Projectiles Optimization: A Novel Metaheuristic Algorithm for Global Optimization

Publish Year: 1399
نوع سند: مقاله ژورنالی
زبان: English
View: 315

This Paper With 15 Page And PDF Format Ready To Download

  • Certificate
  • من نویسنده این مقاله هستم

استخراج به نرم افزارهای پژوهشی:

لینک ثابت به این Paper:

شناسه ملی سند علمی:

JR_IJE-33-10_011

تاریخ نمایه سازی: 6 اردیبهشت 1400

Abstract:

Metaheuristic optimization algorithms are a relatively new class of optimization algorithms that are widely used for difficult optimization problems in which classic methods cannot be applied and are considered as known and very broad methods for crucial optimization problems. In this study, a new metaheuristic optimization algorithm is presented, the main idea of which is inspired by models in kinematics. This algorithm obtains better results compared to other optimization algorithms in this field and is able to explore new paths in its search for desirable points. Hence, after introducing the projectiles optimization (PRO) algorithm, in the first experiment, it is evaluated by the determined test functions of the IEEE congress on evolutionary computation (CEC) and compared with the known and powerful algorithms of this field. In the second try out, the performance of the PRO algorithm is measured in two practical applications, one for the training of the multi-layer perceptron (MLP) neural networks and the other for pattern recognition by Gaussian mixture modeling (GMM). The results of these comparisons are presented in various tables and figures. Based on the presented results, the accuracy and performance of the PRO algorithm are much higher than other existing methods.

Authors

M. R. Kahrizi

Department of Computer Engineering and Information Technology, Razi University, Kermanshah, Iran

S. J. Kabudian

Department of Computer Engineering and Information Technology, Razi University, Kermanshah, Iran

مراجع و منابع این Paper:

