Litcius/Paper detail

Requirements Identification for Real-Time Anomaly Detection in Industrie 4.0 Machine Groups: A Structured Literature Review

Philip Stahmann, Bodo Rieger

2021Proceedings of the ... Annual Hawaii International Conference on System Sciences/Proceedings of the Annual Hawaii International Conference on System Sciences10 citationsDOIOpen Access PDF

Abstract

Industrie 4.0 environments generate an unprecedented amount of production data. This is due to the rising number of sensors and interconnected devices capable of emitting data in millisecond frequencies. Streaming analytics offers promising methodologies that can support handling and analysis of data volume and variety. Transparency and control over real-time data can increase production efficiency in tightly connected machine environments. Data transparency may avoid time-consuming assessment of machines to detect anomalous machine behavior causing production inefficiencies or failures. This paper aims to identify requirements to implement streaming analytics for the detection of anomalies in Industrie 4.0 production machine groups through a structured literature review.

Topics & Concepts

Transparency (behavior)Computer scienceAnomaly detectionAnalyticsData analysisVariety (cybernetics)Identification (biology)MillisecondProduction (economics)Volume (thermodynamics)Real-time computingEmbedded systemData miningArtificial intelligenceComputer securityAstronomyEconomicsMacroeconomicsBiologyQuantum mechanicsPhysicsBotanyAnomaly Detection Techniques and ApplicationsDigital Transformation in IndustryIndustrial Vision Systems and Defect Detection
Requirements Identification for Real-Time Anomaly Detection in Industrie 4.0 Machine Groups: A Structured Literature Review | Litcius