Vaglio Laurin, G. (corresponding author, Chiti, T.

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SUPPLEMENTARY MATERIAL For the Article: Does degradation from selective logging and illegal activities differently impact forest resources? A case study in Ghana Gaia Vaglio Laurin1,3*, William D. Hawthorne2, Tommaso Chiti1,3, Arianna Di Paola1, Roberto Cazzolla Gatti1, Sergio Marconi3, Sergio Noce1, Elisa Grieco1, Francesco Pirotti4, Riccardo Valentini1,3 Vaglio Laurin, G. (corresponding author, gaia.vagliolaurin@cmcc.it), Chiti, T. 1 (tommaso.chiti@unitus.it), Di Paola, A. (arianna.dipaola@cmcc.it), Cazzolla Gatti R. (robertocgatti@gmail.com), Noce, S. (sergio.noce@cmcc.it), Grieco, E. (elisa.grieco@cmcc.it): Impacts of Agriculture, Forests and Ecosystem Services Division, Euro-Mediterranean Center on Climate Change (IAFES-CMCC), via Pacinotti 5, Viterbo 01100, Italy. 2 Hawthorne, W.D. (will.hawthorne@btopenworld.com): Department of Plant Sciences, University of Oxford, South Parks Road, Oxford OX1 3RB, UK. 3 Marconi, S. (sergio.marconi@me.com): Department for Innovation in Biological, Agro-Food and Forest Systems (DIBAF), University of Tuscia, Viterbo 01100, Italy. 4 Pirotti, F. (francesco.pirotti@unipd.it): Interdepartmental Research Center of Geomatics (CIRGEO) Land, Environment and Agriculture and Forestry Department (TESAF), University of Padova, Legnaro 35020, Italy Supplementary material description: The following supplementary material contains eight tables and four figures. In the main text they are referred to as Tab./Fig. S##. s1

Table S1 - Recent plots information. = Ankasa National Park; = Dadieso Forest Reserve; = Bia Resource Reserve; = Bia National Park. PLOT NAME PLOT SIZE (M2) 10000 500 1600 NUMBER OF PLOTS YEAR 3 34 20 2011 2012 500 400 1600 3 10 8 500 400 1600 2 5 11 AREA 3.00 ha 1.70 ha 3.2 ha (20 cm) 1.84 ha (10 cm) 0.15 ha 0.40 ha 1.28 ha (20 cm) 0.32 ha (10 cm) 0.10 ha 0.20 ha 1.76 ha (20 cm) 0.80 ha (10 cm) s2 MIN. DBH (PLOTS #, AREA PER PLOT) 10 cm 10 cm 20 cm (20 plots, 1600 m2) 10 cm (46 subplots, 400 m2) 10 cm 10 cm 20 cm (8 plots, 1600 m2 ) 10 cm (8 subplots, 400 m2) 10 cm 10 cm 20 cm (11 plots,1600, m2) 10 cm (20 subplots, 400 m2)

Table S2 - Total area sampled and number of trees in recent data. DBH = diameter at breast height. = Ankasa National Park; = Dadieso Forest Reserve; = Bia Resource Reserve; = Bia National Park. PLOT NAME Sampled area for DBH>20 cm (ha) 4.70 3.20 1.83 2.06 Sampled area for N. of trees DBH>20 cm 899 345 235 340 s3 10<DBH<20 cm (ha) 4.70 1.84 0.87 1.10 N. of trees 10<DBH<20 cm 1356 221 207 204

Table S3 - Total area sampled and number of trees used for richness and diversity analysis; data are from subplots of 500 m2 for Ankasa, and 400 m2 for the other areas. = Ankasa National Park; = Dadieso Forest Reserve; = Bia Resource Reserve; = Bia National Park. PLOT NAME Sampled area N. of trees Sampled area for N. of trees for DBH>20 cm for DBH>20 cm DBH>10 cm for DBH>10 cm (ha) 1.70 3.20 1.68 1.96 357 345 253 352 (ha) 1.70 1.84 0.72 1.00 841 402 290 335 s4

Table S4 - Nonmetric Multidimensional Scaling (NMS) ordination of data in eight subcategories. = Ankasa National Park; = Dadieso Forest Reserve; = Bia Resource Reserve; = Bia National Park. Initial Class (vegnum) 1 2 3 4 5 6 Description Wet Evergreen forest, swampier plots. Wet Evergreen forest, plots, intermediate between 1 and 3. Wet Evergreen forest, plots, well-drained areas in the upper parts of landscape Moist Evergreen forest, 6 swampier plots. Moist Evergreen forest, 4 plots, intermediate between class 4 and 6, 1 plot from. Damper Moist Semideciduous, borderline ME/MS forest, 7 plots from and 8 from 7. Moist Semideciduous forest (intermediate between 6 and 8), 13 plots, slightly wetter 8 and more disturbed than class 8, 2 plots from. Moist Semideciduous forest (drier end of the spectrum), including all plots from s5

