Stuttgart High - Performance Complex Event Processing to Detect Anomalies in Streaming RDF Data
نویسندگان
چکیده
. . . A lot of sensors nowadays are embedded in smart factories which generate massive real-time data about the functional conditions of the manufacturing equipments. Complex Event Processing(CEP) systems are involved to analyze continuous behavior of these machines, detect undesired patterns and give alerts in case of anomalies. In this thesis, we introduce an architectural design and concrete implementation of high-performance system which is able to solve this problem raised by DEBS Grand Challenge 2017. The thesis goes through the details of analyzing RDF streaming events to detect potential anomalies using Markov Model technique. In addition, we conducted experiments that showed promising results regarding low-latency anomaly detection and an ability to scale up and out the system.
منابع مشابه
Integrating Semantic Knowledge in Data Stream Processing
Complex Event Processing (CEP) has been established as a well-suited software technology for processing high-frequent data streams. However, intelligent stream based systems must integrate stream data with semantical background knowledge. In this work, we investigate different approaches on integrating stream data and semantic domain knowledge. In particular, we discuss from a software engineer...
متن کاملINSTANS: High-Performance Event Processing with Standard RDF and SPARQL
Smart environments require collaboration of multi-platform sensors operated by multiple parties. Proprietary event processing solutions lack interoperation flexibility, leading to overlapping functions that can waste hardware and communication resources. Our goal is to show the applicability of standard RDF and SPARQL – including SPARQL 1.1 Update – for complex event processing tasks. If found ...
متن کاملDIONYSUS: Towards Query-aware Distributed Processing of RDF Graph Streams
Arguably, the most significant obstacle to handle the emerging application’s data deluge is to design a system that addresses the challenges for big data’s volume, velocity and variety. Work in RDF stream processing (RSP) systems partly addresses the challenge of variety by promoting the RDF model. However, challenges like volume, velocity are overlooked by existing approaches. These challenges...
متن کاملReactive Processing of RDF Streams of Events
Events on the Web are increasingly being produced in the form of data streams, and are present in many different scenarios and applications such as health monitoring, environmental sensing or social networks. The heterogeneity of event streams has raised the challenges of integrating, interpreting and processing them coherently. Semantic technologies have shown to provide both a formal and prac...
متن کاملStream reasoning and complex event processing in ETALIS
Addressing the dynamics and notification in the Semantic Web realm has recently become an important area of research. Run time data is generated by multiple social networks, sensor networks, various on-line services, and so on. The challenge is how to get advantage of a huge amount of real time data, i.e., how to integrate heterogeneous data streams, combine data streams with the background kno...
متن کامل