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首页> 外文期刊>International Journal of Bio-Inspired Computation >Solving many-objective optimisation problems by an improved particle swarm optimisation approach and a normalised penalty method
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Solving many-objective optimisation problems by an improved particle swarm optimisation approach and a normalised penalty method

机译:通过改进的粒子群优化方法和规范化的惩罚方法解决多目标优化问题

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摘要

In this paper, a novel modified particle swarm optimisation (NMPSO) approach is presented to handle the many-objective knapsack (MOK) problem. NMPSO relies on the global best particle to guide the search of all particles in each generation. Furthermore, a randomisation-based mutation is adopted to overcome the premature convergence. A normalised penalty method (NPM) is devised to reach a compromise between objective functions and inequality constraints, which enables particles to explore solution space more precisely. In summary, the contribution of our work can be summarised in two aspects: 1) a more powerful approach called NMPSO is proposed; 2) a reasonable NPM is devised. Five improved PSOs are used to handle the MOKs with different number of objective functions and dimensions. Experimental results show that NMPSO has higher efficiency than the other four approaches. It uses the lowest computational cost and achieves the smallest penalty function values for most MOKs.
机译:在本文中,提出了一种新型修改的粒子群优化(NMPSO)方法以处理许多目标背包(MOK)问题。 NMPSO依赖于全球最佳粒子来指导每一代中的所有粒子的搜索。 此外,采用基于随机的突变来克服过早收敛。 规范化的惩罚方法(NPM)被设计为在客观函数和不等式约束之间达到妥协,这使得粒子能够更准确地探索解决方案空间。 总之,我们工作的贡献可以总结在两个方面:1)提出了一种叫做NMPSO的更强大的方法; 2)设计合理的NPM。 五种改进的PSO用于处理具有不同数量的客观功能和尺寸的MOKS。 实验结果表明,NMPSO具有比其他四种方法更高的效率。 它使用最低计算成本并实现大多数Moks的最小惩罚函数值。

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