A Connectivity-Prediction Algorithm and its Application in Active Cooperative Localization for Multi-Robot Systems

Liang Zhang, Zexu Zhang, R. Siegwart, Jen Jen Chung
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引用次数: 3

Abstract

This paper presents a method for predicting the probability of future connectivity between mobile robots with range-limited communication. In particular, we focus on its application to active motion planning for cooperative localization (CL). The probability of connection is modeled by the distribution of quadratic forms in random normal variables and is computed by the infinite power series expansion theorem. A finite-term approximation is made to realize the computational feasibility and three more modifications are designed to handle the adverse impacts introduced by the omission of the higher order series terms. On the basis of this algorithm, an active and CL problem with leader-follower architecture is then reformulated into a Markov Decision Process (MDP) with a one-step planning horizon, and the optimal motion strategy is generated by minimizing the expected cost of the MDP. Extensive simulations and comparisons are presented to show the effectiveness and efficiency of both the proposed prediction algorithm and the MDP model.
一种连接预测算法及其在多机器人系统主动协同定位中的应用
本文提出了一种基于距离限制的移动机器人未来连接概率预测方法。重点研究了其在协同定位(CL)主动运动规划中的应用。连接概率由随机正态变量的二次型分布建模,并由无穷幂级数展开定理计算。为了实现计算可行性,采用了有限项近似,并设计了另外三种修改,以处理由于省略高阶级数项而带来的不利影响。在此基础上,将具有leader-follower结构的主动CL问题转化为具有一步规划视界的马尔可夫决策过程(MDP),并通过最小化MDP的期望成本来生成最优运动策略。大量的仿真和比较表明了所提出的预测算法和MDP模型的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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