基于改进粒子群算法的约束非线性优化

A. Saber, S. Ahmmed, A. Alshareef, A. Abdulwhab, K. Adbullah-Al-Mamun
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引用次数: 6

摘要

提出了一种求解约束非线性优化问题的改进粒子群算法。优化问题在实际应用中是非常复杂的。提出的改进粒子群算法包括问题(复杂度)依赖于有希望值(速度矢量)的变量数、依赖于错误迭代的步长、解锁空闲粒子的死态等。它可靠而准确地跟踪复杂函数的连续变化解,并且不需要额外的集中/努力来处理更复杂的高阶函数。通过惩罚函数将约束管理引入改进的粒子群算法中。改进后的粒子群在局部搜索能力和全局搜索能力之间取得了平衡,适当的适应度函数有助于其快速收敛。为了避免方法被冻结,将停滞/空闲的粒子重置。最后,通过基准数据和方法验证了所提方法的有效性。
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Constrained non-linear optimization by modified particle swarm optimization
This paper presents a modified particle swarm optimization (MPSO) for constrained non-linear optimization problems. Optimization problems are very complex in real life applications. The proposed modified PSO consists of problem (complexity) dependent variable number of promising values (in velocity vector), error-iteration dependent step length, unlocking the dead look of idle particles and so on. It reliably and accurately tracks a continuously changing solution of the complex function and no extra concentration/effort is needed for more complex higher order functions. Constraint management is incorporated in the modified PSO by penalty function. The modified PSO has balance between local and global searching abilities, and an appropriate fitness function helps to converge it quickly. To avoid the method to be frozen, stagnated/idle particles are reset. Finally, benchmark data and methods are used to show the effectiveness of the proposed method.
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