Zang H N, Zhang S J, Hapeshi K A. Review of nature-inspired algorithms. Journal of Bionic Engineering, 2010, 7, S232–S237.
Yang X S. Nature-inspired Metaheuristic Algorithms, 2nd ed., Luniver Press, Somerset, UK, 2010, 1–5.
Lindfield G, Penny J. Introduction to Nature-Inspired Optimization, Academic Press, London, United Kingdom, 2017, 1, 101–117.
LeCun Y, Bengio Y, Hinton G. Deep learning. Nature, 2015, 521, 436–444.
Mason K, Duggan M, Barrett E, Duggan J, Howley E. Predicting host CPU utilization in the cloud using evolutionary neural networks. Future Generation Computer Systems, 2018, 86, 162–173.
Hassan H A, Mohamed S A, Sheta W M. Scalability and communication performance of HPC on Azure Cloud. Egyptian Informatics Journal, 2016, 17, 175–182.
Abdul Khalid N E, Ariff N, Yahya S, Noor N. A review of bio-inspired algorithms as image processing techniques. Communications in Computer and Information Science, 2011, 179, 660–673.
Binitha S, Sathya S S. A survey of bio inspired optimization algorithms. International Journal of Soft Computing and Engineering, 2012, 2, 137–151.
Chizari H, Lupu E, Thomas P. Randomness of physiological signals in generation cryptographic key for secure communication between implantable medical devices inside the body and the outside world. Living in the Internet of Things: Cybersecurity of the IoT, 2018, 2018, 1–6.
Sayers W. Artificial Intelligence Techniques for Flood Risk Management in Urban Environments. PhD thsis, University of Exeter, Exeter, UK, 2015.
Bayer P, Finkel M. Evolutionary algorithms for the optimization of advective control of contaminated aquifer zones. Water Resources Research, 2004, 40, W06506.
Nicklow J, Reed P, Savić D, Dessalegne T, Harrell L, Chan-Hilton, A, Karamouz M, Minsker B, Ostfeld A, Singh A, Zechman E. State of the art for genetic algorithms and beyond in water resources planning and management. Journal of Water Resources Planning and Management, 2010, 136, 412–432.
Karaboga D. An Idea Based on Honey Bee Swarm for Numerical Optimization. Technical Report - TR06, Erciyes University, Turkey, 2005.
Zainal N, Zain A, Sharif S. Overview of artificial fish swarm Algorithm and its applications in industrial problems. Applied Mechanics and Materials, 2015, 815, 253–257.
Zhou Y Q, Chen H, Zhou G. Invasive weed optimization algorithm for optimization no-idle flow shop scheduling problem. Neurocomputing, 2014, 137, 285–292.
Simon D. Biogeography-based optimization. IEEE Transactions on Evolutionary Computation, 2008, 12, 702–713.
Sayers W, Savic D, Kapelan Z. Performance of LEMMO with artificial neural networks for water systems optimization. Urban Water Journal, 2019, 16, 21–32.
Coello C A C. Twenty years of evolutionary multiobjective optimization: A historical overview of the field. IEEE Computational Intelligence Magazine, 2005, 1, 28–36.
Deb K, Pratap A, Agarwal S, Meyarivan T. A fast and elitist multiobjective genetic algorithm: NSGA-II. IEEE Transactions on Evolutionary Computation, 2002, 6, 182–197.
Bishop C M. Neural Networks for Pattern Recognition, Oxford University Press, USA, 1995, 77–161.
Parker D B. Learning Logic, Technical Report TR-47, Cambridge, UK, 1985.
Werbos P. Beyond Regression: New Tools for Predictions and Analysis in the Behavioural Sciences, PhD thesis, Harvard University, USA, 1974.
Cybenko G. Approximation by superpositions of a sigmoidal function. Mathematics of Control, Signals and Systems, 1989, 2, 303–314.
Hornik K, Stinchcombe M, White H. Multilayer feedfordward networks are universal approximators. Neural Networks, 1989, 2, 359–366.
