Affiliation:
1. National Research Institute of Science and Technology for Environment and Agriculture, Aubière, France
2. Eric Lyon2, Bron, France
3. LIMOS, Aubiere, France
Abstract
In the era of Big Data, more and more stream data is available. In the same way, Decision Support Systems (DSS) tools, such as data warehouses and alert systems, become more and more sophisticated, and conceptual modeling tools are consequently mandatory for successfully DSS projects. Formalisms such as UML and ER have been widely used in the context of classical information and data warehouse systems, but they have not been investigated yet for stream data warehouses to deal with alert systems. Therefore, in this article, the authors introduce the notion of Active Stream Data Warehouse (ASDW) and this article proposes a UML profile for designing Active Stream Data Warehouses. Indeed, this article extends the ICSOLAP profile to take into account continuous and window OLAP queries. Moreover, this article studies the duality of the stream and OLAP decision-making process and the authors propose a set of ECA rules to automatically trigger OLAP operators. The UML profile is implemented in a new OLAP architecture, and it is validated using an environmental case study concerning the wind monitoring.
Subject
Hardware and Architecture,Software
Reference34 articles.
1. Balazinska, M., Kwon, Y., Kuchta, N., & Lee, D. (2007, January). Moirae: History-Enhanced Monitoring. In CIDR (pp. 375-386).
2. Business Intelligence Indicators
3. Bokefode, J. D., Modani, D. G., & Babu, A. S. (2013). A novel approach for updates in streaming data warehouses by scalable scheduling. IJERT, 2(7).
4. Conceptual model for spatial data cubes: A UML profile and its automatic implementation
5. Event-based lossy compression for effective and efficient OLAP over data streams
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献