Data fusion algorithms wireless sensor networks book

Wireless sensor networks are used to monitor wine production, both in the field and the cellar. Algorithms for position and data recovery in wireless sensor networks by lance doherty research project submitted to the department of electrical engineering and computer sciences, university of california at berkeley, in partial satisfaction of the requirements for the degree of master of science, plan ii. Sep 02, 2005 the state of the art of sensor networks written by an international team of recognized experts in sensor networks from prestigious organizations such as motorola, fujitsu, the massachusetts institute of technology, cornell university, and the university of illinois, handbook of sensor networks. A new data fusion algorithm for wireless sensor networks inspired. The term uncertainty reduction in this case can mean more accurate, more complete, or more dependable, or refer to the result of an emerging view, such as stereoscopic vision calculation. These are similar to wireless ad hoc networks in the sense that.

Wireless sensor network wsn refers to a group of spatially dispersed and dedicated sensors for monitoring and recording the physical conditions of the environment and organizing the collected data at a central location. Direct fusion is the fusion of sensor data from a set of heterogeneous or homogeneous sensors, soft sensors, and history values of sensor data, while indirect fusion uses information sources like a priori knowledge about the environment and human input. The paper a clusterbased fuzzy fusion algorithm for event detection in heterogeneous wireless sensor networks proposes a clusterbased data fusion algorithm for event detection. Download for offline reading, highlight, bookmark or take notes while you read resourceaware data fusion algorithms for wireless sensor networks. A wireless sensor network wsn in its simplest form can be defined as a network of devices denoted as nodesthat can sense the environment and communicate the information gathered from the monitored field through wireless links. This chapter deals with a wireless sensor and actuator network wsan and its main characteristics.

Multisensor was needed while using data fusion technique in wireless sensor networks. The algorithms described in this book are evaluated with. A scheme for robust distributed sensor fusion based on. Low complexity indoor localization in wireless sensor. Data fusion privacy preserving algorithm based on failure. This book introduces resourceaware data fusion algorithms to gather and combine data from multiple sources e. Varshney, geographic routing in wireless ad hoc networks, book chapter, guide to wireless ad hoc. The objective of this book is to explain state of the art theory and algorithms into statistical sensor fusion, covering estimation, detection and nonlinear filtering theory with. An intelligent data gathering schema with data fusion supported for. In this section we discussed about some published techniques related to the data fusion. Theory and practice incorporates concepts, processes, methods, and approaches in data fusion that can help you with integrating df mathematics. With recursive least square method in the algorithm, the dynamic model of sensor was built up, and the achievement of data fusion between sensors measure value and estimate value increased the measure precision.

Wireless sensor data fusion algorithm based on the sensor. Introduction recent years have witnessed the deployments of wireless sensor networks wsns for many critical applications such as security surveillance 16, environmental monitoring 25, and target detectiontracking 21. This paper proposes a novel clusterbased data fusion algorithm for wsn. With the feature of large amount of data for wireless sensor networks, high data redundancy and low energy of nodes, we propose the sensor nodes data fusion. Wsns measure environmental conditions like temperature, sound, pollution levels, humidity, wind, and so on.

Resourceaware data fusion algorithms for wireless sensor networks. An approach to implement data fusion techniques in. Therefore, energy consumption in wireless sensor networks is one of the most challenging problems in practice. Bougiouklis naval postgraduate school department of electrical engineering 833 dyer road, monterey, ca 93943.

Multi sensor was needed while using data fusion technique in wireless sensor networks. Unfortunately, this ratio is heavily dependent on application scenarios. The limitation of sensor nodes energy necessitates that energy saving is a key issue in wsn. Algorithms and protocols for wireless sensor networks. This edited book has dealt with data fusion in wireless sensor networks wsns from a statistical signalprocessing perspective. Sensor fusion is also known as multi sensor data fusion and is a subset of information fusion. This book describes the advanced tools required to design stateoftheart inference algorithms for inference in wireless sensor networks. A data fusion algorithm of single sensor was proposed in the paper. Novel algorithm for identifying and fusing conflicting data. Algorithms and architectures tackles important challenges and presents the latest trends and. Data fusion algorithms in clusterbased wireless sensor.

