An energy-efficient est'/> Distributed Aggregate Function Estimation by Biphasically Configured Metropolis-Hasting Weight Model
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Distributed Aggregate Function Estimation by Biphasically Configured Metropolis-Hasting Weight Model

机译:双向配置的都会型权重模型的分布式集合函数估计

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An energy-efficient estimation of an aggregate function can significantly optimize a global event detection or monitoring in wireless sensor networks. This is probably the main reason why an optimization of the complementary consensus algorithms is one of the key challenges of the lifetime extension of the wireless sensor networks on which the attention of many scientists is paid. In this paper, we introduce an optimized weight model for the average consensus algorithm. It is called the Biphasically configured Metropolis-Hasting weight model and is based on a modification of the Metropolis-Hasting weight model by rephrasing the initial configuration into two parts. The first one is the default configuration of the Metropolis-Hasting weight model, while, the other one is based on a recalculation of the weights allocated to the adjacent nodes’ incoming values at the cost of decreasing the value of the weights of the inner states. The whole initial configuration is executed in a fully-distributed manner. In the experimental section, it is proven that our optimized weight model significantly optimizes the Metropolis-Hasting weight model in several aspects and achieves better results compared with other concurrent weight models.
机译:聚合函数的节能估算可以显着优化无线传感器网络中的全局事件检测或监视。这可能是补充共识算法优化成为无线传感器网络寿命延长的关键挑战之一的主要原因,许多科学家对此予以关注。在本文中,我们为平均共识算法引入了优化的权重模型。它被称为双相配置的Metropolis-Hasting权重模型,它基于Metropolis-Hasting权重模型的修改,将初始配置重新分为两部分。第一个是Metropolis-Hasting权重模型的默认配置,而另一个是基于重新分配分配给相邻节点的传入值的权重,其代价是减少内部状态权重的值。整个初始配置以完全分布式的方式执行。在实验部分,证明了我们的优化权重模型在多个方面显着优化了Metropolis-Hasting权重模型,并且与其他并行权重模型相比,取得了更好的结果。

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