Phenology-Informed Multitemporal PlanetScope and UAV-LiDAR Fusion for Above-Ground Carbon Mapping in Tropical Dry Forests of Sakaerat Biosphere Reserve, Thailand
Highlights
- Multitemporal phenology preserves the dry–wet seasonal signal that single-composite optical data discard, increasing spectral sensitivity to above-ground carbon by 3.4× (DEF) and 2.0× (DDF).
- Forest-type stratification (DEF vs. DDF) recovers ecologically distinct biomass–signal relationships, improving accuracy by +0.129 R2 over a pooled mixed-forest model.
- In open dry dipterocarp forest, wet season green and red-edge reflectance carries a biomass signal independent of canopy structure, enabling optical screening where UAV-LiDAR is unavailable.
- The framework maps reserve-wide carbon (0.217 Tg C at Sakaerat) for contemporaneous tropical dry forest assessment, while cross-year transfer still requires additional calibration.
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Datasets
2.2.1. UAV-LiDAR
2.2.2. PlanetScope Imagery
2.2.3. Per-Tree Above-Ground Carbon
2.3. LiDAR Processing and Canopy Height Model Generation
2.4. PlanetScope Phenological Feature Engineering
2.5. Per-Forest-Type Model Training
2.6. Cross-Validation Schemes
2.7. Feature Attribution via SHAP
2.8. Wall-to-Wall AGC Mapping
2.8.1. Primary Product—30 m Combined Map
2.8.2. Supplementary Product—3 m PS-Derived Layer
3. Results
3.1. Effect of Spatial Resolution
3.2. Contribution of Feature Sets
3.3. Cross-Validation Scheme Comparison
3.4. Feature Importance: SHAP Analysis
3.5. Sensitivity Analyses
3.6. Wall-to-Wall Above-Ground Carbon Maps
3.6.1. Primary Product—30 m Combined AGC Map
3.6.2. Supplementary Product—3 m PS-Derived AGC Layer
4. Discussion
4.1. NDVI Saturation in Closed Evergreen Canopy
4.2. Comparison with Recent Carbon Mapping Studies
4.3. PlanetScope Contribution: Small but Real
4.4. Limitations
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
| Forest | Rank | Feature | Feature_Type | Pearson_r | abs_r | n_Cells |
|---|---|---|---|---|---|---|
| DEF | 1 | NDVI_min | PS_index | −0.4892 | 0.4892 | 461 |
| 2 | NDVI_cv | PS_index | 0.4507 | 0.4507 | 461 | |
| 3 | B4_Green_p10 | PS_band | −0.4474 | 0.4474 | 461 | |
| 4 | NDVI_amplitude | PS_index | 0.4346 | 0.4346 | 461 | |
| 5 | ARI_p90 | PS_index | 0.4286 | 0.4286 | 461 | |
| 6 | B7_RedEdge_min | PS_band | −0.4268 | 0.4268 | 461 | |
| 7 | B7_RedEdge_p10 | PS_band | −0.4181 | 0.4181 | 461 | |
| 8 | ARI_cv | PS_index | 0.4085 | 0.4085 | 461 | |
| 9 | NDWI_amplitude | PS_index | 0.4036 | 0.4036 | 461 | |
| 10 | GNDVI_amplitude | PS_index | 0.4036 | 0.4036 | 461 | |
| 11 | NDWI_max | PS_index | 0.3861 | 0.3861 | 461 | |
| 12 | GNDVI_min | PS_index | −0.3861 | 0.3861 | 461 | |
| 13 | B6_Red_min | PS_band | −0.3745 | 0.3745 | 461 | |
| 14 | B1_Coastal_cv | PS_band | 0.3651 | 0.3651 | 461 | |
| 15 | NDRE_cv | PS_index | 0.3614 | 0.3614 | 461 | |
