Submitted:
13 February 2025
Posted:
17 February 2025
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Abstract
Keywords:
1. Introduction
2. Related Work
3. Methodology
3.1. Evaluation Metrics
4. Results
- Tampere, Finland (two different running phases)
- Frankfurt, Germany
- Carinthia, Austria
- Trikala, Greece
4.1. Tampere 1st phase
4.2. Tampere 2nd phase
4.3. Frankfurt
4.4. Carinthia
4.5. Trikala
4.6. Evaluation Results
4.7. Comparative Results
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| MAE | MdAE | RMSE | NMAE | NMdAE | NRMSE | |
|---|---|---|---|---|---|---|
| Tampere (1st period) | 5.4 | 4.08 | 6.03 | 13.50% | 10.20% | 15.10% |
| Tampere (2nd period) | 10.55 | 10.03 | 12.98 | 17.30% | 16.40% | 21.30% |
| Frankfurt | 20 | 17.67 | 23.45 | 12.40% | 11% | 14.60% |
| Carinthia | 8.62 | 6.42 | 10.97 | 7.80% | 5.80% | 9.90% |
| Trikala | 26.89 | 27.95 | 29.77 | 26.40% | 27.40% | 29.20% |
| PCRF | NAIVE | AVERAGE | DRIFT | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| NMAE | NMdAE | NRMSE | NMAE | NMdAE | NRMSE | NMAE | NMdAE | NRMSE | NMAE | NMdAE | NRMSE | |
| Tampere (1st period) | 13.50% | 10.20% | 15.10% | 17% | 12.50% | 21.15% | 14.53% | 11.55% | 17.32% | 17.97% | 13.66% | 22.52% |
| Tampere (2nd period) | 17.30% | 16.40% | 21.30% | 19.67% | 19.67% | 22.82% | 23.15% | 23.01% | 27.54% | 19.87% | 19.98% | 22.94% |
| Frankfurt | 12.40% | 11.00% | 14.60% | 12.09% | 7.45% | 17.46% | 13.74% | 15.12% | 15.92% | 12.11% | 7.31% | 17.53% |
| Carinthia | 7.80% | 5.80% | 9.90% | 6.85% | 8.11% | 7.67% | 11.62% | 10.19% | 13.29% | 6.85% | 8.11% | 7.43% |
| Trikala | 26.40% | 27.40% | 29.20% | 21.76% | 14.71% | 28.53% | 19.27% | 20.70% | 23.34% | 22.19% | 14.98% | 28.86% |
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