Wildfire Response Performance Measurement: Current and Future Directions
Abstract
:1. Introduction
1.1. Response Success and Responder Exposure: The Case for Enhanced Data Collection on Suppression Resource Use and Effectiveness
1.2. Background on Performance Measurement in the Forest Service, and Origins of Developing Exposure-Relevant KPIs
1.3. Creating Effective Key Performance Indicators (KPIs) for Fire Response
2. Developing and Prototyping KPIs for Wildfire Response
2.1. Measurement Scale and Scope Considerations
2.2. Available Research Products to Prototype KPIs
2.2.1. KPI #1: Suppression Resource Use: Relative Production Index (RPI) and Productive Efficiency (PE)
2.2.2. KPI #2: Suppression Resource Use: Daily Resource Capacity (DRC)
2.2.3. KPI #3: Suppression Effectiveness: Fire Line Effectiveness (FLE)
2.2.4. KPI #4: Suppression Effectiveness: Air Tanker Drop Conditions (ATDC)
3. Operationalizing and Enhancing KPIs
3.1. Key Data and Analytical Needs
- Daily suppression actions by activity per division. This would include explanation of what actions were taken during the operational period, i.e., amount of line constructed, number of structures protected, amount of area prepped for burnout, and the number and type of resources used for each action (Table 9).
- Daily fire perimeter from infrared or reconnaissance flights.
- Gridded Weather Observations. Gridded weather at a resolution of 2.5 km or smaller will enhance our ability to understand how weather influenced fire behavior and suppression outcomes. This would be a notable improvement over Remote Automated Weather Station data, which the fire management community has relied on for years to depict weather conditions across a fire area.
- Division Supervisors, Operations Section Chiefs and Field Observers will need to be utilized to document daily suppression activities, including what resource was associated with each action. GIS Specialists will be utilized to create a geospatial database of daily activities and accomplishments. Situation Unit Leaders will need to review the daily activity data and will certify data completion and data accuracy.
3.2. Envisioning Next-Generation KPIs
4. Discussion
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Element | Primary Question |
---|---|
Big Picture | |
Objective | What are the intended results, and how do they relate to strategic goals? |
Measure | What is the specific measurement to be tracked? |
Rationale | Why is the measure relevant or useful? |
Interpretation | What does the measure tell us? |
Details | |
Frequency | How often should this KPI be measured? |
Data & Methods | Where will the data come from, and how is the KPI calculated? |
Performance Evaluation | |
Target | What level or range of performance do we want to achieve? |
Standard | How do we define success in relation to attainment of target performance? |
KPI Index | KPI Title | Definition | Primary Suppression Data Source(s) |
---|---|---|---|
Suppression Resource Use | |||
1 | Relative Production Index & Productive Efficiency | Ratios relating total fire line production capacity to length of final fire perimeter, and total fire line production capacity to actual construction | ROSS; ICS-209; NIFC FTP |
2 | Daily Resource Capacity | Daily resource capacity due to effects of assigned incident management team | ROSS; ICS-209 |
Suppression Effectiveness | |||
3 | Fire Line Effectiveness | Ratio of total fire line construction to amount of fire line that engaged the fire and amount of fire line that held or burned over | NIFC FTP |
4 | Air Tanker Drop Conditions | Matrix of topography, fuel and weather conditions at time and location of drop | ATU; OLMS |
Fire Index | Area (ha) | Perimeter (km) | Duration (Days) |
---|---|---|---|
A | 66,290 | 756.5 | 85 |
B | 21,781 | 466.9 | 83 |
C | 7458 | 62.7 | 89 |
D | 77,346 | 480.5 | 113 |
E | 10,647 | 92.8 | 93 |
F | 11,125 | 154.0 | 83 |
G | 9723 | 79.5 | 44 |
H | 2183 | 108.5 | 121 |
I | 6006 | 298.6 | 51 |
J | 52,631 | 559.3 | 36 |
K | 26,680 | 223.0 | 52 |
L | 17,479 | 368.4 | 69 |
Condition | Possible Interpretations |
