12 research outputs found
A Survey on Virtualization of Wireless Sensor Networks
Wireless Sensor Networks (WSNs) are gaining tremendous importance thanks to their broad range of commercial applications such as in smart home automation, health-care and industrial automation. In these applications multi-vendor and heterogeneous sensor nodes are deployed. Due to strict administrative control over the specific WSN domains, communication barriers, conflicting goals and the economic interests of different WSN sensor node vendors, it is difficult to introduce a large scale federated WSN. By allowing heterogeneous sensor nodes in WSNs to coexist on a shared physical sensor substrate, virtualization in sensor network may provide flexibility, cost effective solutions, promote diversity, ensure security and increase manageability. This paper surveys the novel approach of using the large scale federated WSN resources in a sensor virtualization environment. Our focus in this paper is to introduce a few design goals, the challenges and opportunities of research in the field of sensor network virtualization as well as to illustrate a current status of research in this field. This paper also presents a wide array of state-of-the art projects related to sensor network virtualization
Container-Based Virtualization for Bluetooth Low Energy Sensor Devices in Internet of Things Applications
Internet of Things (IoT) has become a continuously growing concept with the developments of ubiquitous computing, wireless sensor networks (WSN). With the industry 4.0 revolution, all production activities such as logistics, finance, agriculture, energy and almost all the service and infrastructure applications used by people in the cities we live in will undergo a major change within the IoT paradigm. In this study, a prototype model has been developed and its performance is investigated. Our prototype model can reach the advertisement data of Bluetooth Low Energy sensor devices by using container-based virtualization technology and directly working at layer 2 (L2) of Transmission Control Protocol/Internet Protocol (TCP/IP). Virtualization mechanism for the sensor devices could help to exchange context-aware information with Internet Protocol Version 6 (IPv6) structure. Also with virtualization may emerge interoperable sensor node platforms of heterogeneous environments from different vendors
Economic Feasibility of Wireless Sensor Network-Based Service Provision in a Duopoly Setting with a Monopolist Operator
[EN] We analyze the feasibility of providing Wireless Sensor Network-data-based services in an
Internet of Things scenario from an economical point of view. The scenario has two competing service
providers with their own private sensor networks, a network operator and final users. The scenario
is analyzed as two games using game theory. In the first game, sensors decide to subscribe or not
to the network operator to upload the collected sensing-data, based on a utility function related to
the mean service time and the price charged by the operator. In the second game, users decide to
subscribe or not to the sensor-data-based service of the service providers based on a Logit discrete
choice model related to the quality of the data collected and the subscription price. The sinks and
users subscription stages are analyzed using population games and discrete choice models, while
network operator and service providers pricing stages are analyzed using optimization and Nash
equilibrium concepts respectively. The model is shown feasible from an economic point of view for
all the actors if there are enough interested final users and opens the possibility of developing more
efficient models with different types of services.This work was supported by the Spanish Ministry of Economy and Competitiveness through projects TIN2013-47272-C2-1-R and (co-supported by the European Social Fund) BES-2014-068998.Sanchis-Cano, Ă.; Romero-Chavarro, JC.; Sacoto-Cabrera, E.; Guijarro, L. (2017). Economic Feasibility of Wireless Sensor Network-Based Service Provision in a Duopoly Setting with a Monopolist Operator. Sensors. 17 (12)(2727):1-22. https://doi.org/10.3390/s17122727S12217 (12)272
Trust and Privacy Solutions Based on Holistic Service Requirements
The products and services designed for Smart Cities provide the necessary tools to improve the management of modern cities in a more efficient way. These tools need to gather citizensâ information about their activity, preferences, habits, etc. opening up the possibility of tracking them. Thus, privacy and security policies must be developed in order to satisfy and manage the legislative heterogeneity surrounding the services provided and comply with the laws of the country where they are provided. This paper presents one of the possible solutions to manage this heterogeneity, bearing in mind these types of networks, such as Wireless Sensor Networks, have important resource limitations. A knowledge and ontology management system is proposed to facilitate the collaboration between the business, legal and technological areas. This will ease the implementation of adequate specific security and privacy policies for a given service. All these security and privacy policies are based on the information provided by the deployed platforms and by expert system processing
Wireless Sensor Network Virtualization: A Survey
Wireless Sensor Networks (WSNs) are the key components of the emerging
Internet-of-Things (IoT) paradigm. They are now ubiquitous and used in a
plurality of application domains. WSNs are still domain specific and usually
deployed to support a specific application. However, as WSN nodes are becoming
more and more powerful, it is getting more and more pertinent to research how
multiple applications could share a very same WSN infrastructure.
