Open Access
Issue
RAIRO-Oper. Res.
Volume 59, Number 4, July-August 2025
Page(s) 2051 - 2085
DOI https://doi.org/10.1051/ro/2025017
Published online 06 August 2025
  • H. Yang, Q.S. Wu and G.H. Li, A multi-stage forecasting system for daily ocean tidal energy based on secondary decomposition, optimized gate recurrent unit and error correction. J. Clean. Prod. 449 (2024) 32. [Google Scholar]
  • J. Cheng and W. De Waele, Weighted average algorithm: a novel meta-heuristic optimization algorithm based on the weighted average position concept. Knowl.-Based Syst. 305 (2024) 38. [Google Scholar]
  • M.R.C. da Silva and R.C.S. Schouery, Local-search based heuristics for advertisement scheduling. RAIRO-Oper. Res. 58 (2024) 3203–3231. [Google Scholar]
  • Y.R. Li, R.J. Zhang, Z. Luo, Y.Q. Tang, W.S. Jiang, Y.B. Cheng and Q.Y. Wang, Strategy adaptive particle swarm optimization algorithm for solving free-form surface registration to improve detection accuracy. IEEE Trans. Instrum. Meas. 73 (2024) 14. [Google Scholar]
  • S.J. Lee and B.S. Kim, Two-stage meta-heuristic for part-packing and build-scheduling problem in parallel additive manufacturing. Appl. Soft. Comput. 136 (2023) 21. [Google Scholar]
  • J. Coelho and M. Vanhoucke, New resource-constrained project scheduling instances for testing (meta-)heuristic scheduling algorithms. Comput. Oper. Res. 153 (2023) 17. [Google Scholar]
  • E. Hosseini, A.M. Al-Ghaili, D.H. Kadir, S.S. Gunasekaran, A.N. Ahmed, N. Jamil, M. Deveci and R.A. Razali, Meta-heuristics and deep learning for energy applications: review and open research challenges (2018–2023). Energy Strateg. Rev. 53 (2024) 23. [Google Scholar]
  • Q. Yang, G.W. Song, W.N. Chen, Y.H. Jia, X.D. Gao, Z.Y. Lu, S.W. Jeon and J. Zhang, Random contrastive interaction for particle swarm optimization in high-dimensional environment. IEEE Trans. Evol. Comput. 28 (2024) 933–949. [Google Scholar]
  • S. Ghambari, M. Golabi, L. Jourdan, J. Lepagnot and L. Idoumghar, UAV path planning techniques: a survey. RAIRO-Oper. Res. 58 (2024) 2951–2989. [Google Scholar]
  • J.Y. Yang, J.T. Cui, X.F. Xia, X.Y. Gao, B. Yang and Y.D. Zhang, An artificial bee colony algorithm with an adaptive search strategy selection mechanism and its application on workload prediction. Comput. Ind. Eng. 189 (2024) 20. [Google Scholar]
  • Y.X. Ren, K.Z. Gao, Y.P. Fu, D.C. Li and P.N. Suganthan, Ensemble artificial bee colony algorithm with Q-learning for scheduling Bi-objective disassembly line. Appl. Soft. Comput. 155 (2024) 13. [Google Scholar]
  • F.S. Martins, B.P. Alvarenga and G.T. Paula, Electrical machine winding performance optimization by multi-objective particle swarm algorithm. Energies 17 (2024) 19. [Google Scholar]
  • J.G. Cui, L. Wu, X.D. Huang, D.P. Xu, C. Liu and W.S. Xiao, Multi-strategy adaptable ant colony optimization algorithm and its application in robot path planning. Knowl.-Based Syst. 288 (2024) 20. [Google Scholar]
  • T. Thaher, H. Chantar, J.W. Too, M. Mafarja, H. Turabieh and E.H. Houssein, Boolean Particle Swarm Optimization with various Evolutionary Population Dynamics approaches for feature selection problems. Expert Syst. App. 195 (2022) 30. [Google Scholar]
  • A.H. Rabie, N.A. Mansour and A.I. Saleh, Leopard seal optimization (LSO): a natural inspired meta-heuristic algorithm. Commun. Nonlinear Sci. Numer. Simul. 125 (2023) 32. [Google Scholar]
  • T. Mzili, I. Mzili, M.E. Riffi, D. Pamucar, V. Simic, L. Abualigah and B. Almohsen, Hybrid genetic and penguin search optimization algorithm (GA-PSEOA) for efficient flow shop scheduling solutions. Facta Univ.-Ser. Mech. Eng. 22 (2024) 77–100. [Google Scholar]