Abadi M, Agarwal A, Barham P, Brevdo E, Chen Z, Citro C, Corrado G S, Davis A, Dean J, Devin M, Ghemawat S, Goodfellow I, Harp A, Irving G, Isard M, Jia Y, Jozefowicz R, Kaiser L, Kudlur M, Levenberg J, Mané D, Monga R, Moore S, Murray D, Olah C, Schuster M, Shlens J, Steiner B, Sutskever I, Talwar K, Tucker P, VanhouckeV, Vasudevan V, Viégas F, Vinyals O, Warden P, Wattenberg M, Wicke M, Yu Y, Zheng X. TensorFlow: Large-scale machine learning on heterogeneous systems, Computer Science, 2015, Preprint at: https//arXiv:1603.04467.
McCulloch W, Pitts W. A logical calculus of the ideas immanent in nervous activity. Bulletin of Mathematical Biology, 1943, 5, 115–133.
Rosenblatt F. The perceptron: A probabilistic model for information storage and organization in the brain. Psychological Review, 1958, 65, 386–408.
Krizhevsky A, Sutskever I, Hinton G E. ImageNet classification with deep convolutional neural networks. Advances in Neural Information Processing Systems, 2012, 1, 1097–1105.
Elsheikh A H, Sharshir S W, Elaziz M A, Kabeel A E, Guilan W, Haiou Z. Modeling of solar energy systems using artificial neural network: A comprehensive review. Solar Energy, 2019, 180, 622–639.
Bagheri M, Mirbagheri S A, Ehteshami M, Bagheri Z. Modeling of a sequencing batch reactor treating municipal wastewater using multi-layer perceptron and radial basis function artificial neural networks. Process Safety and Environmental Protection, 2015, 93, 111–123.
Yusoff N I M, Alhamali D I, Ibrahim A N H, Rosyidi S A P, Hassan N A. Engineering characteristics of nanosilica/polymer-modified bitumen and predicting their rheological properties using multilayer perceptron neural network model. Construction and Building Materials, 2019, 204, 781–799.
Whittington J C R, Bogacz R. Theories of error back-propagation in the brain. Trends in Cognitive Sciences, 2019, 23, 235–250.
Arulkumaran K, Cully A, Togelius J. AlphaStar: An evolutionary computation perspective. Proceedings of the Genetic and Evolutionary Computation Conference, Prague, Czech, 2019, 314–315.
Tian Y, Zhang K, Li J, Lin X, Yang B. LSTM-based traffic flow prediction with missing data. Neurocomputing, 2018, 318, 297–305.
Gu J, Wang Z, Kuen J, Ma L, Shahroudy A, Shuai B, Liu T, Wang X, Wang G, Cai J, Chen T. Recent advances in convolutional neural networks. Pattern Recognition, 2018, 77, 354–377.
Behzadian K, Kapelan Z, Savić D A, Ardeshir A. Stochastic sampling design using multiobjective genetic algorithm and adaptive neural networks. Environmental Modelling & Software, 2009, 24, 530–541.
Juhn Y, Liu H. Artificial intelligence approaches using natural language processing to advance EHR-based clinical research. Journal of Allergy and Clinical Immunology, 2020, 145, 463–469.
Trappey A J C, Trappey C V, Wu J L, Wang J W C. Intelligent compilation of patent summaries using machine learning and natural language processing techniques. Advanced Engineering Informatics, 2020, 43, 101027.
Dmitriev E A, Myasnikov V V. Possibility estimation of 3D scene reconstruction from multiple images. Proceedings of the International Conference on Information Technology and Nanotechnology, Samara, Russia, 2019, 293–296.
Gkioxari G, Malik J, Johnson J. Mesh R-CNN. Proceedings of the IEEE International Conference on Computer Vision, Seoul, Korea, 2019, 9785–9795.
Holland J H. Adaptation in Natural and Artificial Systems, University of Michigan Press, 1975, 1–232.
De Jong K A. An Analysis of the Behaviour of a Class of Genetic Adaptive Systems. PhD thesis, University of Michigan, USA, 1975.
Koza J R. Genetic Programming. MIT Press, Massachusetts, USA, 1992, 73–191.