| 16 | NDRE_amplitude | PS_index | 0.3602 | 0.3602 | 461 | |
| 17 | B8_NIR_wet_mean | PS_band | −0.3538 | 0.3538 | 461 | |
| 18 | B8_NIR_max | PS_band | −0.3533 | 0.3533 | 461 | |
| 19 | ARI_dry_mean | PS_index | 0.3532 | 0.3532 | 461 | |
| 20 | EVI_max | PS_index | −0.3521 | 0.3521 | 461 | |
| DDF | 1 | B7_RedEdge_wet_mean | PS_band | −0.623 | 0.623 | 550 |
| 2 | ARI_p90 | PS_index | 0.546 | 0.546 | 550 | |
| 3 | B4_Green_min | PS_band | −0.5437 | 0.5437 | 550 | |
| 4 | ARI_wet_mean | PS_index | 0.5422 | 0.5422 | 550 | |
| 5 | B4_Green_wet_mean | PS_band | −0.5382 | 0.5382 | 550 | |
| 6 | B4_Green_p10 | PS_band | −0.5363 | 0.5363 | 550 | |
| 7 | B3_GreenI_wet_mean | PS_band | −0.5179 | 0.5179 | 550 | |
| 8 | ARI_max | PS_index | 0.5154 | 0.5154 | 550 | |
| 9 | B2_Blue_p10 | PS_band | −0.4793 | 0.4793 | 550 | |
| 10 | NDRE_p90 | PS_index | 0.4763 | 0.4763 | 550 | |
| 11 | B5_Yellow_p10 | PS_band | −0.4706 | 0.4706 | 550 | |
| 12 | B5_Yellow_wet_mean | PS_band | −0.4648 | 0.4648 | 550 | |
| 13 | NDWI_p10 | PS_index | −0.4616 | 0.4616 | 550 | |
| 14 | GNDVI_p90 | PS_index | 0.4616 | 0.4616 | 550 | |
| 15 | B5_Yellow_min | PS_band | −0.4606 | 0.4606 | 550 | |
| 16 | NDRE_wet_mean | PS_index | 0.4571 | 0.4571 | 550 | |
| 17 | B3_GreenI_p10 | PS_band | −0.4443 | 0.4443 | 550 | |
| 18 | ARI_amplitude | PS_index | 0.4361 | 0.4361 | 550 | |
| 19 | GNDVI_wet_mean | PS_index | 0.4293 | 0.4293 | 550 | |
| 20 | NDWI_wet_mean | PS_index | −0.4293 | 0.4293 | 550 |
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| # | Date (ISO) | Season | # | Date (ISO) | Season |
|---|---|---|---|---|---|
| 1 | 13 Febraury 2024 | Dry | 10 | 5 July 2025 | Wet |
| 2 | 7 March 2024 | Dry | 11 | 2 August 2025 | Wet |
| 3 | 22 April 2024 | Dry | 12 | 3 October 2025 | Wet |
| 4 | 11 November 2024 | Dry | 13 | 27 November 2025 | Dry |
| 5 | 4 December 2024 | Dry | 14 | 23 January 2026 | Dry |
| 6 | 18 January 2025 | Dry | 15 | 15 February 2026 | Dry |
| 7 | 16 February 2025 | Dry | 16 | 31 March 2026 | Dry |
| 8 | 23 March 2025 | Dry | 17 | 13 April 2026 | Dry |
| 9 | 23 April 2025 | Dry | — | — | — |
| Forest | Resolution | n Cells | R2 (Mean ± Std) | RMSE (Mg C ha−1) |
|---|---|---|---|---|
| DEF | 10 m | 3162 | 0.586 ± 0.018 | 26.29 |
| DEF | 20 m | 1039 | 0.626 ± 0.017 | 15.38 |
| DEF | 30 m | 461 | 0.677 ± 0.034 | 11.86 |
| DDF | 10 m | 3058 | 0.563 ± 0.024 | 17.55 |
| DDF | 20 m | 1202 | 0.531 ± 0.047 | 10.94 |
| DDF | 30 m | 550 | 0.654 ± 0.042 | 7.42 |
| Forest | Feature Set | n Features | R2 (Mean ± Std) | RMSE | MAE | ΔR2 vs. LiDAR |
|---|---|---|---|---|---|---|
| DEF | PS_only | 128 | 0.342 ± 0.038 | 17.01 | 11.35 | — |
| DEF | LiDAR_only | 12 | 0.660 ± 0.044 | 12.16 | 8.21 | — |
| DEF | Combined | 140 | 0.677 ± 0.034 | 11.86 | 8.01 | +0.017 |
| DDF | PS_only | 128 | 0.473 ± 0.063 | 9.17 | 6.81 | — |
| DDF | LiDAR_only | 12 | 0.634 ± 0.054 | 7.60 | 5.69 | — |
