Vegetation Mortality within Natural Wildfire Events in the Western Canadian Boreal Forest: What Burns and Why?
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data
2.2.1. Mortality Maps
- No evidence of pre-fire anthropogenic activity;
- Minimal or no fire suppression;
- No post-fire salvage logging; and
- High quality, high resolution aerial photos available within five years post-fire (see [29] for details).
- The percent dead tree crowns attributed to the fire event for forested areas;
- The percent cover of dead shrubs and bushes for non-forested areas with other woody plants; or
- The percent area scorched for non-forested areas with only grass or bryophytes.
2.2.2. Pre-Fire Vegetation
2.2.3. Topography
2.2.4. Fire Weather
2.2.5. Other Data
2.3. Multinomial Logistic Models for Vegetation Mortality Class
- Vectors of means (for continuous variables in Table 1) and proportions (for ecoregion plus other class variables in Table 1) were calculated by vegetation mortality level using all pixels to investigate univariate relationships with vegetation mortality and to indicate importance of each possible predictor variable. The results from this were used to provide an overview that described the general relationships.
- A correlation matrix was used to identify pairs of variables with moderately high multicollinearity (r > 0.7) as an aide to pre-selection among highly related variables. Using this as a guide along with interpretability of relationships as reported in other studies, a subset of the fire weather variables was retained in further analyses, namely: DC (median) to represent the drought conditions for the fire event; FWI (min) to represent the minimum potential energy output during the burning period; and ISI (proportion of days above threshold) to represent the proportion of days during the burning period that had high intensity fire-spread conditions [45]. Similarly, from the topography variables, slope location and surface curvature were strongly correlated; slope location was selected since it related to biomass consumption in fire events in previous studies [50]. From the vegetation variables, the understory index was strongly correlated with understory cover, so the simpler and more interpretable understory cover variable was retained.
- For each variable group (i.e., site, vegetation, topography, and weather), a stepwise selection process was followed by including all variables of the variable group and then removing variables one at a time. Variables previously dropped were then considered for entry back into the model at later steps. Again, AIC and the percent of correctly classified pixels were used to evaluate variable importance (i.e., whether to retain or drop a variable). However, supporting literature regarding relationships between mortality and biotic and abiotic variables was also used in deciding whether to retain or drop a variable.
- Since class variables can affect the coefficient associated with each continuous variable, interaction terms were then added and evaluated as in Step 4. Some interactions resulted in singular matrices and were removed. For example, some fuel categories only occurred within given ecoregions (e.g., muskeg did not occur in the Rocky Mountains or Foothills), and others only occurred within certain terrain (e.g., muskeg only occurred on flat ground) resulting in no differences in some attributes (i.e., all grasslands had an overstory height of 0).
- Once a subset of predictor variables was selected from each group of variables, these were merged together to obtain a model using all variable groups. Interactions between class variables and continuous variables across variable groups were then evaluated with regards to model improvements.
- Since predictor variables eliminated in previous steps might become important in a later step (for example, in combination with ecoregion or other variables), these were added again to the overall combined model and evaluated.