Paul P V, Moganarangan N, Kumar S S, Raju R, Vengattaraman T, Dhavachelvan P. Performance analyses over population seeding techniques of the permutation-coded genetic algorithm: An empirical study based on traveling salesman problems. Applied Soft Computing, 2015, 32, 383–402.
Islam M L, Shatabda S, Rashid M A, Khan M G M, Rahman M S. Protein structure prediction from inaccurate and sparse NMR data using an enhanced genetic algorithm. Computational Biology and Chemistry, 2019, 79, 6–15.
Akopov A S, Beklaryan L A, Thakur M, Verma B D. Parallel multi-agent real-coded genetic algorithm for large-scale black-box single-objective optimization. Knowledge-Based Systems, 2019, 174, 103–122.
Luo J, Fujimura S, El Baz D, Plazolles B. GPU based parallel genetic algorithm for solving an energy efficient dynamic flexible flow shop scheduling problem. Journal of Parallel and Distributed Computing, 2019, 133, 244–257.
Beyer H G, Schwefel H P. Evolution strategies - A comprehensive introduction. Natural Computing, 2002, 1, 3–52.
Rechenberg I. Evolutionsstrategie: Optimierung Technischer Systeme Nach Prinsipien der Biologischen Evolution, Frommann-Holzboog, Stuttgart, Germany, 1973, 1–170. (in German)
Rechenberg I. Cybernetic solution path of an experimental problem. Royal Aircraft Establishment Translation 1122, Farnborough, 1965.
Schwefel H P. Evolutionsstrategie und Numerische Optimierung. PhD thesis, Technische Universität Berlin, Berlin, Germany, 1975. (in German)
Schwefel H P. Kybernetische Evolution als Strategie der Exprimentellen Forschung in der Strömungstechnik. Dissertation, TechnischeUnversitat Berlin, Berlin, Germany, 1965. (in German)
Klockgether J, Schwefel H P. Two-phase nozzle and hollow core jet experiments. Proceedings of the 11 th Symposium on Engineering Aspects of Magnetohydrodynamics, Pasadena, Californa, 1970, 141–148.
Schwefel HP. Projekt MHD-Staustrahlrohr: Experimentelle Optimierung einer Zweiphasendüse, Teil I, 1968. (in German)
Engelbrecht A P. Computational Intelligence, An Introduction. Wiley, 2007, 213–235.
Bäck T, Hoffmeister F, Schwefel H P. A survey of evolution strategies. Proceedings of the Fourth International Conference on Genetic Algorithms, San Diego, USA, 1991, 2–9.
Schwefel H P. Numerical Optimization of Computer Models. Wiley, Chichester, UK, 1981, 1–330.
Schwefel H P. Numerische Optimierung von Computer-Modellen mittels der Evolutionsstrategie. Birkhaeuser, Basel, Switzerland, 1977, 123–176.
Lin Y, Yang Q, Guan G. Scantling optimization of FPSO internal turret area structure using RBF model and evolutionary strategy. Ocean Engineering, 2019, 191, 106562.
Liu K, Zhang J. Nonlinear process modelling using echo state networks optimised by covariance matrix adaption evolutionary strategy. Computers & Chemical Engineering, 2020, 135, 106730.
Liu G, Zhao L, Yang F, Bian J, Qin T, Yu N, Liu T Y. Trust Region Evolution Strategies. Proceedings of the Thirty-Third AAAI Conference on Artificial Intelligence, Honolulu, USA, 2019, 4252–4359.
Salimans T, Ho J, Chen X, Sidor S, Sutskever I. Evolution Strategies as a Scalable Alternative to Reinforcement Learning. Preprint at https://arxiv.org/abs/1703.03864, 2017.
Dorigo M, Stützle T. Ant colony optimization: Overview and recent advances. Handbook of Metaheuristics, 2010, 146, 227–263.
Cordon O, Viana I F de, Herrera F, Moreno L. A New ACO Model Integrating Evolutionary Computation Concepts: The Best-Worst Ant System, Proceedings of the 2nd International Workshop on Ant Algorithms, Brussels, Belgium, 2000, 22–29.
