Wireless Localization and Formation Control With Asynchronous Agents

Weijie Yuan;Zhaohui Yang;Liangming Chen;Ruiheng Zhang;Yiheng Yao;Yuanhao Cui;Hong Zhang;Derrick Wing Kwan Ng
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Abstract

The formation control of multi-agent systems has increasingly drawn attention for fulfilling numerous emerging applications and services. To achieve high-accuracy formation, the location awareness of all agents becomes an essential requirement. In this paper, we address the problem of network localization and formation control in a cooperative system with asynchronous agents. In particular, we formulate the joint localization and synchronization of agents as a statistical inference problem. The underlying probabilistic model is represented by a factor graph from which a message-passing algorithm is designed that computes approximations of the marginals of unknown variables, i.e. agents’ locations and clock offsets. Due to the Euclidean-norm operator involved in their computation no parametric closed-form expressions of the messages exist. As a compromise, implemented message-passing methods therefore resort to approximations of these messages. Conventional methods rely either on a first-order Taylor expansion of the norm operation or on non-parametric representations, e.g. by means particle filters (PFs), to compute such approximations. However, the former approach suffers from poor performance while the latter one experiences high complexity. The proposed message-passing algorithm in this paper is parametric. Specifically, it passes Gaussian messages that can be essentially obtained by suitably augmenting the factor graph and applying on it a hybrid method for combining belief propagation and variational message passing. Subsequently, the agents can exploit the estimated locations for determining the control policy. Two types of control policy are designed based on the optimization of a generalized cost function. We show that the proposed scheme enjoys a reduced complexity for multi-agent localization while achieving the desired formation with excellent accuracy.
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异步代理的无线定位和编队控制
为满足众多新兴应用和服务的需要,多代理系统的编队控制越来越受到关注。要实现高精确度的编队,所有代理的位置感知成为一项基本要求。本文探讨了异步代理合作系统中的网络定位和编队控制问题。具体而言,我们将代理的联合定位和同步问题表述为一个统计推理问题。底层概率模型由因子图表示,根据因子图设计了一种信息传递算法,可计算未知变量(即代理的位置和时钟偏移)的边际近似值。由于计算中涉及欧几里得正算子,因此不存在信息的参数闭式表达式。因此,作为一种折中方法,已实施的消息传递方法采用了这些消息的近似值。传统方法要么依赖于规范运算的一阶泰勒展开,要么依赖于非参数表示,例如通过粒子滤波器(PF)来计算这种近似值。然而,前一种方法的性能较差,而后一种方法的复杂度较高。本文提出的信息传递算法是参数算法。具体来说,它传递的是高斯信息,而高斯信息基本上可以通过适当增强因子图并在其上应用结合信念传播和变异信息传递的混合方法来获得。随后,代理可以利用估计的位置来确定控制策略。在优化广义成本函数的基础上,我们设计了两种控制策略。我们的研究表明,所提出的方案降低了多代理定位的复杂性,同时以出色的精度实现了所需的编队。
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Table of Contents IEEE Open Access Publishing Guest Editorial Positioning and Sensing Over Wireless Networks—Part II TechRxiv: Share Your Preprint Research With the World! IEEE Journal on Selected Areas in Communications Publication Information
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