def grow(self, time: int, plot: Plot, old_tree: Tree, new_tree: Tree): """ Function that run the diameter and height growing equations Source for diameter grow equation: Doc.: Sánchez-González M, del Río M, Cañellas I, Montero G (2006). Distance independent tree diameter growth model for cork oak stands. Forest Ecology and Management, 225(1-3), 262-270 Ref.: Sánchez-González et al, 2006 Doc.: Sánchez-González M, Calama R, Cañellas I, Montero G (2007). Management oriented growth models for multifunctional Mediterranean Forests: the case of Cork Oak (Quercus suber L.). In EFI proceedings (Vol. 56, pp. 71-84) Ref.: Sánchez-González et al, 2007 Source for height/diameter equation: Doc.: Sánchez-González M, Cañellas I, Montero G (2007). Generalized height-diameter and crown diameter prediction models for cork oak forests in Spain. Forest Systems, 16(1), 76-88 Ref.: Sánchez-González et al, 2007 Doc.: Sánchez-González M, Calama R, Cañellas I, Montero G (2007). Management oriented growth models for multifunctional Mediterranean Forests: the case of Cork Oak (Quercus suber L.). In EFI proceedings (Vol. 56, pp. 71-84) Ref.: Sánchez-González et al, 2007 Source for cork grow equation: Doc.: Sánchez-González M, Calama R, Cañellas I, Montero G (2007). Management oriented growth models for multifunctional Mediterranean Forests: the case of Cork Oak (Quercus suber L.). In EFI proceedings (Vol. 56, pp. 71-84) Ref.: Sánchez-González et al, 2007 """ idu = 0.18 + 7.89/plot.density - 1.02/plot.si + 2.45/old_tree.dbh new_tree.sum_value('dbh', idu) # annual diameter increment under cork (cm) h2 = 1.3 + (plot.dominant_h - 1.3)*((new_tree.dbh/plot.dominant_dbh)**0.4898) new_tree.add_value('height', h2) # height/diameter equation result (m) t = old_tree.tree_age + 1 # years Xo1 = 0.5*(math.log(old_tree.bark) - 0.57*math.log(1 - math.exp(-0.04*old_tree.tree_age))) # Xo2 = math.sqrt((math.log(old_tree.bark) - 0.57*math.log(1 - math.exp(-0.04*old_tree.tree_age))**2 - 4*1.86*math.log(1 - math.exp(-0.04*old_tree.tree_age)))) Xo = Xo1 # +- Xo2 cork_2 = old_tree.bark*(((1 - math.exp(-0.04*t)) / (1 - math.exp(-0.04*old_tree.tree_age)))**((0.57+1.86)/Xo)) new_tree.sum_value('bark', cork_2)
def biomass(self, tree: Tree): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Biomass equations: Doc.: Ruiz-Peinado R, del Rio M, Montero G (2011). New models for estimating the carbon sink capacity of Spanish softwood species. Forest Systems, 20(1), 176-188 Ref.: Ruiz-Peinado et al, 2011 """ wsw = 0.0224 * (tree.dbh**1.923) * (tree.height**1.0193) if tree.dbh <= 22.5: Z = 0 else: Z = 1 wthickb = (0.247 * ((tree.dbh - 22.5)**2)) * Z wb2_7 = 0.0525 * (tree.dbh**2) wtbl = 21.927 + 0.0707 * (tree.dbh**2) - 2.827 * tree.height wr = 0.117 * (tree.dbh**2) wt = wsw + wb2_7 + wthickb + wtbl + wr tree.add_value('wsw', wsw) # wsw = stem wood (Kg) # tree.add_value('wsb', wsb) # wsb = stem bark (Kg) # tree.add_value('w_cork', w_cork) # w_cork = fresh cork biomass (Kg) tree.add_value('wthickb', wthickb) # wthickb = Thick branches > 7 cm (Kg) # tree.add_value('wstb', wstb) # wstb = wsw + wthickb, stem + branches >7 cm (Kg) tree.add_value('wb2_7', wb2_7) # wb2_7 = branches (2-7 cm) (Kg) # tree.add_value('wb2_t', wb2_t) # wb2_t = wb2_7 + wthickb; branches >2 cm (Kg) # tree.add_value('wthinb', wthinb) # wthinb = Thin branches (2-0.5 cm) (Kg) # tree.add_value('wl', wl) # wl = leaves (Kg) tree.add_value( 'wtbl', wtbl) # wtbl = wthinb + wl; branches <2 cm and leaves (Kg) # tree.add_value('wbl0_7', wbl0_7) # wbl0_7 = wb2_7 + wthinb + wl; branches <7 cm and leaves (Kg) tree.add_value('wr', wr) # wr = roots (Kg) tree.add_value('wt', wt) # wt = biomasa total (Kg)