لیست زیر مراجع و منابع استفاده شده در این Paper را نمایش می دهد. این مراجع به صورت کاملا ماشینی و بر اساس هوش مصنوعی استخراج شده اند و لذا ممکن است دارای اشکالاتی باشند که به مرور زمان دقت استخراج این محتوا افزایش می یابد. مراجعی که مقالات مربوط به آنها در سیویلیکا نمایه شده و پیدا شده اند، به خود Paper لینک شده اند :
  • 1.     Talbi, E.G., “Metaheuristics: From design to implementation”,Vol. 74, John ...
  • 2.     Birattari, M., Paquete, L., Strutzle, T. and Varrentrapp, K., ...
  • 3.     Boussaïd, I., Lepagnot, J. and Siarry, P., “A survey ...
  • 4.     Blum, C. and Roli, A., “Metaheuristics in combinatorial optimization: ...
  • 5.     Bianchi, L., Dorigo, M., Gambardella, L.M. and Gutjahr, W.J., ...
  • 6.     Goldberg, D.E. and Deb, K., “A comparative analysis of ...
  • 7.     Blickle, T. and Thiele, L., A comparison of selection ...
  • 8.     Beasley, D., Bull, D.R. and Martin, R.R., “An overview ...
  • 9.     Becerra, R.L. and Coello, C.A.C., A cultural algorithm with ...
  • 10.   Konak, A., Coit, D.W. and Smith, A.E., “Multi-objective optimization ...
  • 11.   Alba, E. and Troya, J.M., “A survey of parallel ...
  • 12.   Elsayed, S.M., Sarker, R.A. and Essam, D.L., “A new ...
  • 13.   Goldberg, D.E., “Genetic algorithms in search optimization and machine ...
  • 14.   Kirkpatrick, S. and Vecchi, M.P., “Optimization by simulated annealing,” ...
  • 15.   Černý, V., “Thermodynamical approach to the traveling salesman problem: ...
  • 16.   Metropolis, N., Rosenbluth, A.W., Rosenbluth, M.N., Teller, A.H. and ...
  • 17.   Creutz, M., “Microcanonical Monte Carlo simulation,” Physical Review Letters,  ...
  • 18.   Dueck, G. and Scheuer, T., “Threshold accepting: A general-purpose ...
  • 19.   Dréo, J., Petrowski, A., Siarry, P. and Taillard, E., ...
  • 20.   Charon, I. and Hudry, O., “The noising method: A ...
  • 21.   Charon, I. and Hudry, O., “The noising methods: A ...
  • 22.   Charon, I. and Hudry, O., The noising methods: A ...
  • 23.   Charon, I. and Hudry, O., “Self-tuning of the noising ...
  • 24.   Courat, J.-P., Raynaud, G., Mrad, I. and Siarry, P., ...
  • 25.   Jeong, I.-K. and Lee, J.-J., “Adaptive simulated annealing genetic ...
  • 26.   Suman, B. and Kumar, P., “A survey of simulated ...
  • 27.   Chopard, B., and Tomassini, M., “Simulated annealing, Natural Computing ...
  • 28.   Hasani, A. and Soltani, R., “A hybrid meta-heuristic for ...
  • 29.   Fallah, M., Mohajeri, A. and Barzegar-Mohammadi, M., “A new ...
  • 30.   Chan, F.T. and Tiwari, M.K., “Swarm Intelligence: Focus on ...
  • 31.   Saenphon, T., Phimoltares, S. and Lursinsap, C., “Combining new ...
  • 32.   Dorigo, M. and Stutzle, T., The ant colony optimization ...
  • 33.   Dorigo, M., Birattari, M. and Stutzle, T., “Ant colony ...
  • 34.   Dorigo, M. and Stützle, T., Ant colony optimization: Overview ...
  • 35.   Mohajeri, A., Mahdavi, I., Mahdavi-Amiri, N. and Tafazzoli, R., ...
  • 36.   Eberhart, R.C. and Kennedy, J., “A new optimizer using ...
  • 37.   Kennedy, J., Eberhart, R.C. and Shi, Y., “Swarm Intelligence”, ...
  • 38.   Kennedy, J. and Mendes, R., “Population structure and particle ...
  • 39.   Gulcu, S. and Kodaz, H., “A novel parallel multi-swarm ...
  • 40.   Shi, Y. and Eberhart, R., “A modified particle swarm ...
  • 41.   Shi, Y. and Eberhart, R.C., “Empirical study of particle ...
  • 42.   Clerc, M. and Kennedy, J., “The particle swarm-explosion, stability, ...
  • 43.   Ozcan, E. and Mohan, C.K., “Particle swarm optimization: Surfing ...
  • 44.   Van den Bergh, F. and Engelbrecht, A.P., “A study ...
  • 45.   Kennedy, J. and Eberhart, R.C., “A discrete binary version ...
  • 46.   Blackwell, T., Particle swarm optimization in dynamic environments, In ...
  • 47.   Jam, S., Shahbahrami, A. and Sojoudi Ziyabari, S., “Parallel ...
  • 48.   Reyes-Sierra, M. and Coello, C.C., “Multi-objective particle swarm optimizers: ...
  • 49.   Ling, S.H., Chan, K.Y., Leung, F.H.F., Jiang, F. and ...
  • 50.   Mahmoodabadi, M., Taherkhorsandi, M. and Safikhani, H., “Modeling and ...
  • 51.   Valdez, F., Melin, P. and Castillo, O., “An improved ...
  • 52.   Poli, R., “Analysis of the publications on the applications ...
  • 53.   Poli, R., Kennedy, J. and Blackwell, T., “Particle swarm ...
  • 54.   Pant, M., Thangaraj, R. and Abraham, A., Particle swarm ...
  • 55.   Thangaraj, R., Pant, M., Abraham, A. and Bouvry, P., ...
  • 56.   Deepa, S., Babu, S.R. and Ranjani, M., “A robust ...
  • 57.   Daliri, H., Mokhtari, H. and Nakhai, I., “A particle ...
  • 58.   Storn, R. and Price, K., “Differential evolution–a simple and ...
  • 59.   Mezura-Montes, E., Reyes-Sierra, M. and Coello, C.A.C., Multi-objective optimization ...
  • 60.   Amirian, H. and Sahraeian, R., “Multi-objective differential evolution for ...
  • 61.   Angeline, P.J., “Evolutionary optimization versus particle swarm optimization: Philosophy ...
  • 62.   Price, K., Storn, R.M. and Lampinen, J.A., “Differential evolution: ...
  • 63.   Das, S. and Suganthan, P.N., “Differential evolution: A survey ...
  • 64.   Karci, A., Imitation of bee reproduction as a crossover ...
  • 65.   Brest, J. and Maučec, M.S., “Self-adaptive differential evolution algorithm ...
  • 66.   Teng, N.S., Teo, J. and Hijazi, M.H.A., “Self-adaptive population ...
  • 67.   Liu, J. and Lampinen, J., “A fuzzy adaptive differential ...
  • 68.   Tummala, A.S., Chintala, M.R. and Pilla, R., “Tuning of ...
  • sensorless permanent magnet synchronous motor drive,” International Journal of Engineering ...
  • 69.   Kahrizi, M.R. Projectiles optimization (pro) algorithm.  2017  [cited 2020 ...
  • 70.   Awad, N.H., Ali, M.Z., Liang, J.J., Qu, B.Y. and ...
  • 71.   Haykin, S., “Neural networks: A comprehensive foundation, Prentice Hall ...
  • 72.   Reynolds, D.A. and Rose, R.C., “Robust text-independent speaker identification ...
  • 73.   Kahrizi, M.R. and Kabudian, S.J., “Long-term spectral pseudo-entropy (ltspe): ...
  • 74.   Dempster, A.P., Laird, N.M. and Rubin, D.B., “Maximum likelihood ...
  • نمایش کامل مراجع