Formal convergence analysis for bio-inspired topology control in MANETs

S. Gundry, E. Urrea, C. Sahin, Jianmin Zou, M. U. Uyar
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引用次数: 12

Abstract

We present a convergence analysis of a genetic algorithm based topological control mechanism for the decision making process of evolutionary and autonomous systems that adaptively reconfigures spatial configuration in mobile ad hoc networks (MANETs). Mobile nodes adjust their speed and direction using information collected from the local neighborhood environment in unknown geography. We extend the stochastic model of the genetic operators (i.e., selection, crossover and mutation) called the dynamical system model that represents the behavior of a single node's decision mechanism in the network viewed as a stochastic variable. We introduce an ergodic homogeneous Markov chain to analyze the convergent nature of multiple mobile nodes running our algorithm, called the Force-based Genetic Algorithm (FGA). Here, a state represents an instantaneous spatial configuration of nodes in a MANET. It is shown that the Markov chain model of our FGA is ergodic and its convergence is shown using Dobrushin's contraction coefficients. It is observed that scenarios where nodes have small communication ranges compared to their movement range converge quicker than larger ones due the limited information they have of their neighborhood, making movement decisions simpler, thus conserving energy.
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manet中仿生拓扑控制的形式收敛分析
本文提出了一种基于遗传算法的拓扑控制机制,用于自适应重新配置移动自组织网络(manet)中空间配置的进化和自治系统的决策过程。移动节点利用从未知地理环境中收集的信息来调整其速度和方向。我们扩展了遗传算子(即选择、交叉和突变)的随机模型,称为动态系统模型,该模型将网络中单个节点的决策机制的行为视为随机变量。我们引入了一个遍历齐次马尔可夫链来分析运行我们的算法(称为基于力的遗传算法(FGA))的多个移动节点的收敛性。在这里,状态代表了MANET中节点的瞬时空间配置。证明了FGA的马尔可夫链模型是遍历的,并利用Dobrushin的收缩系数证明了其收敛性。观察到,当节点的通信范围相对于其移动范围较小时,由于节点对其邻居的信息有限,其收敛速度比大节点更快,从而使移动决策更简单,从而节省了能量。
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