Refine
Year of publication
- 2017 (2) (remove)
Document Type
- Conference Proceeding (2) (remove)
Language
- English (2) (remove)
Has Fulltext
- yes (2)
Is part of the Bibliography
- no (2)
Keywords
- Adaptive IT Infrastructure (1)
- Batteriefahrzeug (1)
- Battery Electric Vehicles (1)
- Complex Event Processing (1)
- Context Awareness (1)
- Decision Support (1)
- Empfehlungssystem (1)
- Kontextbezogenes System (1)
- Mikro-Kraft-Wärme-Kopplung (1)
- Nachhaltigkeit (1)
- Portable Micro-CHP Unit (1)
- Prüfstand (1)
- Recommender System (1)
- SOA (1)
- Semantic Web (1)
- Semantic Web Technologies (1)
- Serviceorientierte Architektur (1)
- Situation Awareness (1)
- Test Bench (1)
Institute
- Fakultät IV - Wirtschaft und Informatik (2) (remove)
During the transition from conventional towards purely electrical, sustainable mobility, transitional technologies play a major part in the task of increasing adaption rates and decreasing range anxiety. Developing new concepts to meet this challenge requires adaptive test benches, which can easily be modified e.g. when progressing from one stage of development to the next, but also meet certain sustainability demands themselves.
The system architecture presented in this paper is built around a service-oriented software layer, connecting a modular hardware layer for direct access to sensors and actuators to an extensible set of client tools. Providing flexibility, serviceability and ease of use, while maintaining a high level of reusability for its constituent components and providing features to reduce the required overall run time of the test benches, it can effectively decrease the CO2 emissions of the test bench while increasing its sustainability and efficiency.
Nowadays, smartphones and sensor devices can provide a variety of information about a user’s current situation. So far, many recommender systems neglect this kind of information and thus cannot provide situationspecific recommendations. Situation-aware recommender systems adapt to changes in the user’s environment and therefore are able to offer recommendations that are more appropriate for the current situation. In this paper, we present a software architecture that enables situation awareness for arbitrary recommendation techniques. The proposed system considers both (semi-)static user profiles and volatile situational knowledge to obtain meaningful recommendations. Furthermore, the implementation of the architecture in a museum of natural history is presented, which uses Complex Event Processing to achieve situation awareness.