  • Y.T. Hsiao, S.M. Lin, S.M. Chen and C.J. Chou, Multi-objective optimization of planning single-tuned harmonic filter utilizing interactive forest algorithm. Inf. Sci. 661 (2024) 15. [Google Scholar]
  • P. Wang, A.C. Zecchin and H.R. Maier, Improved selection strategy for multi-objective evolutionary algorithms with application to water distribution optimization problems. Comput.-Aided Civil Infrastruct. Eng. 38 (2023) 1290–1306. [Google Scholar]
  • B.J. Bejoy, G. Raju, D. Swain, B. Acharya and Y.C. Hu, A generic cyber immune framework for anomaly detection using artificial immune systems. Appl. Soft. Comput. 130 (2022) 13. [Google Scholar]
  • Z.C. Lian, J.G. Shu, Y. Zhang and J. Sun, Convergent grey wolf optimizer metaheuristics for scheduling crowd-sourcing applications in mobile edge computing. IEEE Int. Things J. 11 (2024) 1866–1879. [Google Scholar]
  • N. Amor, M.T. Noman, M. Petru, N. Sebastian and D. Balram, Design and optimization of machinability of ZnO embedded-glass fiber reinforced polymer composites with a modified white shark optimizer. Expert Syst. App. 237 (2024) 12. [Google Scholar]
  • M. Braik, A. Hammouri, J. Atwan, M.A.A. Al-Betar and M.A. Awadallah, White Shark Optimizer: a novel bio-inspired meta-heuristic algorithm for global optimization problems. Knowl.-Based Syst. 243 (2022) 29. [Google Scholar]
  • M. Dehghani, Z. Montazeri, E. Trojovská and P. Trojovský, Coati Optimization Algorithm: a new bio-inspired metaheuristic algorithm for solving optimization problems. Knowl.-Based Syst. 259 (2023) 110011. [Google Scholar]
  • S.J. Zhao, T.R. Zhang, S.L. Ma and M. Chen, Dandelion Optimizer: a nature-inspired metaheuristic algorithm for engineering applications. Eng. App. Artif. Intell. 114 (2022) 20. [Google Scholar]
  • T.H. Sakib, A. Ahmed, M.A. Hossain and Q. Nafees-Ul-Islam, Optimal sizing of an HRES with probabilistic modeling of uncertainties – a framework for techno-economic analysis. Energy Conv. Manag. 318 (2024) 19. [Google Scholar]
  • J.G. Zheng and S.L. Chen, A Q-learning multi-objective grey wolf optimizer for the distributed hybrid flowshop scheduling problem. Eng. Optim. (2024) 20. [Google Scholar]
  • N.S.S. Mohamed, S.I. Sulaiman, S.R.A. Rahim and A. Azmi, Optimal sizing of a fixed-tilt ground-mounted grid-connected photovoltaic system with bifacial modules using Harris Hawks Optimization. Energy Conv. Manag. 314 (2024) 21. [Google Scholar]
  • C. Shravani, R.L. Narasimham and G.T.R. Das, Power quality (PQ) analyses of DG utilizing unified power quality conditioner (UPQC) by white shark optimizer and recalling-enhanced recurrent neural network. J. Circuits Syst. Comput. 33 (2024) 30. [Google Scholar]
  • O.A. Kuzenkov, A.Y. Morozov and S.A. Nalchajyan, Revisiting “survival of the fittest” principle in global stochastic optimisation: incorporating anisotropic mutations. Commun. Nonlinear Sci. Numer. Simul. 130 (2024) 21. [Google Scholar]
  • N. Karlupia and P. Abrol, Wrapper-based optimized feature selection using nature-inspired algorithms. Neural Comput. Appl. 35 (2023) 12675–12689. [Google Scholar]
  • A. Hosseinalipour and R. Ghanbarzadeh, A novel metaheuristic optimisation approach for text sentiment analysis. Int. J. Mach. Learn. Cybern. 14 (2023) 889–909. [Google Scholar]
  • Y.X. Wang, H.H. Xin and G.Z. Wang, Iterative searching method for closest saddle-node bifurcation point in multi-infeed HVDC systems. IEEE Trans. Power Syst. 39 (2024) 6099–6102. [Google Scholar]
  • R. Bartin, A. Melbourne, L. Bobet, G. Gauchard, A. Menneglier, D. Grevent, L. Bussieres, N. Siauve and L.J. Salomon, Static and dynamic responses to hyperoxia of normal placenta across gestation with T2*-weighted MRI sequences. Ultrasound Obstet. Gynecol. 64 (2024) 236–244. [Google Scholar]
