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Multi-sensor data fusion methods for indoor localization under collinear ambiguity

机译:共线歧义下室内定位的多传感器数据融合方法

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Sensor node localization in mobile ad-hoc sensor networks is a challenging problem. Often, the anchor nodes tend to line up in a linear fashion in a mobile sensor network when nodes are deployed in an ad-hoc manner. This paper discusses novel node localization methods under the conditions of collinear ambiguity of the anchors. Additionally, the work presented herein also describes a methodology to fuse data available from multiple sensors for improved localization performance under conditions of collinear ambiguity. In this context, data is first acquired from multiple sensors sensing different modalities. The data acquired from each sensor is used to compute attenuation models for each sensor. Subsequently, a combined multi-sensor attenuation model is developed. The fusion methodology uses a joint error optimization approach on the multi-sensor data. The distance between each sensor node and anchor is itself computed using the differential power principle. These distances are used in the localization of sensor nodes under the condition of collinear ambiguity of anchors. Localization error analysis is also carried out in indoor conditions and compared with the Cramer-Rao lower bound. Experimental results on node localization using simulations and real field deployments indicate reasonable improvements in terms of localization accuracy when compared to methods likes MLAR and MGLR. (C) 2015 Elsevier B.V. All rights reserved.
机译:移动自组织传感器网络中的传感器节点定位是一个具有挑战性的问题。通常,当以临时方式部署节点时,锚点节点倾向于在移动传感器网络中以线性方式排列。本文讨论了锚在共线歧义下的新型节点定位方法。另外,本文提出的工作还描述了一种方法,用于融合可从多个传感器获得的数据,以在共线歧义的条件下改善定位性能。在这种情况下,首先从感测不同模态的多个传感器获取数据。从每个传感器获取的数据用于计算每个传感器的衰减模型。随后,开发了组合的多传感器衰减模型。融合方法对多传感器数据使用联合误差优化方法。每个传感器节点与锚点之间的距离本身都是使用差分功率原理来计算的。在锚定线共线模糊的情况下,这些距离用于传感器节点的定位。还可以在室内条件下进行定位误差分析,并将其与Cramer-Rao下限进行比较。与诸如MLAR和MGLR之类的方法相比,使用仿真和现场部署进行的节点定位实验结果表明,在定位精度方面有合理的提高。 (C)2015 Elsevier B.V.保留所有权利。

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