Multi-Objective Optimization with Controlled Model Assisted Evolution Strategies

被引:2
作者
Braun, Jan [1 ]
Krettek, Johannes [1 ]
Hoffmann, Frank [1 ]
Bertram, Torsten [2 ]
机构
[1] TU Dortmund, Inst Control & Syst Engn, D-44221 Dortmund, Germany
[2] TU Dortmund, Chair Control & Syst Engn, D-44221 Dortmund, Germany
关键词
Multi-objective optimization; fitness model; surrogate model; model assisted; surrogate assisted; data based model; evolutionary algorithm; evolution strategies; GENETIC ALGORITHM; APPROXIMATION;
D O I
10.1162/evco.2009.17.4.17408
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Evolutionary algorithms perform robust search in complex and high dimensional search spaces, but require a large number of fitness evaluations to approximate optimal solutions. These characteristics limit their potential for hardware in the loop optimization and problems that require extensive simulations and calculations. Evolutionary algorithms do not maintain their knowledge about the fitness function as they only store solutions of the current generation. In contrast, model assisted evolutionary algorithms utilize the information contained ill previously evaluated solutions in terms of a data based model. The convergence of the evolutionary algorithm is improved as some selection decisions rely on the model rather than to invoke expensive evaluations of the true fitness function. The novelty of our scheme steins from the preselection of solutions based on an instance based fitness model, in which the selection pressure is adjusted to the quality of model. This so-called lambda-control adapts the number of true fitness evaluations to the monitored model quality. Our method extends the previous approaches for model assisted scalar optimization to multi-objective problems by a proper redefinition of model quality and preselection pressure control. The analysis on multi-objective benchmark optimization problems not only confirms the superior convergence of the model assisted evolution strategy in comparison with a multi-objective evolution strategy but also the positive effect of regulated preselection in contrast to merely static preselection.
引用
收藏
页码:577 / 593
页数:17
相关论文
共 50 条
[21]   Multi-objective optimization of a bidirectional impulse turbine [J].
Badhurshah, Rameez ;
Samad, Abdus .
PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART A-JOURNAL OF POWER AND ENERGY, 2015, 229 (06) :584-596
[22]   A genetic algorithm for unconstrained multi-objective optimization [J].
Long, Qiang ;
Wu, Changzhi ;
Huang, Tingwen ;
Wang, Xiangyu .
SWARM AND EVOLUTIONARY COMPUTATION, 2015, 22 :1-14
[23]   Multi-objective optimization strategies for damage detection using cloud model theory [J].
Jin, Zhou ;
Mita, Akira ;
Li Rongshuai .
HEALTH MONITORING OF STRUCTURAL AND BIOLOGICAL SYSTEMS 2012, 2012, 8348
[24]   Multi-objective optimization algorithm assisted by metamodels with applications in aerodynamics problems [J].
Gautier, Nelson Jose Diaz ;
Manzanare Filho, Nelson ;
Ramirez, Edna Raimunda da Silva .
APPLIED SOFT COMPUTING, 2022, 117
[25]   A multi-objective optimization model and its evolution-based solutions for the fingertip localization problem [J].
Gong, Dunwei ;
Liu, Ke .
PATTERN RECOGNITION, 2018, 74 :385-405
[26]   A Novel Opposition-Based Multi-objective Differential Evolution Algorithm for Multi-objective Optimization [J].
Peng, Lei ;
Wang, Yuanzhen ;
Dai, Guangming .
ADVANCES IN COMPUTATION AND INTELLIGENCE, PROCEEDINGS, 2008, 5370 :162-+
[27]   A Surrogate Model Based Multi-Objective Optimization Method for Optical Imaging System [J].
Sheng, Lei ;
Zhao, Weichao ;
Zhou, Ying ;
Lin, Weimeng ;
Du, Chunyan ;
Lou, Hongwei .
APPLIED SCIENCES-BASEL, 2022, 12 (13)
[28]   Surrogate-assisted multi-objective optimization of the dynamic response of a freight wagon fitted with three-piece bogies [J].
Pandey, Manish ;
Regis, Rommel G. ;
Datta, Rituparna ;
Bhattacharya, Bishakh .
INTERNATIONAL JOURNAL OF RAIL TRANSPORTATION, 2021, 9 (03) :290-309
[29]   An immune multi-objective optimization algorithm with differential evolution inspired recombination [J].
Qi, Yutao ;
Hou, Zhanting ;
Yin, Minglei ;
Sun, Heli ;
Huang, Jianbin .
APPLIED SOFT COMPUTING, 2015, 29 :395-410
[30]   Review of surrogate model assisted multi-objective design optimization of electrical machines: New opportunities and challenges [J].
Liu, Liyang ;
Li, Zequan ;
Kang, Haoyu ;
Xiao, Yang ;
Sun, Lu ;
Zhao, Hang ;
Zhu, Z. Q. ;
Ma, Yiming .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2025, 215