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A Reduced Uncertainty-Based Hybrid Evolutionary Algorithm for Solving Dynamic Shortest-Path Routing Problem

机译:一种基于减少不确定度的混合进化算法,用于解决动态最短路径路由问题

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The need of effective packet transmission to deliver advanced performance in wireless networks creates the need to find shortest network paths efficiently and quickly. This paper addresses a reduced uncertainty-based hybrid evolutionary algorithm (RUBHEA) to solve dynamic shortest path routing problem (DSPRP) effectively and rapidly. Genetic algorithm (GA) and particle swarm optimization (PSO) are integrated as a hybrid algorithm to find the best solution within the search space of dynamically changing networks. Both GA and PSO share context of individuals to reduce uncertainty in RUBHEA. Various regions of search space are explored and learned by RUBHEA. By employing a modified priority encoding method, each individual in both GA and PSO are represented as a potential solution for DSPRP. A complete statistical analysis has been performed to compare the performance of RUBHEA with various state-of-the-art algorithms. It shows that RUBHEA is considerably superior (reducing the failure rate by up to 50%) to similar approaches with increasing number of nodes encountered in the networks.
机译:需要有效的数据包传输以在无线网络中提供先进的性能,这就需要高效而快速地找到最短的网络路径。本文提出了一种基于减少的不确定性的混合进化算法(RUBHEA),以有效,快速地解决动态最短路径路由问题(DSPRP)。遗传算法(GA)和粒子群优化(PSO)集成为一种混合算法,可以在动态变化的网络的搜索空间内找到最佳解决方案。 GA和PSO都共享个人上下文,以减少RUBHEA中的不确定性。 RUBHEA探索和学习了搜索空间的各个区域。通过采用改进的优先级编码方法,GA和PSO中的每个个人都被表示为DSPRP的潜在解决方案。进行了完整的统计分析,以比较RUBHEA与各种最新算法的性能。它表明,随着网络中遇到的节点数量增加,RUBHEA明显优于同类方法(将故障率降低多达50%)。

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