3,091 research outputs found

    An efficient genetic algorithm for large-scale planning of robust industrial wireless networks

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    An industrial indoor environment is harsh for wireless communications compared to an office environment, because the prevalent metal easily causes shadowing effects and affects the availability of an industrial wireless local area network (IWLAN). On the one hand, it is costly, time-consuming, and ineffective to perform trial-and-error manual deployment of wireless nodes. On the other hand, the existing wireless planning tools only focus on office environments such that it is hard to plan IWLANs due to the larger problem size and the deployed IWLANs are vulnerable to prevalent shadowing effects in harsh industrial indoor environments. To fill this gap, this paper proposes an overdimensioning model and a genetic algorithm based over-dimensioning (GAOD) algorithm for deploying large-scale robust IWLANs. As a progress beyond the state-of-the-art wireless planning, two full coverage layers are created. The second coverage layer serves as redundancy in case of shadowing. Meanwhile, the deployment cost is reduced by minimizing the number of access points (APs); the hard constraint of minimal inter-AP spatial paration avoids multiple APs covering the same area to be simultaneously shadowed by the same obstacle. The computation time and occupied memory are dedicatedly considered in the design of GAOD for large-scale optimization. A greedy heuristic based over-dimensioning (GHOD) algorithm and a random OD algorithm are taken as benchmarks. In two vehicle manufacturers with a small and large indoor environment, GAOD outperformed GHOD with up to 20% less APs, while GHOD outputted up to 25% less APs than a random OD algorithm. Furthermore, the effectiveness of this model and GAOD was experimentally validated with a real deployment system

    Coverage Protocols for Wireless Sensor Networks: Review and Future Directions

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    The coverage problem in wireless sensor networks (WSNs) can be generally defined as a measure of how effectively a network field is monitored by its sensor nodes. This problem has attracted a lot of interest over the years and as a result, many coverage protocols were proposed. In this survey, we first propose a taxonomy for classifying coverage protocols in WSNs. Then, we classify the coverage protocols into three categories (i.e. coverage aware deployment protocols, sleep scheduling protocols for flat networks, and cluster-based sleep scheduling protocols) based on the network stage where the coverage is optimized. For each category, relevant protocols are thoroughly reviewed and classified based on the adopted coverage techniques. Finally, we discuss open issues (and recommend future directions to resolve them) associated with the design of realistic coverage protocols. Issues such as realistic sensing models, realistic energy consumption models, realistic connectivity models and sensor localization are covered

    An efficient genetic algorithm for large-scale transmit power control of dense and robust wireless networks in harsh industrial environments

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    The industrial wireless local area network (IWLAN) is increasingly dense, due to not only the penetration of wireless applications to shop floors and warehouses, but also the rising need of redundancy for robust wireless coverage. Instead of simply powering on all access points (APs), there is an unavoidable need to dynamically control the transmit power of APs on a large scale, in order to minimize interference and adapt the coverage to the latest shadowing effects of dominant obstacles in an industrial indoor environment. To fulfill this need, this paper formulates a transmit power control (TPC) model that enables both powering on/off APs and transmit power calibration of each AP that is powered on. This TPC model uses an empirical one-slope path loss model considering three-dimensional obstacle shadowing effects, to enable accurate yet simple coverage prediction. An efficient genetic algorithm (GA), named GATPC, is designed to solve this TPC model even on a large scale. To this end, it leverages repair mechanism-based population initialization, crossover and mutation, parallelism as well as dedicated speedup measures. The GATPC was experimentally validated in a small-scale IWLAN that is deployed a real industrial indoor environment. It was further numerically demonstrated and benchmarked on both small- and large-scales, regarding the effectiveness and the scalability of TPC. Moreover, sensitivity analysis was performed to reveal the produced interference and the qualification rate of GATPC in function of varying target coverage percentage as well as number and placement direction of dominant obstacles. (C) 2018 Elsevier B.V. All rights reserved

    Development of a GIS-based method for sensor network deployment and coverage optimization