The distinguishing aspect of our work is the novel use of fuzzy. However, the appearance of conflicting evidence results in a series of problems when conducting fusion using the ds theory. Varshney, image registration using mutual information. Describes techniques to overcome real problems posed by wireless sensor networks deployed in circumstances that might interfere with measurements provided, such as strong. Algorithms for position and data recovery in wireless. Much more sophisticated algorithms for distributed detection, estimation and inference in sensor networks have been studied.

Pdf data fusion techniques in wireless sensor networks. Wireless sensor networks wsns are formed of various nodes that gather. With recursive least square method in the algorithm, the dynamic model of sensor was built up, and the achievement of data fusion between sensor s measure value and estimate value increased the measure precision. Eventually each node has all the data in the network, and thus can act as a fusion center to obtain ml. A bayesian approach to data fusion in sensor networks zhiyuan weng, petar m. The authors use k means algorithm to form the nodes into clusters, which can significantly reduce the energy consumption of intracluster communication. A data fusion method in wireless sensor networks mdpi. Paying particular attention to the wide range of topics that have been covered in recent literature, the text presents the results of a number of typical case studies. Resourceaware data fusion algorithms for wireless sensor networks ebook written by ahmed abdelgawad, magdy bayoumi. Novel features of the text, distributed throughout, include workable solutions, demonstration systems and case studies of the design and application of wireless. The book instills a deeper understanding of the basics of multisensor data fusion as well as a practical knowledge of. Varshney, geographic routing in wireless ad hoc networks, book chapter, guide to wireless ad hoc networks, springer, 2008.

Resourceaware data fusion algorithms for wireless sensor networks 118 by magdy bayoumi and ahmed abdelgawad 2014, paperback at the best online. In this paper an algorithm of data fusion to track both of nonmaneuvering and maneuvering targets with mobile sensors deployed in an wsn wireless sensor network is proposed and investigated. On the other hand, serial data fusion imposes the utilization of routing algorithms. Wireless sensor networks presents the latest practical solutions to the design issues presented in wirelesssensornetworkbased systems. The success of a wireless sensor network wsn deployment strongly depends on the quality of service qos it provides regarding issues such as data accuracy, data aggregation delays and network lifetime maximisation. Elsewhere the area of statistical signal processing provides a powerful toolbox to attack bothering theoretical and practical problems. An approach to implement data fusion techniques in wireless. The algorithms described in this book are evaluated with simulation and experimental. Wireless sensor networks, algorithms, routing, coverage, fusion.

These techniques can be used in centralized and distributed systems to overcome sensor failure, technological limitation, and spatial and. Algorithms and protocols for wireless sensor networks november 2008. In this edited reference, the authors provide advanced tools for the design, analysis and. Pdf a data fusion method in wireless sensor networks. Sensor fusion is combining of sensory data or data derived from disparate sources such that the resulting information has less uncertainty than would be possible when these sources were used individually. In the field of multi sensor data fusion, the ds theory is a popular method to express and fuse the uncertainty information, and is especially suitable for decision level fusion. Discusses information filtering, bayesian approaches, several df rules, image algebra and image fusion, decision fusion, and wireless sensor network wsn multimodality fusion. Bayesian approach for data fusion in sensor networks j. Pdf the success of a wireless sensor network wsn deployment strongly.

It presents the known methods, algorithms, architectures, and models of information fusion and discusses their applicability in the context of wireless sensor networks wsns. This work proposes an algorithm for hybrid positioning in wireless sensor networks based on data fusion of uwb and inertial information. Magdy a bayoumi this book introduces resourceaware data fusion algorithms that generate inferences by combining data from multiple sourcestechniques useful in centralized and distributed systems to overcome sensor. Novel algorithm for identifying and fusing conflicting. Path exposure, target location, classification and tracking in sensor networks kousha moaveninejad, and xiangyang li. Data fusion improves the coverage of wireless sensor.

Data mining and fusion techniques for wsns as a source of the. In 15, a variable weightbased fuzzy data fusion algorithm is proposed. These techniques can be used in centralized and distributed systems to overcome sensor failure, technological limitation, and spatial and temporal coverage problems. A fuzzy data fusion solution to enhance the qos and the energy. The effective use of data fusion in sensor networks is not new and has had extensive application to surveillance, security, traffic control, health care, environmental and industrial monitoring in the last decades. The wireless sensor network wsn is mainly composed of a large number of sensor nodes that are equipped with limited energy and resources. Written for the signal processing, communications, sensors and information fusion research communities, it covers the emerging area of data fusion in. Data fusion in wireless sensor networks a statistical. Gaucho project aspires at designing a novel distributed and. Bayesian approach for data fusion in sensor networks. Written for the signal processing, communications, sensors and information fusion research communities, it covers the emerging area of data fusion in wireless sensor networks.

