首页> 外文会议>Information Processing in Sensor Networks, 2005. IPSN 2005 >Quantizer design and distributed encoding algorithm for source localization in sensor networks
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Quantizer design and distributed encoding algorithm for source localization in sensor networks

机译:传感器网络中源定位的量化器设计和分布式编码算法

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In this paper, we propose a quantizer design algorithm that is optimized for source localization in sensor networks. For this application, the goal is to minimize the amount of information that the sensor nodes have to exchange in order to achieve a certain source localization accuracy. We show that this goal can be achieved more efficiently when "application-specific" quantizers are used. Our proposed quantizer design algorithm uses a cost function that takes into account the distance between the actual source position and the position estimated based on quantized data. We also propose a distributed encoding algorithm that is applied after quantization and achieves rate savings by merging quantization bins without any degradation of localization performance. The merging technique in the encoding algorithm exploits the fact that certain combinations of quantization bins at each node cannot occur because the corresponding spatial regions have an empty intersection. We apply these algorithms to a system where an acoustic sensor model is employed for localization. For this case, we introduce the Equally Distance-divided Quantizer (EDQ), designed so that quantizer partitions correspond to a uniform partitioning in terms of distance. Our simulations show the improved performance of our quantizer over traditional quantizer designs. In addition, they show rate savings (32.8%, 5 nodes, 4 bits per node) when our novel bin-merging algorithms are used. Our results also show that an optimized bit allocation leads to significant improvements in localization performance with respect to a bit allocation that uses the same number of bits for each node.
机译:在本文中,我们提出了一种量化器设计算法,该算法针对传感器网络中的源定位进行了优化。对于此应用程序,目标是使传感器节点必须交换的信息量最小化,以实现一定的源定位精度。我们表明,当使用“特定于应用程序”的量化器时,可以更有效地实现此目标。我们提出的量化器设计算法使用了成本函数,该函数考虑了实际源位置与基于量化数据估算的位置之间的距离。我们还提出了一种分布式编码算法,该算法在量化后应用,并且通过合并量化仓来实现速率节省,而不会降低定位性能。编码算法中的合并技术利用了以下事实:由于相应的空间区域具有空交集,因此无法在每个节点上发生量化箱的某些组合。我们将这些算法应用于采用声学传感器模型进行定位的系统。对于这种情况,我们引入了等距划分量化器(EDQ),其设计目的是使量化器分区对应于距离方面的统一分区。我们的仿真表明,与传统的量化器设计相比,量化器的性能有所提高。此外,当使用我们新颖的bin合并算法时,它们显示出速率节省(32.8%,5个节点,每个节点4位)。我们的结果还表明,相对于每个节点使用相同位数的位分配,优化的位分配可显着提高定位性能。

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