hybrid sources AGC system. Optimal control applications and methods, 39(2), 720-734.

Downloads


Crossmark Updates

How to Cite

Thanoon, R. B. (2024). Hybrid Inverse Weed Optimization Algorithm with Math-Flame Optimization Algorithm. Sinkron : Jurnal Dan Penelitian Teknik Informatika, 8(3), 2008-2021. https://doi.org/10.33395/sinkron.v8i3.13755