3. Results
3.1. General Relationships
3.2. Model Fitting and Classification
4. Discussion
4.1. Factors Contributing to Vegetation Survival
4.2. Complexity of Relationships
4.3. Classification Accuracy and Model Complexity
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Appendix A. Data Summaries
Variable | Vegetation Mortality | |||||
---|---|---|---|---|---|---|
0% | 1%–25% | 2%–50% | 51%–75% | 76%–94% | ≥95% | |
Age (years) | 39.9 (20.4) | 42.6 (24.4) | 40 (21.9) | 41.4 (20.4) | 41.7 (19.8) | 38.8 (21) |
Height (m) | 11.5 (5.4) | 9.9 (4.4) | 9.5 (4.3) | 10.3 (4.6) | 11.0 (4.7) | 10.4 (3.7) |
Ladder fuel index (no units) | 8.2 (13.8) | 6.3 (10.6) | 6.6 (10.1) | 6.4 (9.6) | 6.1 (9.3) | 8.5 (11.6) |
Overstory crown closure (%) | 42.5 (23.6) | 43.6 (23.9) | 43.2 (21.9) | 46.4 (22.1) | 49.3 (22.2) | 49.6 (23.8) |
Understory crown closure (%) | 14.3 (20.4) | 11.9 (18.8) | 13.1 (18.7) | 12.4 (17.1) | 12.2 (17.3) | 16.8 (21.1) |
Understory height (m) | 3.3 (3.7) | 2.5 (3.2) | 2.6 (3.0) | 2.9 (3.2) | 2.8 (3.1) | 2.9 (3.0) |
Fuel Category | Vegetation Mortality | ||||||
---|---|---|---|---|---|---|---|
0% | 1%–25% | 2%–50% | 51%–75% | 76%–94% | ≥95% | Frequency | |
Forest | |||||||
C2—Boreal spruce | 2% | 6% | 6% | 6% | 9% | 71% | 27.62% |
C3—Mature pine | 2% | 5% | 6% | 8% | 11% | 67% | 17.73% |
C4—Immature pine | 1% | 4% | 4% | 5% | 7% | 79% | 8.1% |
D1—Leafless aspen | 5% | 11% | 4% | 4% | 17% | 59% | 0.83% |
D2—Leaf-on aspen | 1% | 7% | 15% | 4% | 6% | 67% | 0.41% |
FX—Fir | 16% | 16% | 6% | 13% | 0% | 49% | 0.03% |
LX—Larch | 1% | 4% | 14% | 16% | 14% | 51% | 6.95% |
M1—Boreal mixedwoods, leafless | 1% | 3% | 8% | 7% | 11% | 70% | 2.81% |
M2—Boreal mixedwoods leaf-on | 3% | 4% | 6% | 8% | 12% | 67% | 26.23% |
All forest | 2% | 5% | 7% | 8% | 11% | 68% | 90.71% |
Non-forest | |||||||
Open shrub | 1% | 2% | 0% | 1% | 0% | 96% | 0.06% |
Closed shrub | 6% | 15% | 14% | 10% | 13% | 42% | 2.27% |
Open muskeg | 10% | 10% | 3% | 9% | 5% | 62% | 1.21% |
Treed muskeg | 2% | 6% | 7% | 4% | 10% | 72% | 5.49% |
Brush and alder | 0% | 15% | 0% | 25% | 0% | 60% | 0.06% |
Bryophytes | 0% | 0% | 0% | 0% | 100% | 0% | 0% |
Grassland | 1% | 4% | 21% | 28% | 3% | 43% | 0.2% |
All non-forest | 4% | 9% | 8% | 7% | 10% | 63% | 9.29% |
All forest and non-forest | 2% | 5% | 7% | 7% | 10% | 68% | 100% |
Variable | Vegetation Mortality | |||||
---|---|---|---|---|---|---|
0% | 1%–25% | 2%–50% | 51%–75% | 76%–94% | ≥95% | |
Elevation | 711.8 (234.5) | 561.4 (249.3) | 606.1 (262) | 614.1 (252.1) | 611.5 (260.4) | 598.5 (268.3) |
CTI | 9.0 (2.1) | 9.5 (2.3) | 9.1 (2) | 9.1 (2) | 9.0 (2) | 8.9 (2) |
Slope (degrees) | 2.9 (2.6) | 2.1 (3.2) | 2.5 (3.3) | 2.5 (3.2) | 2.8 (3.7) | 2.9 (3.6) |
Slope position | −7.2 (145.7) | −7.0 (161.8) | −3.0 (188) | 1.4 (174.8) | 2.7 (183.8) | 11.0 (196.7) |
Curvature | −4.1 (84.2) | −3.9 (93.8) | −1.7 (108.5) | 0.8 (101.1) | 1.5 (106.5) | 6.2 (113.4) |
TSRAI | 5.1 (3.6) | 5.5 (3.2) | 4.9 (3.3) | 5.1 (3.4) | 5.1 (3.3) | 5.3 (3.4) |
SCOSA | −7.1 (46.4) | −7.4 (49.2) | −4.7 (49) | −2.1 (39.4) | −5.8 (57.4) | −7.1 (56.8) |
SSINA | 5.7 (48.8) | −1.3 (46.7) | 3.0 (55.8) | −6.1 (62.2) | −0.8 (62.7) | −1.5 (61.8) |
Appendix B. Model Comparisons
Model | Variables a | AIC | Δ AIC b | % Correct | Kappa |
---|---|---|---|---|---|
1 (Null) | 932,037 | 0 | 17% | 0.00 | |
