New Geospatial Approaches for Efficiently Mapping Forest Biomass Logistics at High Resolution over Large Areas
Abstract
:1. Introduction
Comparison of Vector and Raster Methods
2. Materials and Methods
2.1. Case Study and Area Description
2.2. Biomass Stocks
2.3. Biomass Costs
2.4. Woody Biomass Supply
2.5. Replicating This Approach
3. Results
3.1. Biomass Estimation
3.2. Delivered Costs
3.3. The Supply Chain
4. Discussion
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Treatment | Criteria | Threshold |
---|---|---|
Stand replacement | Basal area | >100 ft2/ac (>23 m2/ha) |
Stand density | 200 to 400 trees/ac (46 to 92 trees/ha) | |
Thinning | Basal area | >100 ft2/ac (>23 m2/ha) |
Stand density | >400 trees/ac (>92 trees/ha) |
Treatment | Description | % AGB Cut Assumption |
---|---|---|
Stand replacement | Trees are cut to mimic a stand replacement event; most trees are cut | 90% of AGB is cut, 10% of AGB is not cut and remains in the standing pool |
Thinning | Trees are cut to reduce the basal area and QMD to a specific target | % AGB cut to move pre-treatment BAA to target BAA; 60 ft2 per acre (14 m2 per ha), which is left in the standing pool |
Component | Type | Value | Units |
---|---|---|---|
On-road | Machine Rate | 90 | $/hour |
Speed | 15–65 (24–105) | mi/h (km/h) | |
Payload | 28 (25.4) | tons (tonnes) | |
Off-road | Machine Rate | 85 | $/hour |
Speed | 3.6 (5.8) | mi/h (km/h) | |
Payload | 4.0 (3.6) | tons (tonnes) | |
Operations | Harvesting | 15 (13.6) | $/ton ($/tonne) |
Other | Administrative | 0 (0) | $/ton ($/tonne) |
Query | Speed mi/hr (km/hr) |
---|---|
MTFCC = “S1400”: Local Road, Rural Road, City Street | 30 (48) |
MTFCC = “S1200”: Secondary road | 50 (80) |
MTFCC = “S1100”: Primary road | 60 (97) |
NOT (MTFCC = “S1400” OR MTFCC = “S1200” OR MTFCC = “S1100”) | 20 (32) |
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Share and Cite
Hogland, J.; Anderson, N.; Chung, W. New Geospatial Approaches for Efficiently Mapping Forest Biomass Logistics at High Resolution over Large Areas. ISPRS Int. J. Geo-Inf. 2018, 7, 156. https://doi.org/10.3390/ijgi7040156
Hogland J, Anderson N, Chung W. New Geospatial Approaches for Efficiently Mapping Forest Biomass Logistics at High Resolution over Large Areas. ISPRS International Journal of Geo-Information. 2018; 7(4):156. https://doi.org/10.3390/ijgi7040156
Chicago/Turabian StyleHogland, John, Nathaniel Anderson, and Woodam Chung. 2018. "New Geospatial Approaches for Efficiently Mapping Forest Biomass Logistics at High Resolution over Large Areas" ISPRS International Journal of Geo-Information 7, no. 4: 156. https://doi.org/10.3390/ijgi7040156
APA StyleHogland, J., Anderson, N., & Chung, W. (2018). New Geospatial Approaches for Efficiently Mapping Forest Biomass Logistics at High Resolution over Large Areas. ISPRS International Journal of Geo-Information, 7(4), 156. https://doi.org/10.3390/ijgi7040156