Table S5 - Statistics of mean tree height, diameter at breast height (DBH), and wood density parameters per DBH class, data. = Ankasa National Park; = Dadieso Forest Reserve; = Bia Resource Reserve; = Bia National Park. St.Dev = standard deviation; Min. = minimum; Max.= maximum. PLOT 10-20 cm DBH class NAME Mean St. Dev. 13.95 9.57 9.74 9.66 3.77 3.12 3.24 3.50 13.59 14.48 13.52 13.76 2.62 2.84 2.67 2.77 0.67 0.61 0.60 0.58 0.13 0.14 0.14 0.13 > 20 cm DBH class Min. Max. Mean St. Dev. Height in meters 4.10 25.80 22.35 6.30 2.70 24.80 17.28 6.28 2.50 22.60 16.00 6.80 4.00 22.00 18.62 7.57 Diameter in cm 10.00 19.90 38.49 18.06 10.00 19.70 36.60 21.49 10.00 19.90 36.89 22.68 10.00 19.80 44.72 28.30 3 3 Wood Density in 10 kg/m 0.10 0.98 0.67 0.12 0.21 0.99 0.59 0.16 0.28 0.84 0.56 0.14 0.10 0.98 0.55 0.14 s6 Min. Max. 4.00 5.00 3.00 3.80 42.60 34.80 39.00 49.00 20.00 20.00 20.00 20.00 150.00 130.00 137.50 190.00 0.31 0.21 0.21 0.21 0.97 0.99 0.88 0.99

Table S6 - Basal area and above ground biomass (AGB) values, data. = Ankasa National Park; = Dadieso Forest Reserve; = Bia Resource Reserve; = Bia National Park. PLOT NAME Basal Area (m2 ha-1) per Ha 10-20 cm DBH >20 cm DBH 4.34 27.15 2.05 15.24 3.54 18.89 2.86 36.26 AGB (Mg ha-1) per Ha 10-20 cm DBH >20 cm DBH 27.83 307.62 8.37 129.29 14.19 146.44 11.06 292.32 s7 Total 31.49 17.29 22.43 39.12 Total 335.45 137.66 160.63 303.38

Table S7 - Percentage of guilds per diameter at breast height (DBH) class, recent data. = Ankasa National Park; = Dadieso Forest Reserve; = Bia Resource Reserve; = Bia National Park. NPLD = Non Pioneer Light Demanding. %Pioneer 2.46 6.91 12.87 10.20 10-20 cm DBH %NPLD %Shade- %Swamp bearer 16.01 79.45 30.41 60.83 27.32 57.73 38.27 51.53 > 20 cm DBH %Shade- %Pioneer %NPLD 2.50 31.70 14.24 33.72 17.6 40.77 17.46 46.45 s8 2.08 1.84 2.06 0.00 bearer %Swamp 62.38 3.40 51.16 0.87 38.20 3.43 36.09 0.00

Table S8 - Historical basal area and guilds data for and. = Dadieso Forest Reserve; = Bia Resource Reserve; NPLD = Non Pioneer Light Demanding. BA m2/ha % Pioneer % NPLD (10-30 cm DBH) % Shade- % Swamp bearer (>30 cm DBH) (10-30) 5.74 5.00 18.00 74.00 0.10 1991 (>30)10.22 12.92 43.33 39.38 4.33 (10-30) 7.48 17.61 43.29 38.65 0.44 1987 (>30) 16.34 20.22 52.81 26.31 0.64 s9

Figure S1 - The study areas. Includes sites with field data (four blue squares), and sites where remote sensing data (ten red stars) were used. s10

Figure S2 - Coleman rarefaction curve. = Ankasa National Park; = Dadieso Forest Reserve; = Bia Resource Reserve; = Bia National Park. s11

Figure S3-30-year averaged monthly NDVI values in 10 forested areas in Ghana. FR = Forest Reserve; NP = National Park; RR = Resource Reserve. φ = latitude; λ = longitude. NDVI = Normalized Difference Vegetation Index. s12

Figure S4 - Anomalies in 30-year NDVI time series for ten forests in Ghana. Sites are ordered according to increasing distance (from top left to bottom right) from the wet evergreen ecological center. FR = Forest Reserve; NP = National Park; RR = Resource Reserve; NDVI = Normalized Difference Vegetation Index. s13