def grow(self, time: int, plot: Plot, old_tree: Tree, new_tree: Tree): """ Function that run the diameter and height growing equations Source for diameter growing: Doc.: Trasobares A, Tomé M, Miina J (2004). Growth and yield model for Pinus halepensis Mill. in Catalonia, north-east Spain. Forest ecology and management, 203(1-3), 49-62 Ref.: Trasobares et al, 2004 Source for height/diameter equation: Equation obtained from PHRAGON_2017_v1.cs, a model of Pinus halepensis useful for the old SiManFor version, developed for Aragón by Föra Forest Techonlogies and Diputación General de Aragón """ BALthin = 0 # is not used on the simulation as the author says GI = 1 # stand growth index; difference between measured and predicted radius under bark values ~ 1 beta1 = 1.8511 beta2 = -3.9402 beta3 = -0.0085 beta4 = -0.1137 beta5 = 0.0410 beta6 = 0.5662 dbhg10 = math.exp(beta1 + beta2 / old_tree.dbh + beta3 * old_tree.dbh / GI + beta4 * old_tree.bal / (math.log(old_tree.dbh + 1)) + beta5 * BALthin + beta6 * math.log(GI)) new_tree.sum_value("dbh", dbhg10) # new_tree.sum_value("dbh", dbhg10 / 2) # that equation calculates diameter grow for 10 years, activate taht line if we want the calculation for 5 years a = 2.5511 b = pow(1.3, a) ht = pow( b + (pow(plot.dominant_h, a) - b) * (1 - math.exp(-0.025687 * new_tree.dbh)) / (1 - math.exp(-0.025687 * plot.dominant_dbh)), 1 / a) new_tree.add_value( "height", ht ) # that equation calculates height using the new diameter; is not a growing equation
def merch_classes(self, tree: Tree): """ Function used to calcule the different comercial volumes depending on the wood purposes That function is rdbh by initialize and process_plot Functions The data criteria to clasify the wood by different uses was obtained from: Doc.: Rodríguez F (2009). Cuantificación de productos forestales en la planificación forestal: Análisis de casos con cubiFOR. In Congresos Forestales Ref.: Rodríguez 2009 """ ht = tree.height # total height as ht to simplify # class_conditions has different lists for each usage, following that: [wood_usage, hmin/ht, dmin, dmax] # [WOOD USE NAME , LOG RELATIVE LENGTH RESPECT TOTAL TREE HEIGHT, MINIMUM DIAMETER, MAXIMUM DIAMETER] class_conditions = [['saw_big', 2.5 / ht, 40, 200], ['saw_small', 2.5 / ht, 25, 200], ['saw_canter', 2.5 / ht, 15, 28], ['chips', 1 / ht, 5, 1000000]] # usage and merch_list are a dictionary and a list that are returned from merch_calculation # to that function, we must send the following information: tree, class_conditions, and the name of our class on this model you are using usage, merch_list = TreeModel.merch_calculation( tree, class_conditions, PinusPinasterGalicia) counter = -1 for k, i in usage.items(): counter += 1 tree.add_value( k, merch_list[counter]) # add merch_list values to each usage
