A Machine Learning Approach to Predicting the Climate Impact of North Atlantic Flights †
Abstract
1. Introduction
2. Data
- 1.
- Surface Short-Wave (Solar) Radiation Downwards (ssrd)—Incoming solar radiation per unit surface over an hourly timestep (unit: ).
- 2.
- Top Net Long-Wave (Thermal) Radiation (ttr)—Net thermal radiation at the top of the atmosphere (unit: ).
- 3.
- Potential Vorticity (pv)—A dynamic quantity conserved for an air parcel moving adiabatically and used by the aCCFs to identify the tropopause level (units: ).
- 4.
- Geopotential (z)—Gravitational potential per unit mass, which is used by the aCCFs to identify the tropopause level (unit: ).
- 5.
- Air Temperature (t)—Recorded in Kelvin (unit: K).
- 6.
- Specific Humidity (q)—Mass of water vapor per unit mass of air (units: ).
- 7.
- Relative Humidity (r)—The amount of moisture in the air compared to what the air can hold at that temperature (unit: %).
- 8.
- Eastward Wind (u)—Wind component from west to east (unit: ).
- 9.
- Northward Wind (v)—Wind component from south to north (unit: ).
- 10.
- Persistent Contrail Formation Areas (pcfa)—Regions that, according to aCCF predictions, will form persistent contrails, derived from meteorogical data (boolean).
- 11.
- Average Temperature Response with a 20-year Time Horizon (ATR20, target variable)—The total ATR with a 20-year time horizon per unit fuel consumption, combining the effects of all individual emissions, measuring the impact that an A320 aircraft would have by traveling through a region at a specific latitude, longitude, altitude, and time (unit: K kg [fuel]−1).
3. Experimental Setup
3.1. Model Selection and Training
3.1.1. Baseline-Model Results
3.1.2. Outlier Detection
3.1.3. Results After Outlier Removal
3.1.4. Handling Outliers
- Classification Model Training and Results
4. Final Results
ATR20 Predictions for Transatlantic Flights
5. Limitations and Future Work
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| Model | Scaler | Month | MSE, (K/kg)2 | MAE, K/kg | MAPE,% | |
|---|---|---|---|---|---|---|
| LGBM | No Scaler | January | 0.37 | 10.44 | ||
| LGBM | No Scaler | June | 0.40 | 9.91 | ||
| LGBM | No Scaler | July | 0.39 | 17.6 | ||
| LGBM | No Scaler | September | 0.37 | 8.65 | ||
| LGBM | No Scaler | December | 0.32 | 9.42 |
| Model | Month | Metric | Baseline Model | Model After Removing Outliers |
|---|---|---|---|---|
| LGBM | June | R2 | 0.40 | 0.55 |
| MAE | ||||
| MAPE (%) | 9.91 | 2.68 | ||
| LGBM | July | R2 | 0.39 | 0.52 |
| MAE | ||||
| MAPE (%) | 17.60 | 3.15 | ||
| LGBM | September | R2 | 0.37 | 0.50 |
| MAE | ||||
| MAPE (%) | 8.65 | 3.36 | ||
| LGBM | December | R2 | 0.32 | 0.41 |
| MAE | ||||
| MAPE (%) | 9.42 | 5.12 |
| Model | Month | MSE, K/kg2 | MAE, K/kg | MAPE,% | |
|---|---|---|---|---|---|
| model C | June | 0.54 | 4.24 | ||
| model B | June | 0.41 | 10.43 | ||
| model M | June | 0.37 | 10.16 |
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Share and Cite
Abate, C.; Kravchenko, N.; Bellouin, N.; Hill, L. A Machine Learning Approach to Predicting the Climate Impact of North Atlantic Flights. Eng. Proc. 2026, 133, 35. https://doi.org/10.3390/engproc2026133035
Abate C, Kravchenko N, Bellouin N, Hill L. A Machine Learning Approach to Predicting the Climate Impact of North Atlantic Flights. Engineering Proceedings. 2026; 133(1):35. https://doi.org/10.3390/engproc2026133035
Chicago/Turabian StyleAbate, Carlo, Natalia Kravchenko, Nicolas Bellouin, and Lydia Hill. 2026. "A Machine Learning Approach to Predicting the Climate Impact of North Atlantic Flights" Engineering Proceedings 133, no. 1: 35. https://doi.org/10.3390/engproc2026133035
APA StyleAbate, C., Kravchenko, N., Bellouin, N., & Hill, L. (2026). A Machine Learning Approach to Predicting the Climate Impact of North Atlantic Flights. Engineering Proceedings, 133(1), 35. https://doi.org/10.3390/engproc2026133035