Dorigo M, Stutzle T. Ant Colony Optimization. MIT Press, Massachusetts, USA, 2004, 1–319.
Dorigo M. Optimization, Learning and Natural Algorithms. PhD thesis, Politecno di Milano, Milan, Italy, 1992.
Dorigo M, Maniezzo V, Colorni A. Ant system: Optimization by a colony of cooperating agents. IEEE Transactions on Man, Systems and Cybernetics - Part B, 1997, 26, 29–41.
Mohan B C, Baskaran R. A survey: Ant colony optimization based recent research and implementation on several engineering domain. Expert Systems with Applications, 2012, 39, 4618–4627.
López-Ibáñez M, Stutzle T. Automatic configuration of multi-objective ant colony optimization algorithms. Lecture Notes in Computer Science, 2010, 6234, 95–106.
Pham D, Ghanbarzadeh A, Koç E, Otri S, Rahim S, Zaidi M. The Bees Algorithm Technical Note, Manufacturing Engineering Centre, Cardiff University, UK, 2005, 1–57.
Pham D T, Castellani M. A comparative study of the bees algorithm as a tool for function optimization. Cogent Engineering, 2015, 2, 1–28.
Khan I, Maiti M K. A swap sequence based artificial bee colony algorithm for traveling salesman problem. Swarm and Evolutionary Computation, 2019, 44, 428–438.
Ning J, Zhang C, Zhang B. A novel artificial bee colony algorithm for the QoS based multicast route optimization problem. Optik, 2016, 127, 2771–2779.
Sağ T, Çunkaş, M. Color image segmentation based on multiobjective artificial bee colony optimization. Applied Soft Computing, 2015, 34, 389–401.
Kumar A, Kumar D, Jarial S K. A review on artificial bee colony algorithms and their applications to data clustering. Cybernetics and Information Technologies, 2017, 17, 3–28.
Zou W, Zhu Y, Chen H, Sui X. A Clustering approach using cooperative artificial bee colony algorithm. Discrete Dynamics in Nature and Society, 2010, 2010, 1–17.
Li X L, Shao Z J, Qian J X. An optimizing method based on autonomous animats: Fish-swarm algorithm. Systems Engineering - Theory & Practice, 2002, 22, 32–38.
Yu L, Li C. A global artificial fish swarm algorithm for structural damage detection. Advances in Structural Engineering, 2014, 17, 331–346.
Neshat M, Adeli A, Sepidnam G, Sargolzaei M, Toosi A. A Review of artificial fish swarm optimization methods and applications. International Journal on Smart Sensing and Intelligent Systems, 2012, 5, 107–148.
He Q, Hu X T, Ren H, Zhang H Q. A novel artificial fish swarm algorithm for solving large-scale reliability - Redundancy application problem. ISA Transactions, 2015, 59, 105–113.
Basak A, Maity D, Das S. A differential invasive weed optimization algorithm for improved global numerical optimization. Applied Mathematics and Computation, 2013, 219, 6645–6668.
Rani D S, Subrahmanyam N, Sydulu M. Multi-objective invasive weed optimization - An application to optimal network reconfiguration in radial distribution systems. International Journal of Electrical Power & Energy Systems, 2015, 73, 932–942.
Barisal A K, Prusty R C. Large scale economic dispatch of power systems using oppositional invasive weed optimization. Applied Soft Computing, 2015, 29, 122–137.
Ghasemi M, Ghavidel S, Akbari E, Vahed A A. Solving non-linear, non-smooth and non-convex optimal power flow problems using chaotic invasive weed optimization algorithms based on chaos. Energy, 2014, 73, 340–353.
Zhao Y W, Leng L L, Qian Z Y, Wang W L. A discrete hybrid ivasive weed optimization algorithm for the capacitated vehicle routing problem. Procedia Computer Science, 2016, 91, 978–987.
Velmurugan T, Khara S, Nandakumar S, Saravanan B. Seamless vertical handoff using Invasive Weed Optimization (IWO) algorithm for heterogeneous wireless networks. Ain Shams Engineering Journal, 2016, 7, 101–111.
