Download presentation
Presentation is loading. Please wait.
Published byGavin Harper Modified over 9 years ago
1
Generic Adaptive Middleware for Behavior-driven Autonomous Services Generic Adaptive Middleware for Behavior-driven Autonomous Services Universität Duisburg-EssenETRA Investigación y Desarrollo, S. A. National University of Ireland, GalwayThe Open University SpeechConcepts GmbH & Co. KGEmpresa Municipal de Transportes de Madrid, S. A. IERC AC4 SEMANTIC INTEROPERABILITY WORKSHOP IoT Week 2012 Josiane Parreira
2
Generic Adaptive Middleware for Behavior-driven Autonomous Services Generic Adaptive Middleware for Behavior-driven Autonomous Services GAMBAS – Objectives Development of a generic adaptive middleware for behavior- driven autonomous services that encompasses: Models and infrastructures to support the interoperable representation and scalable processing of context. Frameworks and methods to support the generic yet resource-efficient multi-modal recognition of context. Protocols and tools to derive, generalize, and enforce user-specific privacy-policies. Techniques and concepts to optimize the interaction with behavior- driven services. Validation of the middleware using lab tests and a prototype application in the public transportation domain. 2
3
Generic Adaptive Middleware for Behavior-driven Autonomous Services Generic Adaptive Middleware for Behavior-driven Autonomous Services GAMBAS Scenario 3
4
Generic Adaptive Middleware for Behavior-driven Autonomous Services Generic Adaptive Middleware for Behavior-driven Autonomous Services Interoperability issues Heterogeneous devices Heterogeneous data representations Heterogeneous APIs Lack of data semantics describing data meaning Resource constrained devices Sensors, mobile devices Dynamic, frequently changing information e.g., stream data from sensors Large-scale, distributed networks Data needs to be discoverable
5
Generic Adaptive Middleware for Behavior-driven Autonomous Services Generic Adaptive Middleware for Behavior-driven Autonomous Services GAMBAS approach t owards interoperability Linked Data paradigm to describe sensors and data streams Associate meaning to raw data (e.g. feature of interest, accuracy, measuring condition, time point, location, etc. ) Unified, yet flexible data representation Integration with other existing Linked Data infrastructures. Analysis of current sensor semantic descriptions Semantic Sensors Networks ontology Semantic annotations for OGC’s SWE Sensor Model Language Development of required formalisms and ontologies to support semantic descriptions at sensor level
6
Generic Adaptive Middleware for Behavior-driven Autonomous Services Generic Adaptive Middleware for Behavior-driven Autonomous Services GAMBAS approach t owards interoperability Infrastructure to explore data storage and processing capabilities of mobile devices SPARQL-like access down to the sensor level (lightweight) Allow RDF Stream processing Support generation of query execution plans that not only consider network and physical costs but also adapt to the dynamics of the data Means of exchanging the descriptions of the data and devices Allow devices to find relevant data, without knowing a priori the data’s particular location. Develop infrastructures to support the discovery of dynamic data
7
Generic Adaptive Middleware for Behavior-driven Autonomous Services Generic Adaptive Middleware for Behavior-driven Autonomous Services References D. Bimschas, H. Hasemann, M. Hauswirth, M. Karnstedt, O. Kleine, A. Kröller, M. Leggieri, R. Mietz, A. Passant, D. Pfisterer, K. Römer, C. Truong: Semantic- Service Provisioning for the Internet of Things. ECEASST 37: (2011) A. P. Sheth, C. A. Henson, and S. S. Sahoo. Semantic Sensor Web. IEEE Internet Computing, 12(4):78-83, 2008. E. Bouillet, M. Feblowitz, Z. Liu, A. Ranganathan, A. Riabov, F. Ye, A semantics-based middleware for utilizing heterogeneous sensor networks, in: DCOSS, 2007. Whitehouse, K., Zhao, F., Liu, J.: Semantic streams: A framework for composable semantic interpretation of sensor data. In: EWSN’06. (2006) Christian Bizer, Tom Heath, Tim Berners-Lee: Linked Data - The Story So Far. Int. J. Semantic Web Inf. Syst. 5(3): 1-22 (2009) 7
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.