1,318 research outputs found

    Dead Reckoning Localization Technique for Mobile Wireless Sensor Networks

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    Localization in wireless sensor networks not only provides a node with its geographical location but also a basic requirement for other applications such as geographical routing. Although a rich literature is available for localization in static WSN, not enough work is done for mobile WSNs, owing to the complexity due to node mobility. Most of the existing techniques for localization in mobile WSNs uses Monte-Carlo localization, which is not only time-consuming but also memory intensive. They, consider either the unknown nodes or anchor nodes to be static. In this paper, we propose a technique called Dead Reckoning Localization for mobile WSNs. In the proposed technique all nodes (unknown nodes as well as anchor nodes) are mobile. Localization in DRLMSN is done at discrete time intervals called checkpoints. Unknown nodes are localized for the first time using three anchor nodes. For their subsequent localizations, only two anchor nodes are used. The proposed technique estimates two possible locations of a node Using Bezouts theorem. A dead reckoning approach is used to select one of the two estimated locations. We have evaluated DRLMSN through simulation using Castalia simulator, and is compared with a similar technique called RSS-MCL proposed by Wang and Zhu .Comment: Journal Paper, IET Wireless Sensor Systems, 201

    Distributed Recognition of Reference Nodes for Wireless Sensor Network Localization

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    All known localization techniques for wireless sensor and ad-hoc networks require certain set of reference nodes being used for position estimation. The anchor-free techniques in contrast to anchor-based do not require reference nodes called anchors to be placed in the network area before localization operation itself, but they can establish own reference coordinate system to be used for the relative position estimation. We observed that contemporary anchor-free localization algorithms achieve a low localization error, but dissipate significant energy reserves during the recognition of reference nodes used for the position estimation. Therefore, we have proposed the optimized anchor-free localization algorithm referred to as BRL (Boundary Recognition aided Localization), which achieves a low localization error and mainly reduces the communication cost of the reference nodes recognition phase. The proposed BRL algorithm was investigated throughout the extensive simulations on the database of networks with the different number of nodes and densities and was compared in terms of communication cost and localization error with the known related algorithms such as AFL and CRP. Through the extensive simulations we have observed network conditions where novel BRL algorithm excels in comparison with the state of art

    A survey of localization in wireless sensor network

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    Localization is one of the key techniques in wireless sensor network. The location estimation methods can be classified into target/source localization and node self-localization. In target localization, we mainly introduce the energy-based method. Then we investigate the node self-localization methods. Since the widespread adoption of the wireless sensor network, the localization methods are different in various applications. And there are several challenges in some special scenarios. In this paper, we present a comprehensive survey of these challenges: localization in non-line-of-sight, node selection criteria for localization in energy-constrained network, scheduling the sensor node to optimize the tradeoff between localization performance and energy consumption, cooperative node localization, and localization algorithm in heterogeneous network. Finally, we introduce the evaluation criteria for localization in wireless sensor network

    Reference Nodes Selection for Anchor-Free Localization in Wireless Sensor Networks