Virtualization is a technology that can potentially enable this sharing. This
paper is a survey on WSN virtualization. It provides a comprehensive review of
the state-of-the-art and an in-depth discussion of the research issues. We
introduce the basics of WSN virtualization and motivate its pertinence with
carefully selected scenarios. Existing works are presented in detail and
critically evaluated using a set of requirements derived from the scenarios.
The pertinent research projects are also reviewed. Several research issues are
also discussed with hints on how they could be tackled.Comment: Accepted for publication on 3rd March 2015 in forthcoming issue of
IEEE Communication Surveys and Tutorials. This version has NOT been
proof-read and may have some some inconsistencies. Please refer to final
version published in IEEE Xplor
MODELING AND RESOURCE ALLOCATION IN MOBILE WIRELESS NETWORKS
We envision that in the near future, just as Infrastructure-as-a-Service (IaaS), radios and radio resources in a wireless network can also be provisioned as a service to Mobile Virtual Network Operators (MVNOs), which we refer to as Radio-as-a-Service (RaaS). In this thesis, we present a novel auction-based model to enable fair pricing and fair resource allocation according to real-time needs of MVNOs for RaaS. Based on the proposed model, we study the auction mechanism design with the objective of maximizing social welfare. We present an Integer Linear Programming (ILP) and Vickrey-Clarke-Groves (VCG) based auction mechanism for obtaining optimal social welfare. To reduce time complexity, we present a polynomial-time greedy mechanism for the RaaS auction. Both methods have been formally shown to be truthful and individually rational.
Meanwhile, wireless networks have become more and more advanced and complicated, which are generating a large amount of runtime system statistics. In this thesis, we also propose to leverage the emerging deep learning techniques for spatiotemporal modeling and prediction in cellular networks, based on big system data. We present a hybrid deep learning model for spatiotemporal prediction, which includes a novel autoencoder-based deep model for spatial modeling and Long Short-Term Memory units (LSTMs) for temporal modeling. The autoencoder-based model consists of a Global Stacked AutoEncoder (GSAE) and multiple Local SAEs (LSAEs), which can offer good representations for input data, reduced model size, and support for parallel and application-aware training.
Mobile wireless networks have become an essential part in wireless networking with the prevalence of mobile device usage. Most mobile devices have powerful sensing capabilities. We consider a general-purpose Mobile CrowdSensing(MCS) system, which is a multi-application multi-task system that supports a large variety of sensing applications.
In this thesis, we also study the quality of the recruited crowd for MCS, i.e., quality of services/data each individual mobile user and the whole crowd are potentially capable of providing. Moreover, to improve flexibility and effectiveness, we consider fine-grained MCS, in which each sensing task is divided into multiple subtasks and a mobile user may make contributions to multiple subtasks. More specifically, we first introduce mathematical models for characterizing the quality of a recruited crowd for different sensing applications. Based on these models, we present a novel auction formulation for quality-aware and fine- grained MCS, which minimizes the expected expenditure subject to the quality requirement of each subtask. Then we discuss how to achieve the optimal expected expenditure, and present a practical incentive mechanism to solve the auction problem, which is shown to have the desirable properties of truthfulness, individual rationality and computational efficiency.
In a MCS system, a sensing task is dispatched to many smartphones for data collections; in the meanwhile, a smartphone undertakes many different sensing tasks that demand data from various sensors. In this thesis, we also consider the problem of scheduling different sensing tasks assigned to a smartphone with the objective of minimizing sensing energy consumption while ensuring Quality of SenSing (QoSS). First, we consider a simple case in which each sensing task only requests data from a single sensor. We formally define the corresponding problem as the Minimum Energy Single-sensor task Scheduling (MESS) problem and present a polynomial-time optimal algorithm to solve it. Furthermore, we address a more general case in which some sensing tasks request multiple sensors to re- port their measurements simultaneously. We present an Integer Linear Programming (ILP) formulation as well as two effective polynomial-time heuristic algorithms, for the corresponding Minimum Energy Multi-sensor task Scheduling (MEMS) problem.
Numerical results are presented to confirm the theoretical analysis of our schemes, and to show strong performances of our solutions, compared to several baseline methods
Power-Aware Planning and Design for Next Generation Wireless Networks
Mobile network operators have witnessed a transition from being voice dominated to video/data domination, which leads to a dramatic traffic growth over the past decade. With the 4G wireless communication systems being deployed in the world most recently, the fifth generation (5G) mobile and wireless communica- tion technologies are emerging into research fields. The fast growing data traffic volume and dramatic expansion of network infrastructures will inevitably trigger tremendous escalation of energy consumption in wireless networks, which will re- sult in the increase of greenhouse gas emission and pose ever increasing urgency on the environmental protection and sustainable network development. Thus, energy-efficiency is one of the most important rules that 5G network planning and design should follow.
