Incremental cooperative coevolution for large-scale global optimization

被引:13
作者
Mahdavi, Sedigheh [1 ]
Rahnamayan, Shahryar [1 ]
Shiri, Mohammad Ebrahim [2 ]
机构
[1] UOIT, Dept Elect Comp & Software Engn, 2000 Simcoe St North, Oshawa, ON L1H 7K4, Canada
[2] Amirkabir Univ Technol, Dept Math & Comp Sci, Tehran, Iran
关键词
Large-scale global optimization (LSGO); Cooperative coevolution (CC); Sensitivity analysis (SA); Incremental problem solving; Problem decomposition; EVOLUTION STRATEGY;
D O I
10.1007/s00500-016-2466-6
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Cooperative coevolution (CC) is an efficient framework for solving large-scale global optimization (LSGO) problems. It uses a decomposition method to divide the LSGO problems into several low-dimensional subcomponents; then, subcomponents are optimized. Since CC algorithms do not consider any imbalance feature, their performance degrades during solving imbalanced LSGO problems. In this paper, we propose an incremental CC (ICC) algorithm in which the algorithm optimizes an integrated subcomponent which subcomponents are dynamically added to it. Therefore, the search space of the optimizer is grown incrementally toward the original problem search space. Various search spaces are built according to three approaches, namely random-based, sensitivity analysis-based, and random sensitivity analysis-based methods; then, ICC explores these search spaces effectively. Random-based selects a subcomponent randomly for adding it to the current search space and the sensitivity analysis-based method uses a sensitivity analysis strategy to select a subcomponent. The random sensitivity analysis-based strategy is a hybrid of the random and sensitivity analysis-based methods. Theoretical analysis is provided to demonstrate that the proposed ICC-based algorithms are effective for solving imbalanced LSGO problems. Finally, the efficiency of these algorithms is benchmarked on the complex imbalanced LSGO problems. Simulation results confirm that ICC obtains a better performance overall.
引用
收藏
页码:2045 / 2064
页数:20
相关论文
共 50 条
[41]  
Singh HK, 2010, ADAPT LEARN OPTIM, V5, P117, DOI 10.1007/978-3-642-13425-8_6
[42]   A cooperative particle swarm optimizer with statistical variable interdependence learning [J].
Sun, Liang ;
Yoshida, Shinichi ;
Cheng, Xiaochun ;
Liang, Yanchun .
INFORMATION SCIENCES, 2012, 186 (01) :20-39
[43]  
Tang K., 2010, Tech. Rep.
[44]   A cooperative approach to particle swarm optimization [J].
van den Bergh, F ;
Engelbrecht, AP .
IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION, 2004, 8 (03) :225-239
[45]   Parallel differential evolution with self-adapting control parameters and generalized opposition-based learning for solving high-dimensional optimization problems [J].
Wang, Hui ;
Rahnamayan, Shahryar ;
Wu, Zhijian .
JOURNAL OF PARALLEL AND DISTRIBUTED COMPUTING, 2013, 73 (01) :62-73
[46]   Two-stage based ensemble optimization framework for large-scale global optimization [J].
Wang, Yu ;
Huang, Jin ;
Dong, Wei Shan ;
Yan, Jun Chi ;
Tian, Chun Hua ;
Li, Min ;
Mo, Wen Ting .
EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2013, 228 (02) :308-320
[47]  
Weicker K, 1999, EV COMP 1999 CEC 99, V3
[48]   Large scale evolutionary optimization using cooperative coevolution [J].
Yang, Zhenyu ;
Tang, Ke ;
Yao, Xin .
INFORMATION SCIENCES, 2008, 178 (15) :2985-2999
[49]   Multilevel Cooperative Coevolution for Large Scale Optimization [J].
Yang, Zhenyu ;
Tang, Ke ;
Yao, Xin .
2008 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION, VOLS 1-8, 2008, :1663-+
[50]   Self-adaptive differential evolution with multi-trajectory search for large-scale optimization [J].
Zhao, Shi-Zheng ;
Suganthan, Ponnuthurai Nagaratnam ;
Das, Swagatam .
SOFT COMPUTING, 2011, 15 (11) :2175-2185