2 | Ecoregion | 929,929 | 2107 | 30% | 0.03 |
3 | Area | 932,030 | 7 | 32% | 0.01 |
4 | Ecoregion, area | 929,230 | 2807 | 38% | 0.04 |
5 | Ecoregion * area | 920,267 | 11,769 | 37% | 0.07 |
Model | Variables a | AIC | Δ AIC b | % Correct | Kappa |
---|---|---|---|---|---|
1 (Null) | 932,037 | 0 | 17% | 0.00 | |
2 | Fuel category | 925,179 | 6858 | 20% | −0.01 |
3 | Overstory crown closure | 928,397 | 3640 | 36% | 0.02 |
4 | Soil moisture class | 931,447 | 590 | 44% | 0.02 |
5 | Understory crown closure | 931,840 | 197 | 34% | 0.02 |
6 | Understory height | 931,912 | 125 | 36% | −0.02 |
7 | Age | 931,918 | 119 | 26% | 0.01 |
8 | Overstory height | 931,948 | 88 | 32% | 0.00 |
9 | Fuel category, overstory crown closure, understory crown closure, understory height, age, overstory height | 917,106 | 14,930 | 43% | 0.07 |
10 | Fuel category, age, overstory crown closure * overstory height, understory crown closure * understory height | 915,557 | 16,479 | 42% | 0.07 |
11 | Fuel category, overstory crown closure, understory crown closure, understory height, age | 917,529 | 14,507 | 43% | 0.07 |
Model | Variables a | AIC | Δ AIC b | % Correct | Kappa |
---|---|---|---|---|---|
1 (Null) | 932,037 | 0 | 17% | 0.00 | |
2 | Elevation | 930,250 | 1787 | 36% | 0.02 |
3 | CTI | 931,265 | 771 | 41% | 0.02 |
4 | SCOSA, SSINA | 931,726 | 310 | 29% | 0.02 |
5 | Slope | 931,741 | 296 | 23% | 0.00 |
6 | Slope position | 931,760 | 277 | 33% | 0.01 |
7 | TSRAI | 932,038 | −1 | 39% | 0.00 |
8 | Elevation, CTI, SCOSA, SSINA, Slope, Slope position | 928,148 | 3889 | 33% | 0.02 |
9 | Elevation, CTI, SCOSA, SSINA, Slope | 928,282 | 3755 | 34% | 0.02 |
10 | Elevation, CTI, SCOSA, SSINA | 928,454 | 3583 | 34% | 0.02 |
11 | Elevation, CTI | 929,482 | 2555 | 34% | 0.02 |
12 | Elevation * CTI | 929,186 | 2851 | 32% | 0.03 |
Model | Variables a | AIC | Δ AIC b | % Correct | Kappa |
---|---|---|---|---|---|
1 (Null) | 932,037 | 0 | 17% | 0.00 | |
2 | DC | 923,964 | 8072 | 43% | 0.04 |
3 | FWI | 924,210 | 7827 | 51% | 0.05 |
4 | ISI | 926,688 | 5349 | 53% | 0.06 |
5 | DC, FWI, ISI | 920,298 | 11,739 | 34% | 0.02 |
6 | DC * FWI * ISI | 914,502 | 17,535 | 47% | 0.03 |
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Type | Variable | Description |
---|---|---|
Site | Ecoregion | Ecological land classification [32,33] |
Event area (m2) | Event area within boundary defined by vegetation mortality including unburned islands. | |
Vegetation | Age (years) | Year of the fire—estimated year of stand origin (photo-interpreted). Zero for non-forested polygons. |
polygon | Fuel category | See Table 2. |
Height (m) | Average height of the dominant and codominant trees of the leading species. Zero for non-forest. | |
Overstory crown closure (%) | Percent ground area covered by crowns of the dominant and codominant trees. Zero for non-forest. | |
Soil moisture class | Interpreted classification of dry, mesic, or wet. | |
Understory crown closure (%) | Cover of trees forming a distinct understory layer. Zero for non-forest or no understory layer. | |
Understory height (m) | Average height of trees forming a distinct understory layer. Zero for non-forest or no understory layer. | |
Ladder fuel index | Ratio of overstory and understory height multiplied by understory crown closure (following Alexander et al. [39]). | |
