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Multi-Swarm Optimization for Dynamic Combinatorial Problems: A Case Study on Dynamic Vehicle Routing Problem

机译:动态组合问题的多群优化:动态车辆路径问题的案例研究

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Many combinatorial real-world problems are mostly dynamic. They are dynamic in the sense that the global optimum location and its value change over the time, in contrast to static problems. The task of the optimization algorithm is to track this shifting optimum. Particle Swarm Optimization (PSO) has been previously used to solve continuous dynamic optimization problems, whereas only a few works have been proposed for combinatorial ones. One of the most interesting dynamic problems is the Dynamic Vehicle Routing Problem (DVRP). This paper presents a Multi-Adaptive Particle Swarm Optimization (MAPSO) for solving the Vehicle Routing Problem with Dynamic Requests (VRPDR). In this approach the population of particles is split into a set of interacting swarms. Such a multi-swarm helps to maintain population diversity and good tracking is achieved. The effectiveness of this approach is tested on a well-known set of benchmarks, and compared to other metaheuris-tics from literature. The experimental results show that our multi-swarm optimizer significantly outperforms single solution and population based metaheuristics on this problem.
机译:许多组合实际问题主要是动态的。它们是动态的,即全球最佳位置及其价值随时间的变化,与静态问题相比。优化算法的任务是跟踪这种变速器最佳。粒子群优化(PSO)先前用于解决连续的动态优化问题,而只有少数作品已经为组合组提出。最有趣的动态问题之一是动态车辆路由问题(DVRP)。本文介绍了一种多自适​​应粒子群优化(MAPSO),用于解决动态请求(VRPDR)的车辆路由问题。在这种方法中,粒子的群体被分成一组相互作用的群。这种多群有助于维持人口多样性和良好的跟踪。在一系列知名的基准上测试了这种方法的有效性,并与文献中的其他Metaheuris-TICS相比。实验结果表明,我们的多群优化器显着优于单一解决方案和基于群体的群体。

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