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Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.12128/147
Title: Fully Connected Neural Networks Ensemble with Signal Strength Clustering for Indoor Localization in Wireless Sensor Networks
Authors: Bernaś, Marcin
Płaczek, Bartłomiej
Keywords: Neural networks; Indoor positioning systems; Mobile computing; Sensor nodes
Issue Date: 2015
Citation: International Journal of Distributed Sensor Networks, (2015), art. ID 403242, s. 1-10
Abstract: The paper introduces a method which improves localization accuracy of the signal strength fingerprinting approach. According to the proposed method, entire localization area is divided into regions by clustering the fingerprint database. For each region a prototype of the received signal strength is determined and a dedicated artificial neural network (ANN) is trained by using only those fingerprints that belong to this region (cluster). Final estimation of the location is obtained by fusion of the coordinates delivered by selected ANNs. Sensor nodes have to store only the signal strength prototypes and synaptic weights of the ANNs in order to estimate their locations. This approach significantly reduces the amount of memory required to store a received signal strength map. Various ANN topologies were considered in this study. Improvement of the localization accuracy as well as speed-up of learning process was achieved by employing fully connected neural networks. The proposed method was verified and compared against state-of-the-art localization approaches in realworld indoor environment by using both stationary andmobile sensor nodes.
URI: http://hdl.handle.net/20.500.12128/147
ISSN: 1550-1329
1550-1477
Appears in Collections:Artykuły (WNŚiT)

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