Discrete Invasive Weed Optimization Algorithm for Graph Based Combinatorial Road Network Management Problem

C. Sur, A. Shukla
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引用次数: 5

Abstract

Invasive Weed Optimization (IWO) Algorithm is a nature inspired swarm based continuous domain optimization meta-heuristics which mimicry the expansion-cum-survival strategy of the weeds in favorable, rich and unwanted regions which happens to be the best solution in terms of optimization with respect to competition, growth and nutrition. These unwanted plants are in consistent competition and opposition from the other members of the nature either directly or indirectly and as a result their way of living, foraging and sustaining are the most robust and challenging. This optimization technique has been proven to be successful in many continuous parameter domains due to their unique spreading characteristics and optimization search methods. In this work we have extended the utility of the invasive weed optimization algorithm for graph based combinatorial optimization for path search and planning for vehicle routing from a source to destination. The problem can be viewed as a multimodal optimization problem where selection of a certain sequence of multimodal solutions would be best solution. For this we have modified the classical IWO to suit the graph based situation and made necessary change in implications to cope up with the graph parameters. The convergence rate of the Discrete Invasive Weed Optimization (DIWO) Algorithm is being compared with Ant Colony Optimization (ACO) and Intelligent Water Drop (IWD) algorithm with an application on a road graph model for route optimization for vehicles with respect to multi-objective of travelling and waiting time.
基于图的组合路网管理问题的离散入侵杂草优化算法
入侵杂草优化算法(Invasive Weed Optimization, IWO)是一种基于自然启发的连续域优化元启发式算法,它模仿杂草在有利、富饶和不需要的区域的扩张和生存策略,这恰好是在竞争、生长和营养方面的最佳优化解决方案。这些不受欢迎的植物直接或间接地与自然界的其他成员竞争和反对,因此它们的生存、觅食和维持方式是最强大和最具挑战性的。由于其独特的扩展特性和优化搜索方法,该优化技术在许多连续参数域上都是成功的。在这项工作中,我们扩展了入侵杂草优化算法的效用,用于基于图的组合优化,用于路径搜索和规划车辆从源到目的地的路线。该问题可以看作是一个多模态优化问题,其中选择一定序列的多模态解是最佳解。为此,我们修改了经典的IWO以适应基于图形的情况,并对含义进行了必要的更改以应对图形参数。将离散入侵杂草优化算法(DIWO)与蚁群优化算法(ACO)和智能水滴算法(IWD)的收敛速度进行比较,并将其应用于道路图模型中考虑行驶和等待时间多目标的车辆路线优化。
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