This dissertation presents power-aware planning and design for next generation wireless networks. We study network planning and design problems in both offline planning and online resource allocation. We propose approximation algo- rithms and effective heuristics for various network design scenarios, with different wireless network setups and different power saving optimization objectives. We aim to save power consumption on both base stations (BSs) and user equipments (UEs) by leveraging wireless relay placement, small cell deployment, device-to- device communications and base station consolidation.
We first study a joint signal-aware relay station placement and power alloca- tion problem with consideration for multiple related physical constraints such as channel capacity, signal to noise ratio requirement of subscribers, relay power and
network topology in multihop wireless relay networks. We present approximation schemes which first find a minimum number of relay stations, using maximum transmit power, to cover all the subscribers meeting each SNR requirement, and then ensure communications between any subscriber and a base station by ad- justing the transmit power of each relay station. In order to save power on BS, we propose a practical solution and offer a new perspective on implementing green wireless networks by embracing small cell networks. Many existing works have proposed to schedule base station into sleep to save energy. However, in reality, it is very difficult to shut down and reboot BSs frequently due to nu- merous technical issues and performance requirements. Instead of putting BSs into sleep, we tactically reduce the coverage of each base station, and strategi- cally place microcells to offload the traffic transmitted to/from BSs to save total power consumption.
In online resource allocation, we aim to save tranmit power of UEs by en- abling device-to-device (D2D) communications in OFDMA-based wireless net- works. Most existing works on D2D communications either targeted CDMA- based single-channel networks or aimed at maximizing network throughput. We formally define an optimization problem based on a practical link data rate model, whose objective is to minimize total power consumption while meeting user data rate requirements. We propose to solve it using a joint optimization approach by presenting two effective and efficient algorithms, which both jointly determine mode selection, channel allocation and power assignment.
In the last part of this dissertation, we propose to leverage load migration and base station consolidation for green communications and consider a power- efficient network planning problem in virtualized cognitive radio networks with the objective of minimizing total power consumption while meeting traffic load demand of each Mobile Virtual Network Operator (MVNO). First we present a
Mixed Integer Linear Programming (MILP) to provide optimal solutions. Then we present a general optimization framework to guide algorithm design, which solves two subproblems, channel assignment and load allocation, in sequence. In addition, we present an effective heuristic algorithm that jointly solves the two subproblems.
Numerical results are presented to confirm the theoretical analysis of our schemes, and to show strong performances of our solutions, compared to several baseline methods
Data Annotation and Ontology Provisioning for Semantic Applications in Virtualized Wireless Sensor Networks
In recent years, virtualization in Wireless Sensor Networks (WSNs) has become very popular for many reasons including efficient resource management, proper sharing and using the same WSN physical infrastructure by multiple applications and services. Semantic applications are very much pertinent to provide situational awareness to the end-users. Incorporating semantic applications in the virtualized WSNs can play a crucial role in providing contextual information to understand the situation, increase usability and interoperability. However, provisioning of semantic applications in virtualized WSNs remains as a big challenge. The reason is the data collected by the virtual sensors needs to be annotated in-network, and the pre-requisite of the data annotation process is to have an ontology that needs to be provisioned, i.e., developed, deployed and managed. Unfortunately, annotating sensor data and ontology provisioning in virtualized WSNs is not straightforward because of limited resources of sensors, on-demand creation of virtual sensors, and unpredictable lifetime. As the existing researches do not consider data annotation in virtualized WSN infrastructure level, these solutions are domain specific and lack of providing support for multiple applications. Moreover, the major drawback of the current ontology provisioning mechanisms requires domain experts to develop, deploy, and manage the ontologies in WSNs. This thesis aims to propose a solution for provisioning of multiple semantic applications in the virtualized WSNs.
The main contribution of this thesis is twofold. First, we have proposed an architecture to annotate sensor data in the virtualized WSN infrastructure and defined an ontology in sensor domain to perform data annotation. Second, we have proposed an architecture for provisioning ontology in the virtualized WSNs that consists of an ontology provisioning center, an ontology-enabled virtualized WSN, and an ontology deployment protocol. The proposed architectures use overlay network as a foundation. We have built a proof-of-concept prototype for a semantic wildfire monitoring application in the cloud environment using the Google App Engine. In order to evaluate the viability of the proposed architecture, we have made performance measurement of the implemented prototype. We ran a simulation to justify our proposed ontology provisioning protocol