def grow(self, time: int, plot: Plot, old_tree: Tree, new_tree: Tree): """ Function that run the diameter and height growing equations Source for diameter growing: Equation obtained from PHRAGON_2017_v1.cs, a model of Pinus halepensis useful for the old SiManFor version, developed for Aragón by Föra Forest Techonlogies and Diputación General de Aragón Source for height/diameter equation: Equation obtained from PHRAGON_2017_v1.cs, a model of Pinus halepensis useful for the old SiManFor version, developed for Aragón by Föra Forest Techonlogies and Diputación General de Aragón """ if plot.si == 0: dbhg10 = 0 else: dbhg10 = 0.906633 * math.exp(0.09701 * old_tree.dbh - 0.00111 * ( old_tree.dbh ** 2) - 0.05201 * plot.basal_area + 0.050652 * plot.si - 0.09366 * old_tree.bal / plot.basal_area) # dbhg5 = dbhg10*0.5 # that equation calculates diameter grow for 10 years, activate taht line if we want the calculation for 5 years # new_tree.sum_value("dbh", dbhg5) new_tree.sum_value("dbh", dbhg10) if dbhg10 == 0: ht = 0 else: a = 2.5511 b = pow(1.3, a) ht = pow(b + (pow(plot.dominant_h, a) - b) * (1 - math.exp(-0.025687 * new_tree.dbh)) / ( 1 - math.exp(-0.025687 * plot.dominant_dbh)), 1/a) new_tree.add_value("height", ht) # that equation calculates height using the new diameter; is not a growing equation
def grow(self, time: int, plot: Plot, old_tree: Tree, new_tree: Tree): """ Function that run the diameter and height growing equations Source for grow equation: Doc.: Adame P, Hynynen J, Canellas I, del Río M. (2008). Individual-tree diameter growth model for rebollo oak (Quercus pyrenaica Willd.) coppices. Forest Ecology and Management, 255(3-4), 1011-1022 Ref.: Adame et al, 2007 Height/Diameter equation: Doc.: Adame P, del Río M, Canellas I (2008). A mixed nonlinear height–diameter model for pyrenean oak (Quercus pyrenaica Willd.). Forest ecology and management, 256(1-2), 88-98 Ref.: Adame et al, 2008 """ if plot.si == 0: dbhg10 = 0 else: STR = 0 # su valor debe ser 1 cuando la masa esta en el estrato 1 dbhg10 = math.exp(0.8351 + 0.1273 * math.log(old_tree.dbh) - 0.00006 * (old_tree.dbh**2) - 0.01216 * old_tree.bal - 0.00016 * plot.density - 0.03386 * plot.dominant_h + 0.04917 * plot.si - 0.1991 * STR) - 1 new_tree.sum_value( "dbh", dbhg10) # growing equation developed to 10 years period if dbhg10 == 0: htg10 = 0 else: htg10: float = 1.3 + ( 3.099 - 0.00203 * plot.basal_area + 1.02491 * plot.dominant_h * math.exp(-8.5052 / new_tree.dbh)) new_tree.add_value( "height", htg10) # ecuación de relación h/d, NO para el crecimiento
def grow(self, time: int, plot: Plot, old_tree: Tree, new_tree: Tree): """ Function that rdbh the diameter and height growing equations """ new_tree.sum_value("dbh", 0) new_tree.add_value("height", 0)
def biomass(self, tree: Tree): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Biomass equations: Doc.: Ruiz-Peinado R, del Rio M, Montero G (2011). New models for estimating the carbon sink capacity of Spanish softwood species. Forest Systems, 20(1), 176-188 Ref.: Ruiz-Peinado et al. 2011 """ wsw = 0.0278 * (tree.dbh**2.115) * (tree.height**0.618) wb2_t = 0.000381 * (tree.dbh**3.141) wtbl = 0.0129 * (tree.dbh**2.320) wr = 0.00444 * (tree.dbh**2.804) wt = wsw + wb2_t + wtbl + wr tree.add_value('wsw', wsw) # wsw = stem wood (Kg) # tree.add_value('wsb', wsb) # wsb = stem bark (Kg) # tree.add_value('w_cork', w_cork) # w_cork = fresh cork biomass (Kg) # tree.add_value('wthickb', wthickb) # wthickb = Thick branches > 7 cm (Kg) # tree.add_value('wstb', wstb) # wstb = wsw + wthickb, stem + branches >7 cm (Kg) # tree.add_value('wb2_7', wb2_7) # wb2_7 = branches (2-7 cm) (Kg) tree.add_value('wb2_t', wb2_t) # wb2_t = wb2_7 + wthickb; branches >2 cm (Kg) # tree.add_value('wthinb', wthinb) # wthinb = Thin branches (2-0.5 cm) (Kg) # tree.add_value('wb05', wb05) # wb05 = thinniest branches (<0.5 cm) (Kg) # tree.add_value('wl', wl) # wl = leaves (Kg) tree.add_value( 'wtbl', wtbl) # wtbl = wthinb + wl; branches <2 cm and leaves (Kg) # tree.add_value('wbl0_7', wbl0_7) # wbl0_7 = wb2_7 + wthinb + wl; branches <7 cm and leaves (Kg) tree.add_value('wr', wr) # wr = roots (Kg) tree.add_value('wt', wt) # wt = biomasa total (Kg)
def biomass(self, tree: Tree): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Biomass equations: Doc.: Ruiz-Peinado R, Montero G, del Rio M (2012). Biomass models to estimate carbon stocks for hardwood tree species. Forest systems, 21(1), 42-52 Ref.: Ruiz-Peinado et al, 2012 """ wstb = 0.0261 * (tree.dbh**2) * tree.height wb2_7 = -0.0260 * (tree.dbh**2) + 0.536 * tree.height + 0.00538 * ( tree.dbh**2) * tree.height wthinb = 0.898 * tree.dbh - 0.445 * tree.height wr = 0.143 * (tree.dbh**2) wt = wstb + wb2_7 + wthinb + wr # tree.add_value('wsw', wsw) # wsw = stem wood (Kg) # tree.add_value('wsb', wsb) # wsb = stem bark (Kg) # tree.add_value('w_cork', w_cork) # w_cork = fresh cork biomass (Kg) # tree.add_value('wthickb', wthickb) # wthickb = Thick branches > 7 cm (Kg) tree.add_value( 'wstb', wstb) # wstb = wsw + wthickb, stem + branches >7 cm (Kg) tree.add_value('wb2_7', wb2_7) # wb2_7 = branches (2-7 cm) (Kg) # tree.add_value('wb2_t', wb2_t) # wb2_t = wb2_7 + wthickb; branches >2 cm (Kg) tree.add_value('wthinb', wthinb) # wthinb = Thin branches (2-0.5 cm) (Kg) # tree.add_value('wb05', wb05) # wb05 = thinniest branches (<0.5 cm) (Kg) # tree.add_value('wl', wl) # wl = leaves (Kg) # tree.add_value('wtbl', wtbl) # wtbl = wthinb + wl; branches <2 cm and leaves (Kg) # tree.add_value('wbl0_7', wbl0_7) # wbl0_7 = wb2_7 + wthinb + wl; branches <7 cm and leaves (Kg) tree.add_value('wr', wr) # wr = roots (Kg) tree.add_value('wt', wt) # wt = biomasa total (Kg)
def vol(self, tree: Tree, plot: Plot): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. """ hr = np.arange(0, 1, 0.001) # that line stablish the integrate conditions for volume calculation dob = self.taper_equation_with_bark(tree, hr) # diameter over bark using taper equation (cm) # dub = self.taper_equation_without_bark(tree, hr) # diameter under/without bark using taper equation (cm) fwb = (dob / 20) ** 2 # radius^2 using dob (dm2) # fub = (dub / 20) ** 2 # radius^2 using dub (dm2) tree.add_value('vol', math.pi * tree.height * 10 * integrate.simps(fwb, hr)) # volume over bark using simpson integration (dm3) # tree.add_value('bole_vol', math.pi * tree.height * 10 * integrate.simps(fub, hr)) # volume under bark using simpson integration (dm3) # tree.add_value('bark_vol', tree.vol - tree.bole_vol) # bark volume (dm3) tree.add_value('vol_ha', tree.vol * tree.expan / 1000) # volume over bark per ha (m3/ha)
def grow(self, time: int, plot: Plot, old_tree: Tree, new_tree: Tree): """ Function that rdbh the diameter and height growing equations Height/Diameter equation: Doc.: Bartelink HH (1997). Allometric relationships for biomass and leaf area of beech (Fagus sylvatica L). In Annales des sciences forestières (Vol. 54, No. 1, pp. 39-50). EDP Sciences Ref.: Bartelink, 1997 """ dbhg5: float = 1 new_tree.sum_value("dbh", dbhg5) if dbhg5 == 0: htg5 = 0 else: htg5: float = 1.732 * (new_tree.dbh**0.769) # h/d equation new_tree.add_value("height", htg5)
