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首页> 外文期刊>IEEE Transactions on Signal Processing >Distributed Detection in Sensor Networks With Packet Losses and Finite Capacity Links
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Distributed Detection in Sensor Networks With Packet Losses and Finite Capacity Links

机译:具有丢包和有限容量链接的传感器网络中的分布式检测

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摘要

We consider the problem of classifying among a set of$M$hypotheses via distributed noisy sensors. The sensors can collaborate over a communication network and the task is to arrive at a consensus about the event after exchanging messages. We apply a variant of belief propagation as a strategy for collaboration to arrive at a solution to the distributed classification problem. We show that the message evolution can be reformulated as the evolution of a linear dynamical system, which is primarily characterized by network connectivity. We show that a consensus to the centralized maximum a posteriori (MAP) estimate can almost always reached by the sensors for any arbitrary network. We then extend these results in several directions. First, we demonstrate that these results continue to hold with quantization of the messages, which is appealing from the point of view of finite bit rates supportable between links. We then demonstrate robustness against packet losses, which implies that optimal decisions can be achieved with asynchronous transmissions as well. Next, we present an account of energy requirements for distributed detection and demonstrate significant improvement over conventional decentralized detection. Finally, extensions to distributed estimation are described.
机译:我们考虑通过分布式噪声传感器在一组$ M $假设之间进行分类的问题。传感器可以通过通信网络进行协作,任务是在交换消息后就事件达成共识。我们将信念传播的一种变体用作协作策略,以解决分布式分类问题。我们表明消息演化可以重新定义为线性动态系统的演化,线性动力学系统的主要特征是网络连通性。我们表明,对于任何任意网络,传感器几乎总是可以达到集中式最大后验(MAP)估计值的共识。然后,我们将这些结果扩展到几个方向。首先,我们证明了这些结果在消息量化的情况下仍保持不变,从链接之间可支持的有限比特率的角度来看,这很有吸引力。然后,我们展示了针对数据包丢失的鲁棒性,这意味着通过异步传输也可以实现最佳决策。接下来,我们介绍了分布式检测的能量需求,并证明了相对于常规分散检测而言的显着改进。最后,描述了对分布式估计的扩展。

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