Goudos S K, Plets D, Liu N, Martens L, Joseph W. A multi-objective approach to indoor wireless heterogeneous networks planning based on biogeography-based optimization. Computer Networks, 2015, 91, 564–576.
Lin J. A hybrid biogeography-based optimization for the fuzzy flexible job-shop scheduling problem. Knowledge-Based Systems, 2015, 78, 59–74.
Kim S S, Byeon J H, Yu H, Liu H. Biogeography-based optimization for optimal job scheduling in cloud computing. Applied Mathematics and Computation, 2014, 247, 266–280.
Rajasomashekar S, Aravindhababu P. Biogeography based optimization technique for best compromise solution of economic emission dispatch. Swarm and Evolutionary Computation, 2012, 7, 47–57.
Wang L, Xu Y. An effective hybrid biogeography-based optimization algorithm for parameter estimation of chaotic systems. Expert Systems with Applications, 2011, 38, 15103–15109.
Niu Q, Zhang L T, Li K. A biogeography-based optimization algorithm with mutation strategies for model parameter estimation of solar and fuel cells. Energy Conversion and Management, 2014, 86, 1173–1185.
Jourdan L, Corne D, Savic D, Walters G. Evolutionary Multi-Criterion Optimization, Springer, Berlin, Germany, 2005, 841–855.
Jourdan L, Corne D, Savić D, Walters G. Hybridising rule induction and multi-objective evolutionary search for optimising water distribution systems. Proceedings of the Fourth International Conference on Hybrid Intelligent Systems, Kitakyushu, Japan, 2004, 434, 439.
Woodward M, Kapelan Z, Gouldby B. Adaptive flood risk management under climate change uncertainty using real options and optimization. Risk Analysis, 2013, 1, 75–92.
Woodward M, Gouldby B, Kapelan Z, Hames, D. Multiobjective optimization for improved management of flood risk. Journal of Water Resources Planning and Management (ASCE), 2013, 2, 201–215.
di Pierro F, Khu ST, Savić D, Berardi L. Efficient multi-objective optimal design of water distribution networks on a budget of simulations using hybrid algorithms. Environmental Modelling & Software, 2009, 24, 202–213.
Woodward M. The use of real options and multi-objective optimization in flood risk management. PhD thesis, University of Exeter, Exeter, UK, 2012.
Pareto V. Cours D’Economie Politique Vol. I & II. Lausanne, Swizerland, 1896.
Deb K, Jain H. An evolutionary many-objective optimization algorithm using reference-point-based nondominated sorting approach, part I: Solving problems with box constraints. IEEE Transactions on Evolutionary Computation, 2014, 18, 577–601.
Doerner K J, Gutjahr W, Hartl R, Strauss C, Stummer C. Ant colony optimization in multiobjective portfolio selection. Proceedings of the 4th Metaheuristics International Conference, Porto, Portugal, 2001, 243–248.
Li J, Zhang Z Q, Zhang L L, Shao K J. Multi-objective ant colony optimization algorithm based on discrete variables. IOP Conference Series: Earth and Environmental Science, 2018, 189, 042031.
Oliveira S M, Hussin M S, Stuetzle T, Roli A, Dorigo M. A detailed analysis of the population-based ant colony optimization algorithm for the TSP and the QAP. Proceedings of the 13th Annual Conference Companion on Genetic and Evolutionary Computation, Dublin, Ireland, 2011, 13–14.
Zaharia M, Xin R S, Wendell P, Das T, Armbrust M, Dave A, Meng X, Rosen J, Venkataraman S, Franklin M J, Ghodsi A, Gonzalez J, Shenker S, Stoica I. Apache spark: A unified engine for big data processing. Communications of the ACM, 2016, 59, 56–65.
Dong G F, Fu X L, Li H H, Xie P F. Cooperative ant colony-genetic algorithm based on spark. Computers & Electrical Engineering, 2017, 60, 66–75.
Poole D J, Allen C B. Constrained niching using differential evolution. Swarm and Evolutionary Computation, 2019, 44, 74–100.
Tian M, Gao X. Differential evolution with neighborhood-based adaptive evolution mechanism for numerical optimization. Information Sciences, 2019, 478, 422–448.
