Abstract
The process industry’s high expectations for Digital Twins require modeling approaches that can generalize across tasks and diverse domains with potentially different data dimensions and distributional shifts i.e., Foundational Models. Despite success in natural language processing and computer vision, transfer learning with (self-) supervised signals for pre-training general-purpose models is largely unexplored in the context of Digital Twins in the process industry due to challenges posed by multidimensional time-series data, lagged cause-effect dependencies, complex causal structures, and varying number of (exogenous) variables. We propose a novel channel-dependent pre-training strategy that leverages synchronized cause-effect pairs to overcome these challenges by breaking down the multi-dimensional time-series data into pairs of cause-effect variables. Our approach focuses on: (i) identifying highly lagged causal relationships using data-driven methods, (ii) synchronizing cause-effect pairs to generate training samples for channel-dependent pre-training, and (iii) evaluating the effectiveness of this approach in channel-dependent forecasting. Our experimental results demonstrate significant improvements in forecasting accuracy and generalization capability compared to traditional training methods.
| Original language | English |
|---|---|
| Pages (from-to) | 2655-2664 |
| Number of pages | 10 |
| Journal | Procedia Computer Science |
| Volume | 253 |
| DOIs | |
| Publication status | Published - Feb 2025 |
Fields of science
- 102022 Software development
- 102001 Artificial intelligence
- 102006 Computer supported cooperative work (CSCW)
- 102025 Distributed systems
- 502007 E-commerce
- 505002 Data protection
- 102010 Database systems
- 102035 Data science
- 102033 Data mining
- 506002 E-government
- 102019 Machine learning
- 102028 Knowledge engineering
- 102016 IT security
- 202007 Computer integrated manufacturing (CIM)
- 102015 Information systems
- 509018 Knowledge management
- 102014 Information design
JKU Focus areas
- Digital Transformation
- Sustainable Development: Responsible Technologies and Management
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