ε约束粒子群优化器自适应速度限制控制求解约束优化问题

T. Takahama, S. Sakai
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引用次数: 43

摘要

epsiv约束方法是一种算法转换方法,它利用epsiv级别的比较,根据搜索点是否违反约束对搜索点进行比较,将无约束问题的算法转换为有约束问题的算法。将epsiv约束粒子群算法与粒子群算法相结合,提出了epsiv约束粒子群优化器epsivPSO。在epsivPSO中,满足约束条件的智能体移动以优化目标函数,不满足约束条件的智能体移动以满足约束条件。但有时agent的速度过大,会飞离可行区域。在本研究中,为了解决这一问题,我们提出将智能体分成若干组,并通过比较每组智能体的运动情况,自适应控制智能体的最大速度。通过将改进的epsivPSO与各种已知的非线性约束问题的方法进行比较,证明了该方法的有效性
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Solving Constrained Optimization Problems by the ε Constrained Particle Swarm Optimizer with Adaptive Velocity Limit Control
The epsiv constrained method is an algorithm transformation method, which can convert algorithms for unconstrained problems to algorithms for constrained problems using the epsiv level comparison that compares the search points based on the constraint violation of them. We proposed the epsiv constrained particle swarm optimizer epsivPSO, which is the combination of the epsiv constrained method and particle swarm optimization. In the epsivPSO, the agents who satisfy the constraints move to optimize the objective function and the agents who don't satisfy the constraints move to satisfy the constraints. But sometimes the velocity of agents becomes too big and they fly away from feasible region. In this study, to solve this problem, we propose to divide agents into some groups and control the maximum velocity of agents adaptively by comparing the movement of agents in each group. The effectiveness of the improved epsivPSO is shown by comparing it with various methods on well known nonlinear constrained problems
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