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Novel Adaptive Simulated Annealing Algorithm for Constrained Multi-Objective Optimization 被引量:4

Novel Adaptive Simulated Annealing Algorithm for Constrained Multi-Objective Optimization
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摘要 In recent years, sinmlated annealing algo-rithms have been extensively developed and uti-lized to solve nmlti-objective optimization problems. In order to obtain better optimization perfonmnce, this paper proposes a Novel Adaptive Simulated Annealing (NASA) algorithm for constrained multi-objective optimization based on Archived Multi-objective Simulated Annealing (AMOSA). For han-dling multi-objective, NASA makes improverrents in three aspects: sub-iteration search, sub-archive and adaptive search, which effectively strengthen the stability and efficiency of the algorithnm For handling constraints, NASA introduces corresponding solution acceptance criterion. Furtherrrore, NASA has also been applied to optimize TD-LTE network perform-ance by adjusting antenna paranleters; it can achieve better extension and convergence than AMOSA, NS-GAII and MOPSO. Analytical studies and simulations indicate that the proposed NASA algorithm can play an important role in improving multi-objective optimi-zation performance. In recent years,simulated annealing algorithms have been extensively developed and utilized to solve multi-objective optimization problems.In order to obtain better optimization performance,this paper proposes a Novel Adaptive Simulated Annealing (NASA) algorithm for constrained multi-objective optimization based on Archived Multi-objective Simulated Annealing (AMOSA).For handling multi-objective,NASA makes improvements in three aspects:sub-iteration search,sub-archive and adaptive search,which effectively strengthen the stability and efficiency of the algorithm.For handling constraints,NASA introduces corresponding solution acceptance criterion.Furthermore,NASA has also been applied to optimize TD-LTE network performance by adjusting antenna parameters;it can achieve better extension and convergence than AMOSA,NSGAII and MOPSO.Analytical studies and simulations indicate that the proposed NASA algorithm can play an important role in improving multi-objective optimization performance.
出处 《China Communications》 SCIE CSCD 2012年第9期68-78,共11页 中国通信(英文版)
基金 supported by the Major National Science & Technology Specific Project of China under Grants No.2010ZX03002-007-02,No.2009ZX03002-002,No.2010ZX03002-002-03
关键词 simulated annealing constrained rmlti-objective optimizaztion adaptive sub-iteration search-ing sub-archive PARETO-OPTIMAL 自适应模拟退火算法 约束多目标优化 美国航空航天局 自适应搜索 NASA 优化问题 强稳定性 验收标准
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  • 1Wang Z G, Chen X Q, Luo W C, et al. Research on the theory and application of multidisciplinary design optimization of flight vehicles. Beijing: National Defence Industry Press, 2006. 被引量:1
  • 2Rao S S, Dhingra A K. Applications of fuzzy theories to multiobjective system optimization. NASA CR 177573, 1991. 被引量:1
  • 3Soland R M. Multicriteria optimization: a general characterization of efficient solutions. Decision Sciences 1979; 10(1): 26-38. 被引量:1
  • 4Cui X X. Multiobjective evolutionary algorithm and their application. Beijing: National Defence Industry Press, 2006. 被引量:1
  • 5Coello C A C. An updated survey of evolutionary multiobjective optimization techniques: state of the art and future trends. Proceedings of the 1999 Congress on Evolutionary Computation. 1999; 1: 3-13. 被引量:1
  • 6Schaffer J D. Some experiments in machine learning using vector evaluated genetic algorithms. PhD thesis, Vanderbilt University, 1984. 被引量:1
  • 7Horn J, Nafpliotis N, Goldberg D E. A niched Pareto genetic algorithm for multiobjective optimization. Proc of the 1st IEEE Conf on Evolutionary Computation. 1994; 82-87. 被引量:1
  • 8Zitzler E, Thiele L. Multiobjective evolutionary algorithms: a comparative case study and the strength pareto approach. IEEE Trans on Evolutionary Computation 1999; 3(4): 257-271. 被引量:1
  • 9Zitzler E, Marco L, Lothar T. SPEA2: improving the strength Pareto evolutionary algorithm. Computer Engineering and Networks Laboratory, Swiss Federal Institute of Technology Technical Report 103, 2001. 被引量:1
  • 10Srinivas N, Deb K. Multi-objective function optimization using non-dominated sorting genetic algorithms. Evolutionary Computation 1995; 2(3): 221-248. 被引量:1

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