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arxiv: 1702.05781 · v3 · pith:CSGDZY7Xnew · submitted 2017-02-19 · 💻 cs.IT · math.IT· math.OC

Distributed Gauss-Newton Method for State Estimation Using Belief Propagation

classification 💻 cs.IT math.ITmath.OC
keywords gauss-newtonmethodbeliefdistributedpropagationalgorithmestimationgn-bp
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We present a novel distributed Gauss-Newton method for the non-linear state estimation (SE) model based on a probabilistic inference method called belief propagation (BP). The main novelty of our work comes from applying BP sequentially over a sequence of linear approximations of the SE model, akin to what is done by the Gauss-Newton method. The resulting iterative Gauss-Newton belief propagation (GN-BP) algorithm can be interpreted as a distributed Gauss-Newton method with the same accuracy as the centralized SE, however, introducing a number of advantages of the BP framework. The paper provides extensive numerical study of the GN-BP algorithm, provides details on its convergence behavior, and gives a number of useful insights for its implementation.

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