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A multimetric and multideme multiagent system for multiobjective optimization

机译:用于多目标优化的多指标多指标多主体系统

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This article proposes a multiagent system consisting of a number of multiobjective metaheuristic agents (namely, multiobjective genetic algorithm, strength Pareto evolutionary algorithm, differential evolution, simulated annealing, and particle swarm optimization) working toward to extract optimal or very close-to-optimal Pareto fronts using multiple performance metrics in a sessionwise manner. At the beginning of each session, the main population is divided into a number of subpopulations, and each of them is assigned to a particular agent. The system runs in consecutive sessions such that, at the beginning of a session, agents start running after being assigned with a subpopulation and return the optimized subpopulations together with the corresponding set of nondominated solutions at the end of the session. There are 3 multiobjective assessment metrics in use, and a different metric is considered for each session to measure the success of each metaheuristic agent. The evaluation of individual agents using a particular assessment metric is used in 2 ways: first, the number of fitness evaluations for each agent is adjusted based on their performance; second, the subpopulation improved by an individual agent might be rejected on the basis of its evaluation score. At the end of each session, individual subpopulations are merged to get the updated main population, whereas individual sets of nondominated solutions are combined to form the global Pareto front. In addition to the individual multiobjective metaheuristic agents, the system also contains a number of coordination and synchronization agents that run the whole system toward its objectives. The proposed system is tested using real-valued multiobjective benchmark problems in 2009 IEEE Congress on Evolutionary Computation. Experimental results and statistical evaluations exhibited that the achieved success is better than many of state-of-the-art algorithms.
机译:本文提出了一个由多个多目标元启发式智能体(即多目标遗传算法,强度帕累托进化算法,差分进化,模拟退火和粒子群优化)组成的多主体系统,旨在提取最佳或非常接近最优的帕累托。前端以会话方式使用多个性能指标。在每个会话的开始,主要人口被分为多个亚群,每个亚群都被分配给特定的代理人。系统在连续的会话中运行,这样,在会话开始时,为代理分配了子种群后便开始运行,并在会话结束时返回优化的子种群以及相应的非支配解决方案集。有3种多目标评估指标正在使用中,并且为每个会话考虑一个不同的指标以衡量每种元启发式代理的成功程度。使用特定评估指标对单个代理进行评估的方式有两种:第一,根据每个代理的绩效调整适应性评估的次数;第二,由个体个体改善的亚群可能会基于其评估得分而被拒绝。在每个会话的末尾,将合并各个子群体以获取更新的主要人口,而将各个非控制解决方案集合并以形成全局Pareto前沿。除了各个多目标元启发式代理程序之外,系统还包含许多协调和同步代理程序,这些代理程序和同步代理程序使整个系统朝着其目标运行。在2009年IEEE进化计算大会上,使用实值多目标基准问题对提出的系统进行了测试。实验结果和统计评估表明,所取得的成功比许多最新算法要好。

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