Multi-Decadal Coastal Erosion Assessment and Machine Learning-Based Forecasts from Multi-Mission Satellites: Application to the Ionian Coast of Basilicata (1984–2050)
Abstract
1. Introduction
- reconstruct the multi-decadal evolution of the shoreline along the Ionian coast of Basilicata over the period 1984–2025 by integrating Landsat and Sentinel-2 surface-reflectance data;
- quantify the spatial patterns of erosion and accretion using DSAS-style statistics (net shoreline movement, endpoint rate, linear regression rate) computed along 752 cross-shore transects spaced every 50 m and relate these patterns to river mouths, coastal structures and municipal boundaries to identify erosional hotspots and relatively stable sectors;
- develop and validate a machine learning-based linear forecasting model that learns per-transect trends from the 1984–2016 observations, evaluates predictive skill over 2017–2025 through an RMSE-based acceptance criterion grounded in an explicit positional-uncertainty budget, and then produces annual shoreline forecasts for up to 2050 for all non-rigid segments of the coast;
- discuss the implications of the reconstructed trends and 2050 projections for coastal risk and management along the Ionian Basilicata littoral, with particular reference to the widespread presence of bathing establishments, low-lying agricultural land and other exposed assets, in the broader context of Italian and Mediterranean erosion scenarios [9,17,20,41].
2. Materials and Methods
2.1. Study Area
2.2. Satellite and Ancillary Data
2.3. Image Pre-Processing and Annual Composites in Google Earth Engine
2.4. Automated Shoreline Extraction
2.5. Design of Shoreline Validation Against the 2013 Orthophoto
2.6. Baseline and Cross-Shore Transects
2.7. Shoreline-Change Metrics and Machine Learning-Based Linear Forecasting Model
2.7.1. DSAS-Style Shoreline Change Statistics (1984–2025)
2.7.2. Train–Test Validation of the Supervised Linear Forecast Model
2.7.3. Construction of 2026–2050 Shoreline Forecasts
2.8. Export to Google Earth Engine and Cartographic Representation
3. Results
3.1. Accuracy of Satellite-Derived Shorelines
3.2. Multi-Decadal Shoreline Change (1984–2025)
3.3. Performance of the Machine Learning-Based Linear Forecast Model
3.4. Forecasted Shoreline Positions to 2050
4. Discussion
4.1. Validation Insights and Implications for Shoreline Detection
4.2. Drivers of Shoreline Change and Comparison with Previous Studies
4.3. Reliability and Limitations of the 2050 Forecasts
4.4. Transferability and Future Work
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Class | NSM Range (m) | Number of Transects | Percentage of Transects |
|---|---|---|---|
| Very strong erosion | NSM > 100 | 181 | 24.1% |
| Strong erosion | 50 < NSM ≤ 100 | 83 | 11.0% |
| Moderate erosion | 10 < NSM ≤ 50 | 126 | 16.8% |
| Quasi-stable | |NSM| ≤ 10 | 91 | 12.1% |
| Moderate accretion | −50 ≤ NSM < −10 | 215 | 28.6% |
| Strong accretion | NSM < −50 | 56 | 7.4% |
| Quality Class | Definition (r = RMSEtest/RMSEmax) | Number of Transects | Percentage of Transects | Mean RMSEtest (m) | Median RMSEtest (m) | Mean r | Median r |
|---|---|---|---|---|---|---|---|
| Good | r ≤ 2/3 | 603 | 81.7% | 11.3 | 10.4 | 0.3 | 0.3 |
| Medium | 2/3 < r ≤ 1 | 101 | 13.7% | 28.8 | 27.9 | 0.8 | 0.8 |
| Bad | r > 1 | 34 | 4.6% | 54.3 | 41.8 | 1.5 | 1.3 |
| Class | Δd2025–2050 Range (m) | Percentage of Transects |
|---|---|---|
| Further accretion | Δd2025–2050 < −10 | 33.1% |
| Quasi-stable | |Δd2025–2050| ≤ 10 | 18.3% |
| Moderate–strong additional retreat | 10 < Δd2025–2050 ≤ 50 | 22.0% |
| Strong–very strong additional retreat | Δd2025–2050 > 50 | 26.6% |
| Municipality | Mean Δd2025–2050 (m) | Max Δd2025–2050 (m) |
|---|---|---|
| Nova Siri | −6.3 | 34.8 |
| Rotondella | 111.9 | 195.3 |
| Policoro | 28.9 | 206.0 |
| Scanzano Jonico | 30.2 | 288.1 |
| Pisticci | −2.3 | 131.9 |
| Bernalda (Metaponto) | 38.3 | 91.1 |
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Colonna, R.; Dal Sasso, S.F. Multi-Decadal Coastal Erosion Assessment and Machine Learning-Based Forecasts from Multi-Mission Satellites: Application to the Ionian Coast of Basilicata (1984–2050). Geographies 2026, 6, 20. https://doi.org/10.3390/geographies6010020
Colonna R, Dal Sasso SF. Multi-Decadal Coastal Erosion Assessment and Machine Learning-Based Forecasts from Multi-Mission Satellites: Application to the Ionian Coast of Basilicata (1984–2050). Geographies. 2026; 6(1):20. https://doi.org/10.3390/geographies6010020
Chicago/Turabian StyleColonna, Roberto, and Silvano Fortunato Dal Sasso. 2026. "Multi-Decadal Coastal Erosion Assessment and Machine Learning-Based Forecasts from Multi-Mission Satellites: Application to the Ionian Coast of Basilicata (1984–2050)" Geographies 6, no. 1: 20. https://doi.org/10.3390/geographies6010020
APA StyleColonna, R., & Dal Sasso, S. F. (2026). Multi-Decadal Coastal Erosion Assessment and Machine Learning-Based Forecasts from Multi-Mission Satellites: Application to the Ionian Coast of Basilicata (1984–2050). Geographies, 6(1), 20. https://doi.org/10.3390/geographies6010020