Kong X, Chen Y L, Xie W, Wu X Y. A novel paddy field algorithm based on pattern search method. Proceedings of the IEEE International Conference on Information and Automation, Chengdu, China, 2012, 686–690.
Askarzadeh A. Bird mating optimizer: An optimization algorithm inspired by bird mating strategies. Communications in Nonlinear Science and Numerical Simulation, 2014, 19, 1213–1228.
Alijla B O, Wong L P, Lim C P, Khader A T, Al-Betar M A. A modified intelligent water drops algorithm and its application to optimization problems. Expert Systems with Applications, 2014, 41, 6555–6569.
Niu S H, Ong S K, Nee A Y C. An improved intelligent water drops algorithm for solving multi-objective job shop scheduling. Engineering Applications of Artificial Intelligence, 2013, 26, 2431–2442.
Patle B K, Pandey A, Jagadeesh A, Parhi D R. Path planning in uncertain environment by using firefly algorithm. Defence Technology, 2018, 14, 691–701.
Tighzert L, Fonlupt C, Mendil B. A set of new compact firefly algorithms. Swarm and Evolutionary Computation, 2018, 40, 92–115.
Fernandes D A B, Freire M M, Fazendeiro P A P, Inácio P R M. Applications of artificial immune systems to computer security: A survey. Journal of Information Security and Applications, 2017, 35, 138–159.
Ming L, Zhao J S. Feature selection for chemical process fault diagnosis by artificial immune systems. Chinese Journal of Chemical Engineering, 2018, 26, 1599–1604.
He S, Wu Q H, Saunders J. Group search optimizer: An optimization algorithm inspired by animal searching behavior. IEEE Transactions on Evolutionary Computation, 2009, 13, 973–990.
Kang Q, Lan T, Yan Y, Wang L, Wu Q D. Group search optimizer based optimal location and capacity of distributed generations. Neurocomputing, 2012, 78, 55–63.
Dash R, Dash R, Rautray R. An evolutionary framework based microarray gene selection and classification approach using binary shuffled frog leaping algorithm. Journal of King Saud University - Computer and Information Sciences, 2019. (in press)
Eusuff M, Lansey K, Pasha F. Shuffled frog-leaping algorithm: A memetic meta-heuristic for discrete optimization. Engineering Optimization, 2006, 38, 129–154.
Lin A P, Sun W, Yu H S, Wu G H, Tang H W. Adaptive comprehensive learning particle swarm optimization with cooperative archive. Applied Soft Computing, 2019, 77, 533–546.
Lin A P, Sun W, Yu H S, Wu G H, Tang H W. Global genetic learning particle swarm optimization with diversity enhancement by ring topology. Swarm and Evolutionary Computation, 2019, 44, 571–583.
Chen H N, Zhu Y L. Optimization based on symbiotic multi-species coevolution. Applied Mathematics and Computation, 2008, 205, 47–60.
Zitzler E, Laumanns M, Thiele L. Proceedings of the Evolutionary Methods for Design, Optimization and Control with Applications to Industrial Problems, Athens, Greece, 2002, 95–100.
Gharari R, Poursalehi N, Abbasi M, Aghaie M. Implementation of Strength Pareto Evolutionary algorithm II in the multiobjective burnable poison placement optimization of KWU pressurized water reactor. Nuclear Engineering and Technology, 2016, 48, 1126–1139.
Schaffer J D. Some Experiments in Machine Learning Using Vector Evaluated Genetic Algorithms. PhD thesis, Vanderbilt University, Nashville, USA, 1984.
Schaffer J D. Multiple objective optimization with vector evaluated genetic algorithms. Proceedings of the 1st International Conference on Genetic Algorithms, 1985, 93–100.
Knowles J D, Corne D W. Approximating the nondominated front using the pareto archived evolution strategy. Evolutionary Computation, 2000, 8, 149–172.
Knowles J, Corne D. Properties of an adaptive archiving algorithm for storing nondominated vectors. IEEE Transactions on Evolutionary Computation, 2003, 7, 100–116.