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Swarm and Evolutionary Computation, Volume 68
Volume 68, February 2022
- Mingyuan Yu, Jing Liang, Kai Zhao, Zhou Wu:
An aRBF surrogate-assisted neighborhood field optimizer for expensive problems. 100972 - Peng Yang, Hu Zhang, Yanglong Yu, Mingjia Li, Ke Tang:
Evolutionary reinforcement learning via cooperative coevolutionary negatively correlated search. 100974 - Zhenzhong Wang, Kai Ye, Min Jiang, Junfeng Yao, Neal N. Xiong, Gary G. Yen:
Solving hybrid charging strategy electric vehicle based dynamic routing problem via evolutionary multi-objective optimization. 100975 - Wanliang Wang, Guoqing Li, Yule Wang, Fei Wu, Weiwei Zhang, Li Li:
Clearing-based multimodal multi-objective evolutionary optimization with layer-to-layer strategy. 100976 - Haitong Zhao, Changsheng Zhang, Xuanyu Zheng, Chen Zhang, Bin Zhang:
A decomposition-based many-objective ant colony optimization algorithm with adaptive solution construction and selection approaches. 100977 - Huanrong Tang, Fan Yu, Juan Zou, Shengxiang Yang, Jinhua Zheng:
A constrained multi-objective evolutionary strategy based on population state detection. 100978 - Adriana Menchaca-Méndez, Saúl Zapotecas Martínez, Luis Miguel García-Velázquez, Carlos A. Coello Coello:
Uniform mixture design via evolutionary multi-objective optimization. 100979 - Lucas R. C. de Farias, Aluízio F. R. Araújo:
A decomposition-based many-objective evolutionary algorithm updating weights when required. 100980 - Sobia Saleem, Marcus Gallagher:
Using regression models for characterizing and comparing black box optimization problems. 100981 - Daniel Loscos, Narciso Martí-Oliet, Ismael Rodríguez:
Generalization and completeness of stochastic local search algorithms. 100982 - Anping Lin, Peiwen Yu, Shi Cheng, Lining Xing:
One-to-one ensemble mechanism for decomposition-based multi-Objective optimization. 101007 - Shuo Qin, Dechang Pi, Zhongshi Shao, Yue Xu:
Hybrid collaborative multi-objective fruit fly optimization algorithm for scheduling workflow in cloud environment. 101008 - Zhengyan Mao, Mandan Liu:
A local search-based many-objective five-element cycle optimization algorithm. 101009 - Abhishek Kumar, Partha P. Biswas, Ponnuthurai N. Suganthan:
Differential evolution with orthogonal array-based initialization and a novel selection strategy. 101010 - Xin Lin, Wenjian Luo, Peilan Xu, Yingying Qiao, Shengxiang Yang:
PopDMMO: A general framework of population-based stochastic search algorithms for dynamic multimodal optimization. 101011 - Huanlai Xing, Jing Zhu, Rong Qu, Penglin Dai, Shouxi Luo, Muhammad Azhar Iqbal:
An ACO for energy-efficient and traffic-aware virtual machine placement in cloud computing. 101012 - Lisha Dong, Qiuzhen Lin, Yu Zhou, Jianmin Jiang:
Adaptive operator selection with test-and-apply structure for decomposition-based multi-objective optimization. 101013 - Yaping Fu, Yushuang Hou, Zhenghua Chen, Xujin Pu, Kaizhou Gao, Ali Sadollah:
Modelling and scheduling integration of distributed production and distribution problems via black widow optimization. 101015 - Sezin Afsar, Juan José Palacios, Jorge Puente, Camino R. Vela, Inés González Rodríguez:
Multi-objective enhanced memetic algorithm for green job shop scheduling with uncertain times. 101016 - Manou Rosenberg, Tim French, Mark Reynolds, Lyndon While:
Finding an optimised infrastructure for electricity distribution networks in rural areas - A comparison of different approaches. 101018 - Jiawei Yuan, Hai-Lin Liu, Zhaoshui He:
A constrained multi-objective evolutionary algorithm using valuable infeasible solutions. 101020 - Qiuhua Tang, Kai Meng, Lixin Cheng, Zikai Zhang:
An improved multi-objective multifactorial evolutionary algorithm for assembly line balancing problem considering regular production and preventive maintenance scenarios. 101021
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