---|---|
RPI > 1 | Suppression strategy full perimeter control |
Significant amount of fire line that burned over | |
Significant amount of indirect or contingency line that never engaged fire | |
Resources operating below estimated productive capacity when constructing fire line | |
Resources assigned to tasks other than fire line construction | |
RPI < 1 | Suppression strategy not full perimeter control |
Resources operating above estimated productive capacity when constructing fire line | |
PE > 1 | Resources operating below estimated productive capacity when constructing fire line |
PE < 1 | Resources operating above estimated productive capacity when constructing fire line |
Fire Index | TPC (km) | TFP (km) | T (km) | RPI | PE |
---|---|---|---|---|---|
A | 1724.9 | 756.5 | 254.6 | 2.3 | 6.8 |
B | 1701.3 | 466.9 | 322.8 | 3.6 | 5.3 |
C | 1423.1 | 62.7 | 166.9 | 22.7 | 8.5 |
D | 3036.5 | 480.5 | 1023.5 | 6.3 | 3.0 |
E | 1478.9 | 92.8 | 324.8 | 15.9 | 4.6 |
F | 2067.3 | 154.0 | 309.6 | 13.4 | 6.7 |
G | 899.9 | 79.5 | 93.3 | 11.3 | 9.6 |
H | 1923.3 | 108.5 | 149.0 | 17.7 | 12.9 |
I | 3415.2 | 298.6 | 616.8 | 11.4 | 5.5 |
J | 4171.9 | 559.3 | 381.6 | 7.5 | 10.9 |
K | 2988.3 | 223.0 | 263.0 | 13.4 | 11.4 |
L | 2615.4 | 368.4 | 475.4 | 7.10 | 5.5 |
Quintile (# IMTs in bin) | Bin Average | Sum of Absoluate Deviations from Mean DRC for Quintile | Percent of Total |
---|---|---|---|
Lowest (17) | −1282.79 | 7341.82 | 19.56 |
2nd-Lowest (18) | −465.32 | 2322.09 | 6.19 |
Middle (18) | 0.62 | 2440.62 | 6.50 |
2nd-Highest (18) | 517.68 | 3509.02 | 9.35 |
Highest (17) | 2667.63 | 21,928.65 | 58.41 |
Condition | Possible Interpretations |
---|---|
Tr > 1 | Suppression strategy full perimeter control |
Significant amount of fire line that burned over | |
Significant amount of indirect or contingency line that never engaged fire | |
Tr < 1 | Suppression strategy not full perimeter control |
Er ≈ 1 | All indirect or contingency line ultimately engaged fire |
Significant effort devoted to construction of direct fire line | |
Er < 1 | Significant effort devoted to construction of indirect or contingency line |
HEr ≈ 1 | Engaged fire line effective in all locations |
HEr < 1 | Engaged fire line not effective in all locations |
Drop Conditions | Fire A | Fire B | Fire C | Fire E | Fire G |
---|---|---|---|---|---|
Total Drops | 72 | 44 | 77 | 103 | 57 |
Steep slopes (SS) | 0.31 | 0.66 | 0.81 | 0.88 | 0.23 |
Timber fuel type (TF) | 0.75 | 0.61 | 0.26 | 0.78 | 0.46 |
Active burning period (ABP) | 0.68 | 0.64 | 0.58 | 0.51 | 0.65 |
SS & TF | 0.18 | 0.39 | 0.22 | 0.68 | 0.14 |
SS & ABP | 0.22 | 0.45 | 0.47 | 0.43 | 0.16 |
TF & ABP | 0.47 | 0.36 | 0.17 | 0.42 | 0.37 |
SS & TF & ABP | 0.10 | 0.25 | 0.13 | 0.35 | 0.12 |
Resource | Activity | Supplementary Information |
---|---|---|
Type 1 crew Type 2 crew Type 1 dozer Type 1 engine Large Air Tanker Type 1 helicopter | Direct line Indirect line Contingency line Point protection Mop up Rehab Scouting Burnout operation | Number of resources Local versus external Hours spent on assignment Continued or new assignment Day or nightime operations |
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Thompson, M.P.; Lauer, C.J.; Calkin, D.E.; Rieck, J.D.; Stonesifer, C.S.; Hand, M.S. Wildfire Response Performance Measurement: Current and Future Directions. Fire 2018, 1, 21. https://doi.org/10.3390/fire1020021
Thompson MP, Lauer CJ, Calkin DE, Rieck JD, Stonesifer CS, Hand MS. Wildfire Response Performance Measurement: Current and Future Directions. Fire. 2018; 1(2):21. https://doi.org/10.3390/fire1020021
Chicago/Turabian StyleThompson, Matthew P., Christopher J. Lauer, David E. Calkin, Jon D. Rieck, Crystal S. Stonesifer, and Michael S. Hand. 2018. "Wildfire Response Performance Measurement: Current and Future Directions" Fire 1, no. 2: 21. https://doi.org/10.3390/fire1020021
APA StyleThompson, M. P., Lauer, C. J., Calkin, D. E., Rieck, J. D., Stonesifer, C. S., & Hand, M. S. (2018). Wildfire Response Performance Measurement: Current and Future Directions. Fire, 1(2), 21. https://doi.org/10.3390/fire1020021