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    DizertačnĂ­ prĂĄce se zabĂœvĂĄ nĂĄvrhem novĂ©ho bezkotevnĂ­ho lokalizačnĂ­ho algoritmu slouĆŸĂ­cĂ­ho pro vĂœpočet pozice uzlĆŻ v bezdrĂĄtovĂœch senzorovĂœch sĂ­tĂ­ch. ProvedenĂ© studie ukĂĄzaly, ĆŸe dosavadnĂ­ bezkotevnĂ­ lokalizačnĂ­ algoritmy, pracujĂ­cĂ­ v paralelnĂ­m reĆŸimu, dosahujĂ­ malĂœch lokalizačnĂ­ch chyb. Jejich nevĂœhodou ovĆĄem je, ĆŸe pƙi sestavenĂ­ mnoĆŸiny referenčnĂ­ch uzlu spotƙebovĂĄvajĂ­ daleko větĆĄĂ­ mnoĆŸstvĂ­ energie neĆŸ algoritmy pracujĂ­cĂ­ v inkrementĂĄlnĂ­m reĆŸimu. ParalelnĂ­ lokalizačnĂ­ algoritmy vyuĆŸĂ­vajĂ­ pro určenĂ­ pozice referenčnĂ­ uzly nachĂĄzejĂ­cĂ­ se na protilehlĂœch hranĂĄch bezdrĂĄtovĂ© sĂ­tě. NovĂœ lokalizačnĂ­ algoritmus označenĂœ jako BRL (Boundary Recognition aided Localization) je zaloĆŸen na myĆĄlence decentralizovaně detekovat uzly leĆŸĂ­cĂ­ na hranici sĂ­ti a pouze z tĂ©to mnoĆŸiny vybrat potƙebnĂœ počet referenčnĂ­ch uzlu. PomocĂ­ navrĆŸenĂ©ho pƙístupu lze znaĆŸně snĂ­ĆŸit mnoĆŸstvĂ­ energie spotƙebovanĂ© v prĆŻběhu procesu vĂœběru referenčnĂ­ch uzlĆŻ v senzorovĂ©m poli. DalĆĄĂ­m pƙínosem ke snĂ­ĆŸenĂ­ energetickĂœch nĂĄroku a zĂĄroveƈ zachovĂĄnĂ­ nĂ­zkĂ© lokalizačnĂ­ chyby je vyuĆŸitĂ­ procesu multilaterace se tƙemi, eventuĂĄlně čtyƙmi referenčnĂ­mi body. V rĂĄmci prĂĄce byly provedeny simulace několika dĂ­lčích algoritmu a jejich funkčnost byla ověƙena experimentĂĄlně v reĂĄlnĂ© senzorovĂ© sĂ­ti. NavrĆŸenĂœ algoritmus BRL byl porovnĂĄn z hlediska lokalizačnĂ­ chyby a počtu zpracovanĂœch paketĆŻ s několika znĂĄmĂœmi lokalizačnĂ­mi algoritmy. VĂœsledky simulacĂ­ dokĂĄzaly, ĆŸe navrĆŸenĂœ algoritmus pƙedstavuje efektivnĂ­ ƙeĆĄenĂ­ pro pƙesnou a zĂĄroveƈ nĂ­zkoenergetickou lokalizaci uzlĆŻ v bezdrĂĄtovĂœch senzorovĂœch sĂ­tĂ­ch.The doctoral thesis is focused on a design of a novel anchor free localization algorithm for wireless sensor networks. As introduction, the incremental and concurrent anchor free localization algorithms are presented and their performance is compared. It was found that contemporary anchor free localization algorithms working in the concurrent manner achieve a low localization error, but dissipate signicant energy reserves. A new Boundary Recognition Aided Localization algorithm presented in this thesis is based on an idea to recognize the nodes placed on the boundary of network and thus reduce the number of transmission realized during the reference nodes selection phase of the algorithm. For the position estimation, the algorithm employs the multilateration technique that work eectively with the low number of the reference nodes. Proposed algorithms are tested through the simulations and validated by the real experiment with the wireless sensor network. The novel Boundary Recognition Aided Localization algorithm is compared with the known algorithms in terms of localization error and the communication cost. The results show that the novel algorithm presents powerful solution for the anchor free localization.

    Non Parametric Distributed Inference in Sensor Networks Using Box Particles Messages

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    This paper deals with the problem of inference in distributed systems where the probability model is stored in a distributed fashion. Graphical models provide powerful tools for modeling this kind of problems. Inspired by the box particle filter which combines interval analysis with particle filtering to solve temporal inference problems, this paper introduces a belief propagation-like message-passing algorithm that uses bounded error methods to solve the inference problem defined on an arbitrary graphical model. We show the theoretic derivation of the novel algorithm and we test its performance on the problem of calibration in wireless sensor networks. That is the positioning of a number of randomly deployed sensors, according to some reference defined by a set of anchor nodes for which the positions are known a priori. The new algorithm, while achieving a better or similar performance, offers impressive reduction of the information circulating in the network and the needed computation times

    Collaborative Localization Algorithms for Wireless Sensor Networks with Reduced Localization Error

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    Localization is an important research issue in Wireless Sensor Networks (WSNs). Though Global Positioning System (GPS) can be used to locate the position of the sensors, unfortunately it is limited to outdoor applications and is costly and power consuming. In order to find location of sensor nodes without help of GPS, collaboration among nodes is highly essential so that localization can be accomplished efficiently. In this paper, novel localization algorithms are proposed to find out possible location information of the normal nodes in a collaborative manner for an outdoor environment with help of few beacons and anchor nodes. In our localization scheme, at most three beacon nodes should be collaborated to find out the accurate location information of any normal node. Besides, analytical methods are designed to calculate and reduce the localization error using probability distribution function. Performance evaluation of our algorithm shows that there is a tradeoff between deployed number of beacon nodes and localization error, and average localization time of the network can be increased with increase in the number of normal nodes deployed over a region

    A hybrid localization approach in 3D wireless sensor network

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    Location information acquisition is crucial for many wireless sensor network (WSN) applications. While existing localization approaches mainly focus on 2D plane, the emerging 3D localization brings WSNs closer to reality with much enhanced accuracy. Two types of 3D localization algorithms are mainly used in localization application: the range-based localization and the range-free localization. The range-based localization algorithm has strict requirements on hardware and therefore is costly to implement in practice. The range-free localization algorithm reduces the hardware cost but at the expense of low localization accuracy. On addressing the shortage of both algorithms, in this paper, we develop a novel hybrid localization scheme, which utilizes the range-based attribute RSSI and the range-free attribute hopsize, to achieve accurate yet low-cost 3D localization. As anchor node deployment strategy plays an important role in improving the localization accuracy, an anchor node configuration scheme is also developed in this work by utilizing the MIS (maximal independent set) of a network. With proper anchor node configuration and propagation model selection, using simulations, we show that our proposed algorithm improves the localization accuracy by 38.9% compared with 3D DV-HOP and 52.7% compared with 3D centroid
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