def crown(self, tree: Tree, plot: Plot, func): """ Function to calculate crown variables for each tree. That function is run by initialize and process_plot functions. Mean crown diameter equation: Doc.: Sánchez-González M, Cañellas I, Montero G (2007). Generalized height-diameter and crown diameter prediction models for cork oak forests in Spain. Forest Systems, 16(1), 76-88 Ref.: Sánchez-González et al, 2007 Doc.: Sánchez-González M, Calama R, Cañellas I, Montero G (2007). Management oriented growth models for multifunctional Mediterranean Forests: the case of Cork Oak (Quercus suber L.). In EFI proceedings (Vol. 56, pp. 71-84) Ref.: Sánchez-González et al, 2007 """ if func == 'initialize': # if that function is called from initilize, first we must check if that variables are available on the initial inventory if tree.lcw == 0: # if the tree hasn't height maximum crown-width (m) value, it is calculated tree.add_value('lcw', (0.2416 + 0.0013*plot.qm_dbh)*tree.dbh - 0.0015*(tree.dbh**2)) # largest crown width (m) else: tree.add_value('lcw', (0.2416 + 0.0013*plot.qm_dbh)*tree.dbh - 0.0015*(tree.dbh**2)) # largest crown width (m)
def merch_classes(self, tree: Tree): """ Function used to calcule the different comercial volumes depending on the wood purposes That function is rdbh by initialize and process_plot Functions """ ht = tree.height # total height as ht to simplify # class_conditions has different lists for each usage, following that: [wood_usage, hmin/ht, dmin, dmax] # [WOOD USE NAME , LOG RELATIVE LENGTH RESPECT TOTAL TREE HEIGHT, MINIMUM DIAMETER, MAXIMUM DIAMETER] class_conditions = [] # usage and merch_list are a dictionary and a list that are returned from merch_calculation # to that function, we must send the following information: tree, class_conditions, and the name of our class on this model you are using usage, merch_list = TreeModel.merch_calculation(tree, class_conditions, BasicTreeModel) counter = -1 for k,i in usage.items(): counter += 1 tree.add_value(k, merch_list[counter]) # add merch_list values to each usage
def grow(self, time: int, plot: Plot, old_tree: Tree, new_tree: Tree): """ Function that run the diameter and height growing equations Source: Doc.: Diéguez-Aranda U, Rojo A, Castedo-Dorado F, et al (2009). Herramientas selvícolas para la gestión forestal sostenible en Galicia. Forestry, 82, 1-16 Ref.: Diéguez-Aranda et al, 2009 """ ht: float = 129.0321 * ((old_tree.height / 129.0321)**( (plot.age / (plot.age + 5))**0.301881)) new_tree.add_value( "height", ht ) # esta fórmula es para calcular la altura predicha, no para crecimiento # en principio esta era una ecuación h/d, así que es mejor calcular el diámetro con la altura total #dbh: float = - (math.log( # 1 - (1 - math.exp(-0.06160 * plot.dominant_dbh)) * (new_tree.height ** 1.067 - 1.3 ** 1.067) / ( # plot.dominant_h ** 1.067 - 1.3 ** 1.067))) / 0.06160 new_tree.sum_value("dbh", 2.5)