Wireless sensor networks presents the latest practical solutions to the design issues presented in wireless sensor networkbased systems. This method can require a large amount of data communication, storage memory, and book keeping overhead. The characteristics such as high reliability, high scalability, fault tolerance, low cost and rapid deployment make wireless sensor networks wsn useful in many military and civilian applications. A new data fusion algorithm for wireless sensor networks. Data fusion improves the coverage of wireless sensor networks. On the other hand, data fusion can effectively decrease data redundancy, reduce the amount of data transmission and energy consumption in the. The algorithms described in this book are evaluated with simulation and experimental results to show they will maintain data integrity and make data useful and informative. The iet shop data fusion in wireless sensor networks. The book instills a deeper understanding of the basics of multisensor data fusion as well as a practical knowledge of the problems that can be faced during its execution. Varshney, multiobjective evolutionary algorithms for wireless sensor network design, multiobjective optimization in computational intelligence. Resourceaware data fusion algorithms for wireless sensor. There is continuously increasing interest in research on multisensor data fusion technology. Energyefficient data fusion technique and applications in. A novel clusterbased data fusion algorithm for wireless.

Lecture notes in electrical engineering book 118 thanks for sharing. For the sake of avoiding the data abundance and balancing the energy consumption in wireless sensor networks, a data fusion clustering hierarchy based on data fusion chdf is proposed. This is especially challenging in data fusion mechanisms, where a small fraction of low quality data in the fusion input may negatively impact the overall fusion result. In particular, for signal path loss exponent of k typically between 2. Clustering based data collection using data fusion in. Magdy bayoumi this book introduces resourceaware data fusion algorithms to gather and combine data from multiple sources e. Because dempsters rule of combination can be problematic when dealing with conflicting data, there are numerous issues that make data fusion a challenging.

Many studies adopt the metaheuristic algorithm for better routing. Algorithms for position and data recovery in wireless sensor. Datacentric protocols for wireless sensor networks ivan stojmenovic and stephan olariu. Resourceaware data fusion algorithms for wireless sensor networks 118 by magdy bayoumi and ahmed abdelgawad 2014, paperback at the best online prices at ebay. Data fusion, target detection, coverage, performance limits, wireless sensor network 1. We focus on sensor deployment and coverage, routing and sensor fusion. In addition, the gating technique is also applied to solve the problem of msdft mobilesensor data fusion tracking for targets, i.

We show that data fusion can significantly improve sensing coverage by exploiting the collaboration among sensors. Department of electrical and computer engineering stony brook university, stony brook, new york 11794 phone. Novel features of the text, distributed throughout, include workable solutions, demonstration systems and case studies of the design and application of wireless sensor networks wsns based on the firsthand research and development experience of the author. The state of the art of sensor networks written by an international team of recognized experts in sensor networks from prestigious organizations such as motorola, fujitsu, the massachusetts institute of technology, cornell university, and the university of illinois, handbook of sensor networks. Wireless sensor networks can be used to monitor the condition of civil infrastructure and related geophysical processes close to real time, and over long periods through data logging, using appropriately interfaced sensors. Ahmed abdelgawad, magdy bayoumi resourceaware data fusion algorithms for wireless sensor networks published. Wireless sensor and actuator networks sciencedirect. An algorithm of mobile sensors data fusion tracking for. Data fusion among the same type of sensors in an active sensor.

A data fusion method in wireless sensor networks ncbi. In this paper, we present a novel level based path. Data gathering and fusion in sensor networks weipeng chen and jennifer hou. Keywords wireless sensor networks, distributed data fusion, neural. From algorithms and architectural design to applications is a robust collection of modern multisensor data fusion methodologies. The role of data fusion has been expanding in recent years through the incorporation of pervasive applications, where the physical infrastructure is coupled with information and communication technologies, such as wireless sensor networks for the internet of things iot, ehealth and industry 4.

1187 101 1230 231 1461 1513 60 91 307 103 314 845 1238 1036 592 590 167 321 1128 1177 964 1302 753 149 1187 946 361 1178 333 380 778 476