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4/15/22, 9:06 AMi-Tree Canopy Page 1 of 3https://canopy.itreetools.org/report i-Tree Canopy Cover Assessment and Tree Benefits Report Estimated using random sampling statistics on 4/15/2022 Abbr.Cover Class Description Points % Cover ± SE Area (ac) ± SE H Grass/Herbaceous 4 4.00 ± 2.00 1.04 ± 0.52 IB Impervious Buildings 0 0.00 ± 0.00 0.00 ± 0.00 IO Impervious Other 0 0.00 ± 0.00 0.00 ± 0.00 IR Impervious Road 0 0.00 ± 0.00 0.00 ± 0.00 S Soil/Bare Ground 0 0.00 ± 0.00 0.00 ± 0.00 T Tree/Shrub 95 95.00 ± 2.18 24.75 ± 0.57 W Water 1 1.00 ± 1.00 0.26 ± 0.26 Total 100 100.00 26.06 Tree Benefit Estimates: Carbon (English units) Description Carbon (T)±SE CO₂ Equiv. (T)±SE Value (USD)±SE Report a map error Imagery ©2022 , CNES / Airbus, MassGIS, Commonwealth of Massachusetts EOEA, Maxar Technologies, U.S. Geological Survey, USDA/FPAC/GEO H IB IO IR S T W0% 20% 40% 60% 80% 100% 0ac 5ac 10ac 15ac 20ac 25ac Grass/Herbaceous Impervious Buildings Impervious Other Impervious Road Soil/Bare Ground Tree/Shrub Water Land Cover Cover Class% CoveredArea Covered (ac) 4/15/22, 9:06 AMi-Tree Canopy Page 2 of 3https://canopy.itreetools.org/report Sequestered annually in trees 28.05 ±0.64 102.84 ±2.36 $4,784 ±110 Stored in trees (Note: this benefit is not an annual rate)848.59 ±19.47 3,111.48 ±71.38 $144,727 ±3,320 Currency is in USD and rounded. Standard errors of removal and benefit amounts are based on standard errors of sampled and classified points. Amount sequestered is based on 1.133 T of Carbon, or 4.155 T of CO₂, per ac/yr and rounded. Amount stored is based on 34.281 T of Carbon, or 125.697 T of CO₂, per ac and rounded. Value (USD) is based on $170.55/T of Carbon, or $46.51/T of CO₂ and rounded. (English units: T = tons (2,000 pounds), ac = acres) Tree Benefit Estimates: Air Pollution (English units) Abbr.Description Amount (lb)±SE Value (USD)±SE CO Carbon Monoxide removed annually 8.83 ±0.20 $1 ±0 NO2 Nitrogen Dioxide removed annually 49.55 ±1.14 $1 ±0 O3 Ozone removed annually 1,010.28 ±23.18 $107 ±2 SO2 Sulfur Dioxide removed annually 30.87 ±0.71 $0 ±0 PM2.5 Particulate Matter less than 2.5 microns removed annually 43.76 ±1.00 $169 ±4 PM10*Particulate Matter greater than 2.5 microns and less than 10 microns removed annually 93.59 ±2.15 $71 ±2 Total 1,236.87 ±28.38 $349 ±8 Currency is in USD and rounded. Standard errors of removal and benefit amounts are based on standard errors of sampled and classified points. Air Pollution Estimates are based on these values in lb/ac/yr @ $/lb/yr and rounded: CO 0.357 @ $0.08 | NO2 2.002 @ $0.02 | O3 40.813 @ $0.11 | SO2 1.247 @ $0.01 | PM2.5 1.768 @ $3.86 | PM10* 3.781 @ $0.75 (English units: lb = pounds, ac = acres) Tree Benefit Estimates: Hydrological (English units) Abbr.Benefit Amount (Kgal)±SE Value (USD)±SE AVRO Avoided Runoff 33.86 ±0.78 $303 ±7 E Evaporation 1,801.45 ±41.33 N/A N/A I Interception 1,804.00 ±41.39 N/A N/A T Transpiration 2,619.13 ±60.09 N/A N/A PE Potential Evaporation 14,754.59 ±338.49 N/A N/A PET Potential Evapotranspiration 10,402.83 ±238.66 N/A N/A Currency is in USD and rounded. Standard errors of removal and benefit amounts are based on standard errors of sampled and classified points. Hydrological Estimates are based on these values in Kgal/ac/yr @ $/Kgal/yr and rounded: AVRO 1.368 @ $8.94 | E 72.775 @ N/A | I 72.878 @ N/A | T 105.807 @ N/A | PE 596.055 @ N/A | PET 420.253 @ N/A (English units: Kgal = thousands of gallons, ac = acres) About i-Tree Canopy The concept and prototype of this program were developed by David J. Nowak, Jeffery T. Walton, and Eric J. Greenfield (USDA Forest Service). The current version of this program was developed and adapted to i-Tree by David Ellingsworth, Mike Binkley, and Scott Maco (The Davey Tree Expert Company) Limitations of i-Tree Canopy The accuracy of the analysis depends upon the ability of the user to correctly classify each point into its correct class. As the number of points increase, the precision of the estimate will increase as the standard error of the estimate will decrease. If too few points are classified, the standard error will be too high to have any real certainty of the estimate. Additional support provided by: 4/15/22, 9:06 AMi-Tree Canopy Page 3 of 3https://canopy.itreetools.org/report Use of this tool indicates acceptance of the EULA.