  • J. Wang, Z.W. Han, W.J. Jiang and J. Kim, A novel classification method combining phase-field and DNN. Pattern Recogn. 142 (2023) 14. [Google Scholar]
  • A.B. Langeveld, A. Scholz, K. Muzic, R. Jayawardhana, D. Capela, L. Albert, R. Doyon, L. Flagg, M. de Furio, D. Johnstone, D. Lafrèniere and M. Meyer, The JWST/NIRISS deep spectroscopic survey for young brown dwarfs and free-floating planets. Astron. J. 168 (2024) 22. [Google Scholar]
  • P.R.B. Devloo, J.W.D. Fernandes, S.M. Gomes and N. Shauer, Stress mixed polyhedral finite elements for two-scale elasticity models with relaxed symmetry. Comput. Math. App. 159 (2024) 302–318. [Google Scholar]
  • L.M. Peng, X.R. Li, L. Yu, A.A. Heidari, H.L. Chen and G.X. Liang, Q-learning guided mutational Harris hawk optimizer for high-dimensional gene data feature selection. Appl. Soft. Comput. 161 (2024) 27. [Google Scholar]
  • M. Abdel-Salam, H. Askr and A.E. Hassanien, Adaptive chaotic dynamic learning-based gazelle optimization algorithm for feature selection problems. Expert Syst. App. 256 (2024) 33. [Google Scholar]
  • Y.C. Tan, S. Liu, L.Y. Zhang, J. Song and Y.J. Ren, The application of an improved LESS Dung Beetle optimization in the intelligent topological reconfiguration of ShipPower systems. J. Mar. Sci. Eng. 12 (2024) 32. [Google Scholar]
  • X. Yao, Y. Liu and G. Lin, Evolutionary programming made faster. IEEE Trans. Evol. Comput. 3 (1999) 82–102. [Google Scholar]
  • M.Z. Ali, N.H. Awad, P.N. Suganthan and R.G. Reynolds, An adaptive multipopulation differential evolution with dynamic population reduction. IEEE Trans. Cybern. 47 (2016) 2768–2779. [Google Scholar]
  • A. Elfwing, Y. LeMarc, J. Baranyi and A. Ballagi, Observing growth and division of large numbers of individual bacteria by image analysis. Appl. Environ. Microbiol. 70 (2004) 675–678. [Google Scholar]
  • M.N. Gibbs and D.J. MacKay, Variational Gaussian process classifiers. IEEE Trans. Neural Netw. 11 (2000) 1458–1464. [Google Scholar]
  • E.D. Dolan and J.J. Moré, Benchmarking optimization software with performance profiles. Math. Program. 91 (2002) 201–213. [Google Scholar]
  • R. Eberhart and J. Kennedy, A new optimizer using particle swarm theory MHS’95, in Proceedings of the Sixth International Symposium on Micro Machine and Human Science. IEEE (1995) 39–43. [Google Scholar]
  • E. Rashedi, H. Nezamabadi-Pour and S. Saryazdi, GSA: a gravitational search algorithm. Inf. Sci. 179 (2009) 2232–2248. [Google Scholar]
  • S. Mirjalili and A. Lewis, The whale optimization algorithm. Adv. Eng. Softw. 95 (2016) 51–67. [CrossRef] [Google Scholar]
  • B.K. Kannan and S.N. Kramer, An augmented Lagrange multiplier based method for mixed integer discrete continuous optimization and its applications to mechaniical design. J. Mech. Des. 116 (1994) 405–411. [Google Scholar]
  • A.H. Gandomi and X.S. Yang, Benchmark problems in structural optimization, in: Computational Optimization, Methods and Algorithms. Springer (2011) 259–281. [Google Scholar]
  • E. Mezura-Montes and C.A.C. Coello, Useful infeasible solutions in engineering optimization with evolutionary algorithms, in Mexican International Conference on Artificial Intelligence. Springer (2005) 652–662. [Google Scholar]

Current usage metrics show cumulative count of Article Views (full-text article views including HTML views, PDF and ePub downloads, according to the available data) and Abstracts Views on Vision4Press platform.

Data correspond to usage on the plateform after 2015. The current usage metrics is available 48-96 hours after online publication and is updated daily on week days.

Initial download of the metrics may take a while.