Topography: All variables calculated using the 30 m Digital Elevation Model (DEM). | Elevation (m) | |
Slope (degrees) | ||
Curvature | Surface curvature. Positive is convex (ridges), zero is flat, and negative is concave (valleys) [40]. | |
Solar aspect index (TSRAI) | Circular aspect: 0 on northeast slopes, 0.5 for flat ground to 1 on southwest slopes [41]. | |
Compound topographic index (CTI) | Potential soil moisture, based on slope and catchment area. High values have potentially high soil moisture [42]. | |
SCOSA + SSINA | Slope * cosine (aspect) and slope * sine (aspect). Represents the “northness” and “eastness” of a pixel, respectively [43]. | |
Slope position | Relative elevation. Areas with values higher than 1 are higher than the surroundings and vise-versa [44]. | |
Fire weather | Fine fuel moisture code (FFMC) | Moisture content of litter and fine materials indicating the ease of ignition and flammability of fine fuels. |
Duff moisture code (DMC) | Related to the average moisture content of organic soil layers to a moderate depth. | |
Drought Code (DC) | Indicates seasonal drought and the expected smouldering in deep organic soil layers and large logs. | |
Initial Spread Index (ISI) | Expected rate of fire spread given wind and FFMC. ISI threshold is the proportion of fire days with ISI > 8.7 [45]. | |
Build Up Index (BUI) | A rating of the total amount of fuel available for combustion by combining DMC and DC. | |
Fire Weather Index (FWI) | Index of potential fire intensity given ISI and BUI. FWI threshold is the proportion of fire days FWI > 19 [45]. |
Type | Variable | Description |
---|---|---|
Forest | C2 | Boreal spruce: Spruce (Picea spp.) as the leading species. |
C3 | Mature pine: Pine (Pinus spp.) as the leading species, age > 40 years. | |
C4 | Immature Pine (Pinus spp.) as the leading species, age ≤ 40 years. | |
D1 | Leafless aspen: Trembling aspen (Populus tremuloides (Michx.)) and other types of aspen as the leading species, fire event started before June 1st (i.e., commonly before leaves flushed). | |
D2 | Leaf-on aspen: Trembling aspen (Populus tremuloides (Michx.)) and other types of aspen (Populus spp.) as the leading species, fire event started after June 1st (i.e., commonly after leaves flushed). | |
FX | Fir: Balsam fir (Abies balsamea (L.) Mill.) as the leading species. | |
LX | Larch: Larch (Larix laricina (Du Roi) K. Kosh) as the leading species. | |
M1 | Boreal mixedwoods, leafless: Conifer and deciduous species mixed in the overstory, fire event started before June 1st. | |
M2 | Boreal mixedwoods, leaf-on: Mixed conifer and deciduous species in the overstory, fire event started after June 1st. | |
Non-forest | Seven classes: Open shrub, closed shrub, open muskeg, treed muskeg, brush and alder, bryophytes, and grassland. |
Number of | Vegetation Mortality | |||||||
---|---|---|---|---|---|---|---|---|
Ecoregion | Fire Events | Pixels | 0% | 1%–25% | 26%–50% | 51%–75% | 76%–94% | ≥95% |
Boreal plains | 24 | 246,951 | 3% | 5% | 7% | 8% | 13% | 64% |
Canadian Shield | 7 | 166,425 | 1% | 5% | 7% | 7% | 8% | 72% |
Foothills | 3 | 8378 | 2% | 7% | 7% | 2% | 0% | 82% |
Rocky Mountains | 3 | 11,721 | 3% | 5% | 6% | 2% | 5% | 78% |
All | 37 | 433,475 | 2% | 5% | 7% | 7% | 10% | 68% |
Variable | Vegetation Mortality | |||||
---|---|---|---|---|---|---|
