Litcius/Paper detail

PrecTime: A deep learning architecture for precise time series segmentation in industrial manufacturing operations

Stefan Gaugel, Manfred Reichert

2023Engineering Applications of Artificial Intelligence28 citationsDOIOpen Access PDF

Abstract

The fourth industrial revolution creates ubiquitous sensor data in production plants. To generate maximum value out of these data, reliable and precise time series-based machine learning methods like temporal neural networks are needed. This paper proposes a novel sequence-to-sequence deep learning architecture for time series segmentation called PrecTime which tries to combine the concepts and advantages of sliding window and dense labeling approaches. The general-purpose architecture is evaluated on a real-world industry dataset containing the End-of-Line testing sensor data of hydraulic pumps. We are able to show that PrecTime outperforms five implemented state-of-the-art baseline networks based on multiple metrics. The achieved segmentation accuracy of around 96% shows that PrecTime can achieve results close to human intelligence in operational state segmentation within a testing cycle.

Topics & Concepts

Computer scienceSegmentationArtificial intelligenceDeep learningArchitectureSliding window protocolSequence (biology)Series (stratigraphy)State (computer science)Artificial neural networkTime seriesMachine learningData miningReal-time computingWindow (computing)AlgorithmArtBiologyVisual artsPaleontologyGeneticsOperating systemTime Series Analysis and ForecastingAnomaly Detection Techniques and ApplicationsContext-Aware Activity Recognition Systems