Distributed Estimation In The Mit Ll Massachusetts Institute Of Technology Lincoln Laboratory Dsn Distributed Sensor Networks Test Bed PDF Download

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Distributed Estimation in the MIT/LL (Massachusetts Institute of Technology/Lincoln Laboratory) DSN (Distributed Sensor Networks) Test-Bed

Distributed Estimation in the MIT/LL (Massachusetts Institute of Technology/Lincoln Laboratory) DSN (Distributed Sensor Networks) Test-Bed
Author: J. R. Delaney
Publisher:
Total Pages: 6
Release: 1983
Genre:
ISBN:

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This paper describes the acoustic tracking algorithms currently used in the MIT Lincoln Laboratory (MIT/LL) Distributed Sensor Networks (DSN) test-bed. It discusses the original motivation for inclusion of various features in those algorithms and the lessons learned about those features through experimentation with real and simulated data. Plans for modifications to the detection and tracking algorithms are briefly sketched. A DSN is a surveillance and tracking system employing many geographically dispersed sensor/processor nodes connected by a computer communications network and implemented as a confederacy of identical autonomous cooperating processes.


New Results and New Trends in Computer Science

New Results and New Trends in Computer Science
Author: Hermann Maurer
Publisher: Springer Science & Business Media
Total Pages: 420
Release: 1991-11-13
Genre: Computers
ISBN: 9783540548690

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This volume contains selected papers from the symposium "New Results and NewTrends in Computer Science" held in Graz, Austria, June 20-21, 1991. The symposium was organized to give a wide-ranging overview of new work in the field on the occasion of the fiftieth birthday of the editor of the volume. Topics covered include: information on neural nets, ideas on a new paradigm for informatics, hypermedia systems and applications, axioms for concurrent processes, techniques for image generation and compression, the role of data visualization, object-oriented programming andgraphics, algorithms for layout compaction, new methods in database systems, the future of data networks, object-oriented artificial intelligence, problems in data structures and sorting, aspects of user interfaces, a theory of structures, applications of cryptography, evaluation of Ada, results in algorithmic geometry, remarks on the history of computers, and a novel interpretation of machine learning. In total, the 26 high-level contributions authored by prominent experts from all over the world give an up-to-date survey of almost all subfields of computer science. The book is written in a style which is easy to follow, and it is of interest for any computer scientist, be it in research, teaching or practice.


Government Reports Annual Index

Government Reports Annual Index
Author:
Publisher:
Total Pages: 1138
Release: 1984
Genre: Research
ISBN:

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Sections 1-2. Keyword Index.--Section 3. Personal author index.--Section 4. Corporate author index.-- Section 5. Contract/grant number index, NTIS order/report number index 1-E.--Section 6. NTIS order/report number index F-Z.


Distributed Estimation in Large-Scale Networks

Distributed Estimation in Large-Scale Networks
Author: Jian Du
Publisher: Open Dissertation Press
Total Pages:
Release: 2017-01-26
Genre:
ISBN: 9781361337578

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This dissertation, "Distributed Estimation in Large-scale Networks: Theories and Applications" by Jian, Du, 杜健, was obtained from The University of Hong Kong (Pokfulam, Hong Kong) and is being sold pursuant to Creative Commons: Attribution 3.0 Hong Kong License. The content of this dissertation has not been altered in any way. We have altered the formatting in order to facilitate the ease of printing and reading of the dissertation. All rights not granted by the above license are retained by the author. Abstract: Parameter estimation plays a key role in many signal processing applications. Traditional parameter estimation relies on centralized method which requires gathering of all information dispersed over the network in a central processing unit. As the scale of network increases, centralized estimation is not preferred since it requires not only the knowledge of network topology but also heavy communications from peripheral nodes to central processing unit. Besides, computation at the control center cannot scale indefinitely with the network size. Therefore, distributed estimation which involves only local computation at each node and limited information exchanges between immediate neighbouring nodes is needed. In this thesis, for local observations in the form of a pairwise linear model corrupted by Gaussian noise, belief propagation (BP) algorithm is investigated to perform distributed estimation. It involves only iterative updating of the estimates with local message exchange between immediate neighboring nodes. Since convergence has always been the biggest concern when using BP, we establish the convergence properties of asynchronous vector form Gaussian BP under the pairwise model. It is shown analytically that under mild condition, the asynchronous BP algorithm converges to the optimal estimates with estimation mean square error (MSE) at each node approaching the centralized Bayesian Cramer-Rao bound (BCRB) regardless of the network topology. The proposed framework encompasses both classes of synchronous and asynchronous algorithms for distributed estimation and is robust to random link failures. Two challenging parameter estimation problems in large-scale networks, i.e., network-wide distributed carrier frequency offsets (CFOs) estimation, and global clock synchronization in sensor network, are studied based on BP. The proposed algorithms do not require any centralized information processing nor knowledge of the global network topology and are scalable with the network size. Simulation results further verify the established theoretical analyses: the proposed algorithms always converge to the optimal estimates regardless of network topology. Simulations also demonstrate the MSE at each node approaches the corresponding centralized CRB within a few iterations of message exchange. Furthermore, distributed estimation is studied for the linear model with unknown coefficients. Such problem itself is challenging even for centralized estimation as the nonlinear property of the observation model. One problem following this model is the power state estimation with unknown sampling phase error. In this thesis, distributed estimation scheme is proposed based on variational inference with parallel update schedule and limited message exchange between neighboring areas, and the convergence is guaranteed. Simulation results show that after convergence the proposed algorithm performs very close to that of the ideal case which assumes perfect synchronization, and centralized information processing. DOI: 10.5353/th_b5185928 Subjects: Parameter estimation Computer networks


Applied State Estimation and Association

Applied State Estimation and Association
Author: Chaw-Bing Chang
Publisher: MIT Press
Total Pages: 473
Release: 2023-08-15
Genre: Technology & Engineering
ISBN: 0262548917

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A rigorous introduction to the theory and applications of state estimation and association, an important area in aerospace, electronics, and defense industries. Applied state estimation and association is an important area for practicing engineers in aerospace, electronics, and defense industries, used in such tasks as signal processing, tracking, and navigation. This book offers a rigorous introduction to both theory and application of state estimation and association. It takes a unified approach to problem formulation and solution development that helps students and junior engineers build a sound theoretical foundation for their work and develop skills and tools for practical applications. Chapters 1 through 6 focus on solving the problem of estimation with a single sensor observing a single object, and cover such topics as parameter estimation, state estimation for linear and nonlinear systems, and multiple model estimation algorithms. Chapters 7 through 10 expand the discussion to consider multiple sensors and multiple objects. The book can be used in a first-year graduate course in control or system engineering or as a reference for professionals. Each chapter ends with problems that will help readers to develop derivation skills that can be applied to new problems and to build computer models that offer a useful set of tools for problem solving. Readers must be familiar with state-variable representation of systems and basic probability theory including random and stochastic processes.