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    Au cours des derniĂšres annĂ©es, les rĂ©seaux de capteurs ont Ă©tĂ© de plus en plus utilisĂ©s dans diffĂ©rents contextes d’application allant de la surveillance de l’environnement au suivi des objets en mouvement, au dĂ©veloppement des villes intelligentes et aux systĂšmes de transport intelligent, etc. Un rĂ©seau de capteurs est gĂ©nĂ©ralement constituĂ© de nombreux dispositifs sans fil dĂ©ployĂ©s dans une rĂ©gion d'intĂ©rĂȘt. Une question fondamentale dans un rĂ©seau de capteurs est l'optimisation de sa couverture spatiale. La complexitĂ© de l'environnement de dĂ©tection avec la prĂ©sence de divers obstacles empĂȘche la couverture optimale de plusieurs zones. Par consĂ©quent, la position du capteur affecte la façon dont une rĂ©gion est couverte ainsi que le coĂ»t de construction du rĂ©seau. Pour un dĂ©ploiement efficace d'un rĂ©seau de capteurs, plusieurs algorithmes d'optimisation ont Ă©tĂ© dĂ©veloppĂ©s et appliquĂ©s au cours des derniĂšres annĂ©es. La plupart de ces algorithmes reposent souvent sur des modĂšles de capteurs et de rĂ©seaux simplifiĂ©s. En outre, ils ne considĂšrent pas certaines informations spatiales de l'environnement comme les modĂšles numĂ©riques de terrain, les infrastructures construites humaines et la prĂ©sence de divers obstacles dans le processus d'optimisation. L'objectif global de cette thĂšse est d'amĂ©liorer les processus de dĂ©ploiement des capteurs en intĂ©grant des informations et des connaissances gĂ©ospatiales dans les algorithmes d'optimisation. Pour ce faire, trois objectifs spĂ©cifiques sont dĂ©finis. Tout d'abord, un cadre conceptuel est dĂ©veloppĂ© pour l'intĂ©gration de l'information contextuelle dans les processus de dĂ©ploiement des rĂ©seaux de capteurs. Ensuite, sur la base du cadre proposĂ©, un algorithme d'optimisation sensible au contexte local est dĂ©veloppĂ©. L'approche Ă©largie est un algorithme local gĂ©nĂ©rique pour le dĂ©ploiement du capteur qui a la capacitĂ© de prendre en considĂ©ration de l'information spatiale, temporelle et thĂ©matique dans diffĂ©rents contextes d'applications. Ensuite, l'analyse de l'Ă©valuation de la prĂ©cision et de la propagation d'erreurs est effectuĂ©e afin de dĂ©terminer l'impact de l'exactitude des informations contextuelles sur la mĂ©thode d'optimisation du rĂ©seau de capteurs proposĂ©e. Dans cette thĂšse, l'information contextuelle a Ă©tĂ© intĂ©grĂ©e aux mĂ©thodes d'optimisation locales pour le dĂ©ploiement de rĂ©seaux de capteurs. L'algorithme dĂ©veloppĂ© est basĂ© sur le diagramme de VoronoĂŻ pour la modĂ©lisation et la reprĂ©sentation de la structure gĂ©omĂ©trique des rĂ©seaux de capteurs. Dans l'approche proposĂ©e, les capteurs change leur emplacement en fonction des informations contextuelles locales (l'environnement physique, les informations de rĂ©seau et les caractĂ©ristiques des capteurs) visant Ă  amĂ©liorer la couverture du rĂ©seau. La mĂ©thode proposĂ©e est implĂ©mentĂ©e dans MATLAB et est testĂ©e avec plusieurs jeux de donnĂ©es obtenus Ă  partir des bases de donnĂ©es spatiales de la ville de QuĂ©bec. Les rĂ©sultats obtenus Ă  partir de diffĂ©rentes Ă©tudes de cas montrent l'efficacitĂ© de notre approche.In recent years, sensor networks have been increasingly used for different applications ranging from environmental monitoring, tracking of moving objects, development of smart cities and smart transportation system, etc. A sensor network usually consists of numerous wireless devices deployed in a region of interest. A fundamental issue in a sensor network is the optimization of its spatial coverage. The complexity of the sensing environment with the presence of diverse obstacles results in several uncovered areas. Consequently, sensor placement affects how well a region is covered by sensors as well as the cost for constructing the network. For efficient deployment of a sensor network, several optimization algorithms are developed and applied in recent years. Most of these algorithms often rely on oversimplified sensor and network models. In addition, they do not consider spatial environmental information such as terrain models, human built infrastructures, and the presence of diverse obstacles in the optimization process. The global objective of this thesis is to improve sensor deployment processes by integrating geospatial information and knowledge in optimization algorithms. To achieve this objective three specific objectives are defined. First, a conceptual framework is developed for the integration of contextual information in sensor network deployment processes. Then, a local context-aware optimization algorithm is developed based on the proposed framework. The extended approach is a generic local algorithm for sensor deployment, which accepts spatial, temporal, and thematic contextual information in different situations. Next, an accuracy assessment and error propagation analysis is conducted to determine the impact of the accuracy of contextual information on the proposed sensor network optimization method. In this thesis, the contextual information has been integrated in to the local optimization methods for sensor network deployment. The extended algorithm is developed based on point Voronoi diagram in order to represent geometrical structure of sensor networks. In the proposed approach sensors change their location based on local contextual information (physical environment, network information and sensor characteristics) aiming to enhance the network coverage. The proposed method is implemented in MATLAB and tested with several data sets obtained from Quebec City spatial database. Obtained results from different case studies show the effectiveness of our approach

    Monitoring of Wireless Sensor Networks

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    Pheromone-based In-Network Processing for wireless sensor network monitoring systems

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    Monitoring spatio-temporal continuous fields using wireless sensor networks (WSNs) has emerged as a novel solution. An efficient data-driven routing mechanism for sensor querying and information gathering in large-scale WSNs is a challenging problem. In particular, we consider the case of how to query the sensor network information with the minimum energy cost in scenarios where a small subset of sensor nodes has relevant readings. In order to deal with this problem, we propose a Pheromone-based In-Network Processing (PhINP) mechanism. The proposal takes advantages of both a pheromone-based iterative strategy to direct queries towards nodes with relevant information and query- and response-based in-network filtering to reduce the number of active nodes. Additionally, we apply reinforcement learning to improve the performance. The main contribution of this work is the proposal of a simple and efficient mechanism for information discovery and gathering. It can reduce the messages exchanged in the network, by allowing some error, in order to maximize the network lifetime. We demonstrate by extensive simulations that using PhINP mechanism the query dissemination cost can be reduced by approximately 60% over flooding, with an error below 1%, applying the same in-network filtering strategy.Fil: Riva, Guillermo Gaston. Universidad Nacional de CĂłrdoba. Facultad de Ciencias Exactas, FĂ­sicas y Naturales; Argentina. Universidad TecnolĂłgica Nacional; Argentina. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas. Centro CientĂ­fico TecnolĂłgico Conicet - CĂłrdoba; ArgentinaFil: Finochietto, Jorge Manuel. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas. Centro CientĂ­fico TecnolĂłgico Conicet - CĂłrdoba. Instituto de Estudios Avanzados en IngenierĂ­a y TecnologĂ­a. Universidad Nacional de CĂłrdoba. Facultad de Ciencias Exactas FĂ­sicas y Naturales. Instituto de Estudios Avanzados en IngenierĂ­a y TecnologĂ­a; Argentin
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