| DDF | Combined | 140 | 0.654 ± 0.042 | 7.42 | 5.53 | +0.020 |
| Forest | CV Scheme/Fold | R2 | RMSE (Mg C ha−1) | n_Test |
|---|---|---|---|---|
| DEF | Random K-fold (k = 5) | 0.677 ± 0.034 | 11.86 | ~92/fold |
| DEF | Spatial block (k = 5) | 0.555 ± 0.245 | 12.54 | ~92/fold |
| DDF | Random K-fold (k = 5) | 0.654 ± 0.042 | 7.42 | ~110/fold |
| DDF | Spatial block (k = 5) | 0.574 ± 0.028 | 8.10 | ~110/fold |
| DEF + DDF pooled | Random K-fold (k = 5) | 0.537 ± 0.013 | 10.79 | ~325/fold |
| Pooled DEF + DDF | LOPO—DDF_2025 | +0.405 | 9.87 | 552 |
| LOPO—DDF_2026 | +0.605 | 7.26 | 258 | |
| LOPO—DEF_2025 | +0.097 | 19.99 | 461 | |
| LOPO—DEF_2026 | −1.763 | 20.78 | 359 | |
| Median (LOPO) | +0.251 | 13.93 | — |
| Forest | Scenario | n Features | R2 (Mean ± Std) | RMSE (Mg C ha−1) |
|---|---|---|---|---|
| DEF | (a) PS single-composite (Ren-style) | 16 | 0.102 ± 0.069 | 19.81 |
| DEF | (a) PS multitemporal (this study) | 128 | 0.344 ± 0.038 | 16.98 |
| DEF | (a) PS single + LiDAR | 28 | 0.677 ± 0.037 | 11.86 |
| DEF | (a) PS multitemporal + LiDAR | 140 | 0.678 ± 0.032 | 11.84 |
| DEF | (b) Bootstrap 95% CI (1000×) | 140 | 0.681 [0.626, 0.729] | |
| DDF | (a) PS single-composite (Ren-style) | 16 | 0.244 ± 0.145 | 10.92 |
| DDF | (a) PS multitemporal (this study) | 128 | 0.476 ± 0.063 | 9.15 |
| DDF | (a) PS single + LiDAR | 28 | 0.655 ± 0.050 | 7.38 |
| DDF | (a) PS multitemporal + LiDAR | 140 | 0.656 ± 0.037 | 7.39 |
| DDF | (b) Bootstrap 95% CI (1000×) | 140 | 0.661 [0.615, 0.705] |
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Kaewjampa, N.; Tongdeenok, P.; Klabsuk, R.; Waengsothorn, S.; Kim, H.T.; Moukomla, S. Phenology-Informed Multitemporal PlanetScope and UAV-LiDAR Fusion for Above-Ground Carbon Mapping in Tropical Dry Forests of Sakaerat Biosphere Reserve, Thailand. Remote Sens. 2026, 18, 1903. https://doi.org/10.3390/rs18121903
Kaewjampa N, Tongdeenok P, Klabsuk R, Waengsothorn S, Kim HT, Moukomla S. Phenology-Informed Multitemporal PlanetScope and UAV-LiDAR Fusion for Above-Ground Carbon Mapping in Tropical Dry Forests of Sakaerat Biosphere Reserve, Thailand. Remote Sensing. 2026; 18(12):1903. https://doi.org/10.3390/rs18121903
Chicago/Turabian StyleKaewjampa, Naruemol, Piyapong Tongdeenok, Renuka Klabsuk, Surachit Waengsothorn, Hyeon Tae Kim, and Sitthisak Moukomla. 2026. "Phenology-Informed Multitemporal PlanetScope and UAV-LiDAR Fusion for Above-Ground Carbon Mapping in Tropical Dry Forests of Sakaerat Biosphere Reserve, Thailand" Remote Sensing 18, no. 12: 1903. https://doi.org/10.3390/rs18121903
APA StyleKaewjampa, N., Tongdeenok, P., Klabsuk, R., Waengsothorn, S., Kim, H. T., & Moukomla, S. (2026). Phenology-Informed Multitemporal PlanetScope and UAV-LiDAR Fusion for Above-Ground Carbon Mapping in Tropical Dry Forests of Sakaerat Biosphere Reserve, Thailand. Remote Sensing, 18(12), 1903. https://doi.org/10.3390/rs18121903

