Near Real-Time Fire Detection and Monitoring in the MATOPIBA Region, Brazil
Abstract
:1. Introduction
- What is the overall performance of the FM? Does LULC play an important role in the FM accuracy?
- Does the size of the burned area (BA) influence the FM accuracy? Is the FM influenced by BA found in the surroundings of a central ABI pixel grid?
- What is the FM potential considering a sequence of positive fire indications? What is its agreement with the MODIS and VIIRS datasets?
- Assuming that we have a certain number of consecutive AF detections from the FM, what is the fire reality in the remaining data over MATOPIBA?
2. Data
2.1. Reference Satellites: MODIS and VIIRS Active Fire Data
2.2. GOES-16 ABI Imagery
2.3. Sentinel-2 Imagery
3. Methods
3.1. Data Split
3.2. Data Processing and Experiments
3.2.1. Algorithms and Hyperparameters Optimization
3.2.2. Lag and Machine Learning Algorithm Selection
3.3. Final Model Development and Assessment
4. Results
4.1. Overall Performance of the FM
4.2. FM Performance Regarding Burned Areas Mapping
4.3. What Is the FM Potential When Considering a Consecutive Sequence of Positive Predictions?
4.4. Fire Reality in the Remaining Data over MATOPIBA
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Metrics | Overall FM Assessment | FM Assessment by LULC | ||
---|---|---|---|---|
NF | SF | Gr | ||
True positives (real: fire, predicted: fire) | 6607 (40.60%) | 3906 (82.09%) | 1691 (24.98%) | 1010 (21.28%) |
False negatives (real: fire, predicted: non-fire) | 2468 (15.17%) | 419 (08.81%) | 1190 (17.58%) | 859 (18.10%) |
False positives (real: non-fire, predicted: fire) | 971 (05.96%) | 178 (03.74%) | 763 (11.27%) | 30 (00.63%) |
True negatives (real: non-fire, predicted: non-fire) | 6228 (38.27%) | 255 (05.36%) | 3125 (46.17%) | 2848 (60.00%) |
Fire prevalence on test data | 55.8% | 90.9% | 42.6% | 39.4% |
Accuracy rate | 78.9% | 87.5% | 71.1% | 81.3% |
Sensitivity | 72.8% | 90.3% | 58.7% | 54.0% |
Specificity | 86.5% | 58.9% | 80.4% | 99.0% |
Positive Predictive Value | 87.2% | 95.6% | 68.9% | 97.1% |
Negative Predictive Value | 71.6% | 37.8% | 72.4% | 76.8% |
(a) | FM Accuracy According to BA Mapping in the Central Pixel (km2) | ||||||||
---|---|---|---|---|---|---|---|---|---|
0–0.01 | 0.01–0.1 | 0.1–1.0 | >1.0 | ||||||
Classification | F | NF | F | NF | F | NF | F | NF | |
BA Mapping | F | 0.00% | 0.00% | 77.10% | 22.90% | 71.20% | 28.80% | 67.80% | 32.20% |
NF | 13.50% | 86.50% | 0.00% | 0.00% | 0.00% | 0.00% | 0.00% | 0.00% | |
(b) | FM Accuracy According to BA Mapping in the Sorroundings (km2) | ||||||||
0–0.01 | 0.01–0.1 | 0.1–1.0 | >1.0 | ||||||
Classification | F | NF | F | NF | F | NF | F | NF | |
BA Mapping | F | 0.00% | 4.00% | 82.00% | 10.00% | 31.00% | 13.00% | 47.00% | 28.00% |
NF | 12.00% | 84.00% | 0.00% | 8.00% | 9.00% | 47.00% | 4.00% | 21.00% |
Metrics | Reference Satellites | Consecutive AF Detection | ||
---|---|---|---|---|
Naive | 15 | 125 | ||
True positives (real: fire, predicted: fire) | 32 (28.32%) | 58 (51.33%) | 56 (49.56%) | 51 (45.13%) |
False negatives (real: fire, predicted: non-fire) | 30 (26.55%) | 4 (3.54%) | 6 (5.31%) | 11 (9.73%) |
False positives (real: non-fire, predicted: fire) | 3 (2.65%) | 45 (39.82%) | 31 (27.43%) | 19 (16.82%) |
True negatives (real: non-fire, predicted: non-fire) | 48 (42.48%) | 6 (5.31%) | 20 (17.70%) | 32 (28.32%) |
Fire prevalence on test data | 55.76% | 55.76% | 55.76% | 55.76% |
Accuracy rate | 70.80% | 56.64% | 67.26% | 73.45% |
Sensitivity | 51.61% | 93.55% | 90.32% | 82.26% |
Specificity | 94.12% | 11.76% | 39.22% | 62.75% |
Positive Predictive Value | 91.43% | 56.31% | 64.37% | 72.86% |
Negative Predictive Value | 61.54% | 60.00% | 76.92% | 74.42% |
Reference Satellites | |||||
---|---|---|---|---|---|
TP | FN | FP | TN | ||
125 consecutive AF detections | TP | 22.10% | 23.00% | 0.00% | 0.00% |
FN | 6.20% | 3.50% | 0.00% | 0.00% | |
FP | 0.00% | 0.00% | 0.90% | 15.90% | |
TN | 0.00% | 0.00% | 1.90% | 26.50% |
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Pletsch, M.A.J.S.; Körting, T.S.; Morita, F.C.; Silva-Junior, C.H.L.; Anderson, L.O.; Aragão, L.E.O.C. Near Real-Time Fire Detection and Monitoring in the MATOPIBA Region, Brazil. Remote Sens. 2022, 14, 3141. https://doi.org/10.3390/rs14133141
Pletsch MAJS, Körting TS, Morita FC, Silva-Junior CHL, Anderson LO, Aragão LEOC. Near Real-Time Fire Detection and Monitoring in the MATOPIBA Region, Brazil. Remote Sensing. 2022; 14(13):3141. https://doi.org/10.3390/rs14133141
Chicago/Turabian StylePletsch, Mikhaela A. J. S., Thales S. Körting, Felipe C. Morita, Celso H. L. Silva-Junior, Liana O. Anderson, and Luiz E. O. C. Aragão. 2022. "Near Real-Time Fire Detection and Monitoring in the MATOPIBA Region, Brazil" Remote Sensing 14, no. 13: 3141. https://doi.org/10.3390/rs14133141
APA StylePletsch, M. A. J. S., Körting, T. S., Morita, F. C., Silva-Junior, C. H. L., Anderson, L. O., & Aragão, L. E. O. C. (2022). Near Real-Time Fire Detection and Monitoring in the MATOPIBA Region, Brazil. Remote Sensing, 14(13), 3141. https://doi.org/10.3390/rs14133141