Dynamic Self-Calibration in Collaborative Wireless Networks Using Belief Propagation with Gaussian Particle Filtering

Yanbing Zhang, H. Dai
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引用次数: 6

Abstract

Belief propagation (BP) is considered as a prominent information processing framework for wireless networks recently. However, infeasible computation and communication requirement involved in applications entailing non-discrete distributions limits its use in practical situations with resource constraints. In this paper, based on some previous work, we further investigate an effective approach to address the message representation/approximation problem in BP algorithms, exploiting the recently proposed Gaussian particle filtering technique. The effectiveness of our approach is testified through the dynamic self-calibration problem in wireless networks. This framework can also be readily extended to address various applications in general distributed networks.
基于高斯粒子滤波信念传播的协同无线网络动态自标定
信念传播(BP)是目前无线网络中一种重要的信息处理框架。然而,非离散分布应用中不可行的计算和通信需求限制了其在资源受限的实际情况下的应用。本文在前人研究的基础上,进一步研究了一种有效的方法来解决BP算法中的消息表示/逼近问题,即利用最近提出的高斯粒子滤波技术。通过无线网络中的动态自校准问题验证了该方法的有效性。这个框架还可以很容易地扩展,以处理一般分布式网络中的各种应用程序。
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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