0% | 1%–25% | 26%–50% | 51%–75% | 76%–94% | ≥95% | |
ISI Median | 4.8 (2.6) | 6.2 (4.2) | 5.4 (3.4) | 5.2 (3) | 4.5 (2.2) | 4.3 (2.1) |
ISI Min | 1.6 (2.3) | 2.7 (4.7) | 1.6 (4) | 1.3 (3.3) | 0.8 (1.9) | 0.7 (1.7) |
ISI Max | 15.5 (3.2) | 13 (4.2) | 12.7 (3.5) | 13.5 (3.8) | 13.4 (4.4) | 12.2 (4.1) |
ISI Range | −13.1 (5.7) | −7.7 (7.8) | −9.6 (6.7) | −10.7 (7) | −10.7 (8) | −8.7 (8.5) |
ISI Threshold | 0.2 (0.2) | 0.3 (0.3) | 0.2 (0.2) | 0.2 (0.2) | 0.1 (0.1) | 0.1 (0.1) |
DC Median | 207.2 (61.9) | 254.2 (118.9) | 290.1 (110.6) | 282.9 (107.2) | 275.1 (105.1) | 276.2 (104.8) |
DC Min | 166.1 (56.4) | 217.3 (109.4) | 247 (105.7) | 238.5 (103.9) | 225.6 (103.4) | 229.6 (102.2) |
DC Max | 15.5 (3.2) | 13.0 (4.2) | 12.7 (3.5) | 13.5 (3.8) | 13.4 (4.4) | 12.2 (4.1) |
DC Range | 62.9 (51.5) | 52.6 (65.4) | 74.9 (58) | 80.4 (53) | 79.6 (62.6) | 70.4 (76.2) |
FWI Median | 14.3 (6.9) | 17.5 (8.4) | 16.5 (6.2) | 16.3 (6.1) | 14.2 (6.1) | 13.8 (6.3) |
FWI Min | 5.1 (7.4) | 7.8 (10.1) | 4.7 (8.1) | 4.1 (7.2) | 2.8 (4.8) | 2.7 (5.1) |
FWI Max | 35.8 (5.3) | 31.5 (8.6) | 32.5 (6.4) | 34.1 (6.4) | 33.1 (8.2) | 31.2 (8) |
FWI Range | −29.2 (11.9) | −18.1 (18.2) | −24.3 (16.7) | −26.1 (17.1) | −25.2 (18.9) | −20.8 (21.2) |
FWI Threshold | 0.3 (0.3) | 0.4 (0.4) | 0.4 (0.3) | 0.4 (0.3) | 0.3 (0.2) | 0.3 (0.2) |
Model | Variables a | AIC | Δ AIC b | % Correct | Kappa |
---|---|---|---|---|---|
1 (null) | 932,037 | 0 | 17% | 0.00 | |
2 | Ecoregion * area, fuel category, overstory crown closure, understory crown closure, understory height, age, elevation * CTI, DC * FWI * ISI | 888,482 | 43,555 | 40% | 0.07 |
3 | Ecoregion * (overstory crown closure, understory crown closure, understory height, age, elevation * CTI), DC * FWI * ISI | 870,911 | 61,126 | 39% | 0.10 |
Predicted Vegetation Mortality Class | Actual Vegetation Mortality Class | |||||
---|---|---|---|---|---|---|
0% | 1%–25% | 26%–50% | 51%–75% | 76%–94% | ≥95% | |
0% | 66% | 31% | 14% | 16% | 16% | 7% |
1%–25% | 19% | 19% | 15% | 13% | 15% | 9% |
26%–50% | 2% | 7% | 12% | 13% | 9% | 8% |
51%–75% | 1% | 5% | 8% | 8% | 5% | 5% |
76%–94% | 7% | 19% | 27% | 24% | 22% | 23% |
≥95% | 4% | 19% | 25% | 25% | 33% | 48% |
© 2016 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC-BY) license (http://creativecommons.org/licenses/by/4.0/).
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Ferster, C.J.; Eskelson, B.N.I.; Andison, D.W.; LeMay, V.M. Vegetation Mortality within Natural Wildfire Events in the Western Canadian Boreal Forest: What Burns and Why? Forests 2016, 7, 187. https://doi.org/10.3390/f7090187
Ferster CJ, Eskelson BNI, Andison DW, LeMay VM. Vegetation Mortality within Natural Wildfire Events in the Western Canadian Boreal Forest: What Burns and Why? Forests. 2016; 7(9):187. https://doi.org/10.3390/f7090187
Chicago/Turabian StyleFerster, Colin J., Bianca N. I. Eskelson, David W. Andison, and Valerie M. LeMay. 2016. "Vegetation Mortality within Natural Wildfire Events in the Western Canadian Boreal Forest: What Burns and Why?" Forests 7, no. 9: 187. https://doi.org/10.3390/f7090187
APA StyleFerster, C. J., Eskelson, B. N. I., Andison, D. W., & LeMay, V. M. (2016). Vegetation Mortality within Natural Wildfire Events in the Western Canadian Boreal Forest: What Burns and Why? Forests, 7(9), 187. https://doi.org/10.3390/f7090187