AI Subsystem
ARTIFICIAL INTELLIGENCE (AI) SUBSYSTEM METHODOLOGY
- parametrization and training of machine learning models based on TITAN historical data 🡪 prediction of Key Performance Indicators (KPIs) to be optimized as direct or composite function of (directly) manipulated and non-manipulated variables
- data preprocessing
- non-operation intervals elimination
- outliers elimination
- normalization
- automatic feature selection with Recursive Feature Elimination with Cross-Validation (RFECV) and Sequential Forward Selection (SFS) methods
- automatic split with respect to time with clustering 🡪 separate model per cluster
- regression models (supervised learning) with various hyperparameters
- Linear Regression (LR)
- Multilayer Perceptrons (MLP)
- Random Forest (RF)
- K-nearest-neighbors (KNN)
- LightGBM (LGBM)
- Gradient Boosting Regressor (GBR)
- Extreme Gradient Boosting Regressor (XGBoost)
- CatBoost
- Transformed Target Regressor (TTR)
- data preprocessing
- application of trained models to real-time data
- automatic retraining of models based on production conditions changes with reinforcement learning models
The project SIROKO was implemented in the context of the Action RESEARCH – CREATE – INNOVATE and co-financed by the European Union and national resources through the OP. Competitiveness, Entrepreneurship & Innovation (EPANEK).
The project started in June 2021 and is expected to be completed in December 2023.
Scientific co-ordinator is Dr. Dimitrios Tzovaras from CERTH/ITI.
The project started in June 2021 and is expected to be completed in December 2023.
Scientific co-ordinator is Dr. Dimitrios Tzovaras from CERTH/ITI.
Contact
- Information Technologies Institute, Centre for Research & Technology – Hellas, 6th km Harilaou - Thermi, 57001, Thermi - Thessaloniki, Greece
- Dimitrios.Tzovaras@iti.gr
- (+30) 2311 257 701-3