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Population Diversity of Particle Swarm Optimizer Solving Single and Multi-Objective Problems

机译:解决单目标和多目标问题的粒子群优化器的种群多样性

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Premature convergence occurs in swarm intelligence algorithms searching for optima. A swarm intelligence algorithm has two kinds of abilities: exploration of new possibilities and exploitation of old certainties. The exploration ability means that an algorithm can explore more search place to increase the possibility that the algorithm can find good enough solutions. In contrast, the exploitation ability means that an algorithm focuses on the refinement of found promising areas. An algorithm should have a balance between exploration and exploitation, that is, the allocation of computational resources should be optimized to ensure that an algorithm can find good enough solutions effectively The diversity measures the distribution of individuals' information. From the observation of the distribution and diversity change, the degree of exploration and exploitation can be obtained. Another issue in multiobjective is the solution metric. Pareto domination is utilized to compare between two solutions, however, solutions are almost Pareto non-dominated for multi-objective problems with more than ten objectives. In this paper, the authors analyze the population diversity ofparticle swarm optimizer for solving both single objective and multiobjective problems. The population diversity of solutions is used to measure the goodness of a set of solutions. This metric may guide the search in problems with numerous objectives. Adaptive optimization algorithms can be designed through controlling the balance between exploration and exploitation.
机译:群体智能算法在寻找最优值时会发生过早收敛。群智能算法具有两种能力:探索新的可能性和利用旧的确定性。探索能力意味着算法可以探索更多的搜索位置,以增加算法找到足够好的解的可能性。相反,开发能力意味着算法专注于发现有前途的领域的细化。算法应在探索和开发之间保持平衡,也就是说,应优化计算资源的分配,以确保算法可以有效地找到足够好的解决方案。多样性衡量个人信息的分布。从分布和多样性变化的观察中,可以获得勘探和开发的程度。多目标中的另一个问题是解决方案度量标准。帕累托支配用于比较两个解决方案,但是,对于具有十多个目标的多目标问题,解决方案几乎是帕累托支配的。在本文中,作者分析了粒子群优化器的种群多样性,以解决单目标和多目标问题。解决方案的总体多样性用于衡量一套解决方案的优劣。该度量可以指导对具有众多目标的问题的搜索。可以通过控制勘探与开发之间的平衡来设计自适应优化算法。

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