Defining and Measuring Forest Dependence in the United States: Operationalization and Sensitivity Analysis
Abstract
:1. Introduction
Objectives
- Create a framework for understanding various forms of “forest dependence” in the United States, based on past literature;
- Identify data sources of potential metrics of forest dependence, with complete geographic coverage, which are likely to be available in future years;
- Determine reasonable thresholds of forest dependence for each metric and map these nationwide; and
- Understand how changes in those thresholds affect the number and geography of communities identified as forest-dependent.
2. Background
2.1. Forest Dependence, Conceptually
2.2. Communities, Conceptually
2.3. Identifying Natural-Resource-Dependent Communities in the United States and Canada, Empirically
3. Materials and Methods
- Readily and publicly available;
- Wall-to-wall geographic coverage for counties and county equivalents in the United States;
- From a reliable source; and
- Data collection and reporting has been conducted consistently and repeated over various time frames in the past and is likely to be continued in the future.
3.1. Criterion 1: Environmentally Forest-Dependent Communities
3.2. Criterion 2: Economically Forest-Dependent Communities
3.3. Criterion 3: Socially Forest-Dependent Communities
3.4. Baseline Thresholds and Sensitivity Analysis
3.5. Geographic and Metro/Non-Metro Variation
- Northeast: Connecticut, Delaware, District of Columbia, Maine, Maryland, Massachusetts, New Hampshire, New Jersey, New York, Ohio, Pennsylvania, Rhode Island, Vermont, West Virginia.
- North Central: Illinois, Indiana, Iowa, Michigan, Minnesota, Missouri, Wisconsin.
- Southeast: Florida, Georgia, North Carolina, South Carolina, Virginia.
- South Central: Alabama, Arkansas, Kentucky, Louisiana, Mississippi, Oklahoma, Tennessee, Texas.
- Great Plains: Kansas, Nebraska, North Dakota, South Dakota.
- Intermountain: Arizona, Colorado, Idaho, Montana, Nevada, New Mexico, Utah, Wyoming.
- Pacific Northwest: Alaska, Oregon, Washington.
- Pacific Southwest: California, Hawaii.
3.6. Limitations
4. Results
4.1. Data Summary
4.2. Geographic and Metro/Non-Metro Variation
4.3. Sensitivity Analysis on Threshold Levels
5. Discussion and Conclusions
6. Disclaimers
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Study | Country | Resource | Community | Economic | Environmental |
---|---|---|---|---|---|
Hajjar, et al. [15] | Canada | Forest | Municipality | ≥10% employment in the forest sector | |
Haynes [16] | USA | Forest | County | >66.2% forest land | |
Stedman, et al. [17] | Canada | Forest industries | Census subdivision | No fixed threshold; proportion of employment in forest industries | |
Rasker [18] | USA | Timber | County | ≥20% of total workers’ earnings from timber-related jobs | |
USDA Economic Research Service [19] | USA | Farming | County | ≥25% total earnings from farms; or ≥16% total employment from farms | |
Deavers and Brown [20] | USA | Agriculture | County | ≥20% labor and income from agriculture | |
USDA Economic Research Service [19] | USA | Mining | County | ≥13% total earnings from mining; or ≥8% total county employment from mining | |
Deavers and Brown [20] | USA | Mining | County | ≥20% labor and income from mining | |
USDA Economic Research Service [19] | USA | Recreation | County | Composite score a |
Criteria | Baseline Threshold | Sensitivity Analysis |
---|---|---|
1. Environmental: minimum forest land area | 75% | 70–80% |
2. Economic: either 2.1 or 2.2 | ||
Criteria 2.1: minimum employees in the forest sector | 10% | 5–15% |
Criteria 2.2: minimum earnings from the forest sector | 15% | 10–20% |
3. Social: both 3.1 and 3.2 | ||
Criteria 3.1: minimum forest land area | 30% | 25–35% |
Criteria 3.2: minimum indigenous population | 5% | 0–10% |
Mean | Standard Deviation | Median | Minimum | Maximum | |
---|---|---|---|---|---|
percent of total | |||||
Forest land use | 38.6% | 28.6% | 37.6% | 0.0% | 100.0% |
Forest industry employment | 1.5% | 3.8% | 0.1% | 0.0% | 61.1% |
Forest industry earnings | 1.9% | 4.8% | 0.1% | 0.0% | 63.9% |
Indigenous population | 2.1% | 7.8% | 0.4% | 0.0% | 92.5% |
Criterion | Baseline | Counties Meeting Criterion | Sensitivity Analysis (−5%) | Counties Meeting Criterion | Sensitivity Analysis (+5%) | Counties Meeting Criterion |
---|---|---|---|---|---|---|
1. Environmental: minimum forest land area | 75% | 402 | 70% | 580 | 80% | 273 |
2. Economic: either 2.1 or 2.2 | 120 | 268 | 59 | |||
2.1: minimum employees in the forest sector | 10% | 118 | 5% | 268 | 15% | 50 |
2.2: minimum earnings from the forest sector | 15% | 87 | 10% | 156 | 20% | 50 |
3. Social: both 3.1 and 3.2 | 103 | 1811 | 53 | |||
3.1: minimum forest land area | 30% | 1756 | 25% | 1901 | 35% | 1632 |
3.2: minimum indigenous population | 5% | 210 | 0% | 2992 | 10% | 127 |
Counties meeting criteria 1, 2, or 3 | 524 | 1819 | 347 |
Forest Dependent | Not Forest Dependent | Total | Forest Dependent | |
---|---|---|---|---|
Region | counties | percent of counties | ||
Northeast | 80 | 308 | 388 | 20.6% |
North Central | 57 | 593 | 650 | 8.8% |
Southeast | 123 | 382 | 505 | 24.4% |
South Central | 182 | 651 | 833 | 21.8% |
Great Plains | 0 | 317 | 317 | 0.0% |
Intermountain | 37 | 244 | 281 | 13.2% |
Pacific Northwest | 34 | 69 | 103 | 33.0% |
Pacific Southwest | 11 | 52 | 63 | 17.5% |
Total | 524 | 2616 | 3140 | 16.7% |
Metro | 117 | 1051 | 1168 | 10.0% |
Non-metro | 407 | 1565 | 1972 | 20.6% |
Total | 524 | 2616 | 3140 | 16.7% |
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Frey, G.E.; Kallayanamitra, C.; Wilkens, P.; James, N.A. Defining and Measuring Forest Dependence in the United States: Operationalization and Sensitivity Analysis. Forests 2022, 13, 577. https://doi.org/10.3390/f13040577
Frey GE, Kallayanamitra C, Wilkens P, James NA. Defining and Measuring Forest Dependence in the United States: Operationalization and Sensitivity Analysis. Forests. 2022; 13(4):577. https://doi.org/10.3390/f13040577
Chicago/Turabian StyleFrey, Gregory E., Chalisa Kallayanamitra, Philadelphia Wilkens, and Natasha A. James. 2022. "Defining and Measuring Forest Dependence in the United States: Operationalization and Sensitivity Analysis" Forests 13, no. 4: 577. https://doi.org/10.3390/f13040577
APA StyleFrey, G. E., Kallayanamitra, C., Wilkens, P., & James, N. A. (2022). Defining and Measuring Forest Dependence in the United States: Operationalization and Sensitivity Analysis. Forests, 13(4), 577. https://doi.org/10.3390/f13040577