def biomass(self, tree: Tree): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Biomass equation: Doc.: Ruiz-Peinado R, del Rio M, Montero G (2011). New models for estimating the carbon sink capacity of Spanish softwood species. Forest Systems, 20(1), 176-188 Ref.: Ruiz-Peinado et al, 2011 """ wsw = 0.0403 * (tree.dbh**1.838) * (tree.height**0.945 ) # Stem wood (Kg) if tree.dbh <= 32.5: Z = 0 else: Z = 1 wthickb = (0.228 * ((tree.dbh - 32.5)** 2)) * Z # wthickb = branches > 7 cm biomass (Kg) wb2_7 = 0.0521 * (tree.dbh**2 ) # wb2_7 = branches (2-7 cm) biomass (Kg) wtbl = 0.0720 * (tree.dbh**2 ) # Thin branches + Leaves (<2 cm) biomass (Kg) wr = 0.0189 * (tree.dbh**2.445) # Roots biomass (Kg) wt = wsw + wb2_7 + wthickb + wtbl + wr # Total biomass (Kg) tree.add_value('wsw', wsw) # wsw = stem wood (Kg) # tree.add_value('wsb', wsb) # wsb = stem bark (Kg) # tree.add_value('w_cork', w_cork) # w_cork = fresh cork biomass (Kg) tree.add_value('wthickb', wthickb) # wthickb = Thick branches > 7 cm (Kg) # tree.add_value('wstb', wstb) # wstb = wsw + wthickb, stem + branches >7 cm (Kg) tree.add_value('wb2_7', wb2_7) # wb2_7 = branches (2-7 cm) (Kg) # tree.add_value('wb2_t', wb2_t) # wb2_t = wb2_7 + wthickb; branches >2 cm (Kg) # tree.add_value('wthinb', wthinb) # wthinb = Thin branches (2-0.5 cm) (Kg) # tree.add_value('wb05', wb05) # wb05 = thinniest branches (<0.5 cm) (Kg) # tree.add_value('wl', wl) # wl = leaves (Kg) tree.add_value( 'wtbl', wtbl) # wtbl = wthinb + wl; branches <2 cm and leaves (Kg) # tree.add_value('wbl0_7', wbl0_7) # wbl0_7 = wb2_7 + wthinb + wl; branches <7 cm and leaves (Kg) tree.add_value('wr', wr) # wr = roots (Kg) tree.add_value('wt', wt) # wt = biomasa total (Kg)
def vol(self, tree: Tree, plot: Plot): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Volume under bark equation: Doc.: Amaral J, Tomé M (2006). Equações para estimação do volume e biomassa de duas espécies de carvalhos: Quercus suber e Quercus ilex. Publicações do GIMREF, 1-21 Ref.: Amaral and Tomé (2006) """ # hr = np.arange(0, 1, 0.001) # that line stablish the integrate conditions for volume calculation # dob = self.taper_equation_with_bark(tree, hr) # diameter over bark using taper equation (cm) # dub = self.taper_equation_without_bark(tree, hr) # diameter under/without bark using taper equation (cm) # fwb = (dob / 20) ** 2 # radius^2 using dob (dm2) # fub = (dub / 20) ** 2 # radius^2 using dub (dm2) # tree.add_value('vol', math.pi * tree.height * 10 * integrate.simps(fwb, hr)) # volume over bark using simpson integration (dm3) # tree.add_value('bole_vol', math.pi * tree.height * 10 * integrate.simps(fub, hr)) # volume under bark using simpson integration (dm3) # tree.add_value('bark_vol', tree.vol - tree.bole_vol) # bark volume (dm3) # tree.add_value('vol_ha', tree.vol * tree.expan / 1000) # volume over bark per ha (m3/ha) tree.add_value('bole_vol', 0.000115*(tree.dbh**2.147335) * 1000) # volume under bark (dm3) if isinstance(tree.bark, float) and isinstance(tree.h_uncork, float) and isinstance(tree.dbh_oc, float): tree.add_value('bark_vol', (tree.bark/100) * (tree.h_uncork*10) * ((tree.dbh + tree.dbh_oc) / 20)) # cork fresh volume (dm3)
def crown(self, tree: Tree, plot: Plot, func): """ Function to calculate crown variables for each tree. That function is run by initialize and process_plot functions. Crown equations: Equation obtained from PHRAGON_2017_v1.cs, a model of Pinus halepensis useful for the old SiManFor version, developed for Aragón by Föra Forest Techonlogies and Diputación General de Aragón """ if func == 'initialize': # if that function is called from initilize, first we must check if that variables are available on the initial inventory if tree.hcb == 0: # if the tree hasn't basal