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Model-Based Processing for Underwater Acoustic Arrays electronic resource by Edmund J. Sullivan.

By: Sullivan, Edmund J [author.]Contributor(s): SpringerLink (Online service)Material type: TextTextSeries: SpringerBriefs in PhysicsPublication details: Cham : Springer International Publishing : Imprint: Springer, 2015Description: X, 113 p. 25 illus., 14 illus. in color. online resourceContent type: text Media type: computer Carrier type: online resourceISBN: 9783319175577Subject(s): physics | Oceanography | Remote sensing | Fluids | Geophysics | Acoustical engineering | Physics | Fluid- and Aerodynamics | Signal, Image and Speech Processing | Oceanography | Engineering Acoustics | Geophysics and Environmental Physics | Remote Sensing/PhotogrammetryDDC classification: 532 | 533.62 LOC classification: QC138-168.86QA930Online resources: Click here to access online
Contents:
Part I Introduction and Fundamentals -- Introduction -- Background Information -- Part II Applications -- Model-Based Array Processors: Stationary Arrays -- Model-Based Array Processors: Moving Arrays.
In: Springer eBooksSummary: This monograph presents a unified approach to model-based processing for underwater acoustic arrays. The use of physical models in passive array processing is not a new idea, but it has been used on a case-by-case basis, and as such, lacks any unifying structure. This work views all such processing methods as estimation procedures, which then can be unified by treating them all as a form of joint estimation based on a Kalman-type recursive processor, which can be recursive either in space or time, depending on the application. This is done for three reasons. First, the Kalman filter provides a natural framework for the inclusion of physical models in a processing scheme. Second, it allows poorly known model parameters to be jointly estimated along with the quantities of interest. This is important, since in certain areas of array processing already in use, such as those based on matched-field processing, the so-called mismatch problem either degrades performance or, indeed, prevents any solution at all. Thirdly, such a unification provides a formal means of quantifying the performance improvement. The term model-based will be strictly defined as the use of physics-based models as a means of introducing a priori information. This leads naturally to viewing the method as a Bayesian processor. Short expositions of estimation theory and acoustic array theory are presented, followed by a presentation of the Kalman filter in its recursive estimator form. Examples of applications to localization, bearing estimation, range estimation and model parameter estimation are provided along with experimental results verifying the method. The book is sufficiently self-contained to serve as a guide for the application of model-based array processing for the practicing engineer.
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Part I Introduction and Fundamentals -- Introduction -- Background Information -- Part II Applications -- Model-Based Array Processors: Stationary Arrays -- Model-Based Array Processors: Moving Arrays.

This monograph presents a unified approach to model-based processing for underwater acoustic arrays. The use of physical models in passive array processing is not a new idea, but it has been used on a case-by-case basis, and as such, lacks any unifying structure. This work views all such processing methods as estimation procedures, which then can be unified by treating them all as a form of joint estimation based on a Kalman-type recursive processor, which can be recursive either in space or time, depending on the application. This is done for three reasons. First, the Kalman filter provides a natural framework for the inclusion of physical models in a processing scheme. Second, it allows poorly known model parameters to be jointly estimated along with the quantities of interest. This is important, since in certain areas of array processing already in use, such as those based on matched-field processing, the so-called mismatch problem either degrades performance or, indeed, prevents any solution at all. Thirdly, such a unification provides a formal means of quantifying the performance improvement. The term model-based will be strictly defined as the use of physics-based models as a means of introducing a priori information. This leads naturally to viewing the method as a Bayesian processor. Short expositions of estimation theory and acoustic array theory are presented, followed by a presentation of the Kalman filter in its recursive estimator form. Examples of applications to localization, bearing estimation, range estimation and model parameter estimation are provided along with experimental results verifying the method. The book is sufficiently self-contained to serve as a guide for the application of model-based array processing for the practicing engineer.

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