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Cooperative Localization in WSNs Using Gaussian Mixture Modeling: Distributed ECM Algorithms

机译:使用高斯混合模型的无线传感器网络中的合作定位:分布式ECM算法

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摘要

We study cooperative sensor network localization in a realistic scenario where 1) the underlying measurement errors more probably follow a non-Gaussian distribution; 2) the measurement error distribution is unknown without conducting massive offline calibrations; and 3) non-line-of-sight identification is not performed due to the complexity constraint and/or storage limitation. The underlying measurement error distribution is approximated parametrically by a Gaussian mixture with finite number of components, and the expectation–conditional maximization (ECM) criterion is adopted to approximate the maximum-likelihood estimator of the unknown sensor positions and an extra set of Gaussian mixture model parameters. The resulting centralized ECM algorithms lead to easier inference tasks and meanwhile retain several convergence properties with a proof of the “space filling” condition. To meet the scalability requirement, we further develop two distributed ECM algorithms where an average consensus algorithm plays an important role for updating the Gaussian mixture model parameters locally. The proposed algorithms are analyzed systematically in terms of computational complexity and communication overhead. Various computer based tests are also conducted with both simulation and experimental data. The results pin down that the proposed distributed algorithms can provide overall good performance for the assumed scenario even under model mismatch, while the existing competing algorithms either cannot work without the prior knowledge of the measurement error statistics or merely provide degraded localization performance when the measurement error is clearly non-Gaussian.
机译:我们在一个现实的场景中研究协作传感器网络的定位,其中:1)基本的测量误差更可能遵循非高斯分布; 2)在不进行大规模离线校准的情况下,测量误差分布是未知的; 3)由于复杂度限制和/或存储限制,未执行非视距识别。基本的测量误差分布由具有有限数量分量的高斯混合参数化地近似,并且采用期望条件最大化(ECM)准则来近似估计未知传感器位置的最大似然估计量和一组额外的高斯混合模型参数。由此产生的集中式ECM算法可简化推理任务,并同时保留一些收敛性,并证明“空间填充”条件。为了满足可伸缩性要求,我们进一步开发了两种分布式ECM算法,其中平均共识算法在本地更新高斯混合模型参数方面起着重要作用。从计算复杂度和通信开销方面对提出的算法进行了系统的分析。还使用模拟和实验数据进行了各种基于计算机的测试。结果表明,即使在模型不匹配的情况下,所提出的分布式算法也可以为假定的场景提供总体良好的性能,而现有的竞争算法要么在没有测量误差统计信息的先验知识的情况下就无法工作,要么仅在测量误差时提供降级的定位性能显然是非高斯的。

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