Skip to content
You are not logged in |Login  
     
Limit search to available items
Record 4 of 107
Previous Record Next Record
Book Cover
Bestseller
BestsellerE-Book
Author Handte, Marcus, author.

Title Adaptive middleware for the Internet of things : the GAMBAS approach / Marcus Handte, Pedro José Marrón, Gregor Schiele, Manuel Serrano Matoses.

Publication Info. Gistrup, Denmark : River Publishers, [2019]

Copies

Location Call No. Status
 All Libraries - Shared Downloadable Materials  Taylor & Francis Open Access Ebook    Downloadable
All patrons click here to access this title from Taylor & Francis
 University of Saint Joseph: Pope Pius XII Library - Internet  WORLD WIDE WEB E-BOOK TAYLOR&FRANCIS    Downloadable
Please click here to access this TAYLOR&FRANCIS resource
Description 1 online resource (xviii, 224 pages).
Series River Publishers series in communications
River Publishers series in communications.
Bibliography Includes bibliographical references and index.
Contents Front Cover; Half Title Page; RIVER PUBLISHERS SERIES IN COMMUNICATIONS; Title Page -- Adaptive Middleware for the Internet of Things -- The GAMBAS Approach; Copyright Page; Contents; Preface; List of Figures; List of Abbreviations; Chapter 1 -- Introduction; 1.1 Motivation; 1.2 GAMBAS Objectives; 1.3 Application Scenarios; 1.3.1 Mobility Scenario; 1.3.2 Environmental Scenario; 1.4 Overarching Vision; 1.4.1 Smart Cities; 1.4.2 Characteristics; 1.5 State of the Art; 1.5.1 Hardware Technologies; 1.5.1.1 Devices; 1.5.1.2 Communication; 1.5.1.3 Sensing; 1.5.1.4 Classification
1.5.2 Communication Middleware1.5.3 Context Management; 1.5.4 Sensing Applications; 1.6 Innovations; Chapter 2 -- Architecture; 2.1 Static Perspective; 2.1.1 Operational View; 2.1.2 Component View; 2.1.3 Data View; 2.1.3.1 Data Access; 2.1.3.2 Data Representation; 2.1.3.3 Data Dynamics; 2.2 Dynamic Perspective; 2.2.1 Acquisition View; 2.2.1.1 Personal Data Acquisition; 2.2.1.2 Collaborative Data Acquisition; 2.2.2 Processing View; 2.2.2.1 Processing of Public Data; 2.2.2.2 Processing of Shared Data; 2.2.3 Inference View; 2.2.3.1 Local Inferences; 2.2.3.2 Distributed Inferences
2.3 Interface Perspective2.3.1 Storage Interfaces; 2.3.2 Query Interfaces; 2.3.3 Privacy Interfaces; 2.3.4 Control Interfaces; Chapter 3 -- Data Acquisition; 3.1 Focus and Contribution; 3.1.1 Data Acquisition Frameworks; 3.1.2 Rapid Prototyping Tools; 3.1.3 Application-Specific Acquisition; 3.1.4 Contribution; 3.2 Data Acquisition Framework; 3.2.1 Component System; 3.2.1.1 Component Model; 3.2.1.1.1 Components; 3.2.1.1.2 Parameters; 3.2.1.1.3 Ports; 3.2.1.1.4 Connectors; 3.2.1.1.5 Configurations; 3.2.1.2 Runtime System; 3.2.1.2.1 System Structure; 3.2.1.2.2 Configuration Execution
3.2.1.2.3 Platform Support3.2.1.3 Tool Support; 3.2.2 Activation System; 3.2.2.1 Activation Model; 3.2.2.1.1 States; 3.2.2.1.2 Transitions; 3.2.2.2 Runtime System; 3.2.2.2.1 System Structure; 3.2.2.2.2 Configuration Mapping; 3.2.2.2.3 Platform Support; 3.2.2.2.4 Tool Support; 3.3 Data Acquisition Components; 3.3.1 Context Recognition; 3.3.1.1 Location Recognition; 3.3.1.2 Trip Recognition; 3.3.1.3 Sound Recognition; 3.3.1.3.1 Noise Recognition; 3.3.1.3.2 Voice Tagging; 3.3.1.3.3 Voice Control; 3.3.2 Intent Recognition; 3.3.2.1 Duration Prediction; 3.3.2.2 Destination Prediction
3.3.2.3 Prediction AlgorithmChapter 4 -- Data Processing; 4.1 Focus and Contribution; 4.1.1 Data Representation; 4.1.2 Query Processing; 4.1.3 Contribution; 4.2 Data Model; 4.2.1 Data Definition; 4.2.1.1 User Class; 4.2.1.2 Place Class; 4.2.1.3 Activity Class; 4.2.1.4 Journey Class; 4.2.1.5 TravelMode Class; 4.2.1.6 Bus Class; 4.2.1.7 Jogging Class; 4.2.1.8 Shopping Class; 4.2.2 Query Specification; 4.2.2.1 Queries on Users; 4.2.2.2 Queries on Buses; 4.3 Data Discovery; 4.3.1 Architecture; 4.3.2 Metadata Management; 4.3.2.1 Publishing Metadata; 4.3.3 Querying Data Sources
Note 4.3.4 Security and Privacy
Online resource; title from digital title page (viewed on April 16, 2019).
Summary Over the past years, a considerable amount of effort has been devoted, both in industry and academia, towards the development of basic technology as well as innovative applications for the Internet of Things. Adaptive Middleware for the Internet of Things introduces a scalable, interoperable and privacy-preserving approach to realize IoT applications and discusses abstractions and mechanisms at the middleware level that simplify the realization of services that can adapt autonomously to the behavior of their users. Technical topics discussed in the book include:Behavior-driven Autonomous ServicesGAMBAS Middleware ArchitectureGeneric and Efficient Data AcquisitionInteroperable and Scalable Data ProcessingAutomated Privacy PreservationAdaptive Middleware for the Internet of Things summarizes the results of the GAMBAS research project funded by the European Commission under Framework Programme 7. It provides an in-depth description of the middleware system developed by the project consortium. In addition, the book describes several innovative mobility and monitoring applications that have been built, deployed and operated to evaluate the middleware under realistic conditions with a large number of users. Adaptive Middleware for the Internet of Things is ideal for personnel in the computer and communication industries as well as academic staff and research students in computer science interested in the development of systems and applications for the Internet of Things.
Biography Marcus Handte, Pedro José Marrón, Gregor Schiele, Matoses Manuel Serrano
Local Note Taylor & Francis Taylor & Francis eBooks: Open Access
Subject Internet of things.
Middleware.
SCIENCE / Energy.
Internet of things. (OCoLC)fst01894151
Middleware. (OCoLC)fst01020577
Added Author Marrón, Pedro J., author.
Schiele, Gregor, author.
Matoses, Manuel Serrano, author.
Other Form: Print version: Handte, Marcus. Adaptive Middleware for the Internet of Things : The GAMBAS Approach. Aalborg : River Publishers, ©2019 9788793519787
ISBN 879351977X (electronic book)
9788793519770 (electronic book)
9781003336952 (electronic book)
1003336957 (electronic book)
9781000794915 (electronic book : PDF)
1000794911 (electronic book : PDF)
9781000791815 (electronic book : EPUB)
1000791815 (electronic book : EPUB)
9788793519787
8793519788
Standard No. 10.1201/9781003336952 doi
-->
Add a Review