crown (m) value, it is calculated tree.add_value('hcb', tree.height / (1 + math.exp(-0.82385 + 4.039408*plot.hart* 0.01 - 0.01969*plot.si - 0.594323*tree.bal/plot.basal_area))) # basal crown height (m) calculation else: tree.add_value('hcb', tree.height / (1 + math.exp(-0.82385 + 4.039408*plot.hart* 0.01 - 0.01969*plot.si - 0.594323*tree.bal/plot.basal_area))) # basal crown height (m) calculation tree.add_value('cr', 1 - tree.hcb / tree.height) # crown ratio calculation (%) tree.add_value('lcw', 0.672001 * pow(tree.dbh, 0.880032) * pow(tree.height, -0.60344) * math.exp(0.057872 * tree.height)) # maximum crown-width (m) calculation
def biomass(self, tree: Tree): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Source: Doc.: Diéguez-Aranda U, Rojo A, Castedo-Dorado F, et al (2009). Herramientas selvícolas para la gestión forestal sostenible en Galicia. Forestry, 82, 1-16 Ref.: Diéguez-Aranda et al, 2009 """ wstb = 0.3882 + 0.01149 * (d**2) * h wsb = 0.007900 * (d**2.098) * (h**0.4660) wb2_7 = 3.202 - 0.01484 * (d**2) - 0.4228 * h + 0.00279 * (d**2) * h wthinb = 0.09781 * (d**2.288) * (h**-0.9648) wb05 = 0.001880 * (d**2.154) wl = 0.005 * (d**2.383) wt = wstb + wsb + wb2_7 + wthinb + wb05 + wl # tree.add_value('wsw', wsw) # wsw = stem wood (Kg) tree.add_value('wsb', wsb) # wsb = stem bark (Kg) # tree.add_value('w_cork', w_cork) # w_cork = fresh cork biomass (Kg) # tree.add_value('wthickb', wthickb) # wthickb = Thick branches > 7 cm (Kg) tree.add_value( 'wstb', wstb) # wstb = wsw + wthickb, stem + branches >7 cm (Kg) tree.add_value('wb2_7', wb2_7) # wb2_7 = branches (2-7 cm) (Kg) # tree.add_value('wb2_t', wb2_t) # wb2_t = wb2_7 + wthickb; branches >2 cm (Kg) tree.add_value('wthinb', wthinb) # wthinb = Thin branches (2-0.5 cm) (Kg) tree.add_value('wb05', wb05) # wb05 = thinniest branches (<0.5 cm) (Kg) tree.add_value('wl', wl) # wl = leaves (Kg) # tree.add_value('wtbl', wtbl) # wtbl = wthinb + wl; branches <2 cm and leaves (Kg) # tree.add_value('wbl0_7', wbl0_7) # wbl0_7 = wb2_7 + wthinb + wl; branches <7 cm and leaves (Kg) # tree.add_value('wr', wr) # wr = roots (Kg) tree.add_value('wt', wt) # wt = biomasa total (Kg)
def crown(self, tree: Tree, plot: Plot, func): """ Function to calculate crown variables for each tree. That function is run by initialize and process_plot functions. Crown equations: Doc.: Crecente-Campo F (2008). Modelo de crecimiento de árbol individual para Pinus radiata D. Don en Galicia. Univ Santiago de Compostela Ref.: Crecente-Campo, 2008 """ if func == 'initialize': # if that function is called from initilize, first we must check if that variables are available on the initial inventory if tree.hlcw == 0: # if the tree hasn't height maximum crown-width (m) value, it is calculated tree.add_value( 'hlcw', -4.7570 - 0.08092 * tree.dbh + 0.6408 * tree.height + 0.1881 * tree.tree_age + 0.1998 * plot.si) if tree.hcb == 0: # if the tree hasn't basal crown (m) value, it is calculated tree.add_value( 'hcb', -3.265 - 0.1415 * tree.dbh + 0.5117 * tree.height + 0.1430 * tree.tree_age + 0.1691 * plot.dominant_h) else: tree.add_value( 'hlcw', -4.7570 - 0.08092 * tree.dbh + 0.6408 * tree.height + 0.1881 * tree.tree_age + 0.1998 * plot.si) tree.add_value( 'hcb', -3.265 - 0.1415 * tree.dbh + 0.5117 * tree.height + 0.1430 * tree.tree_age + 0.1691 * plot.dominant_h) tree.add_value('cr', 1 - tree.hcb / tree.height) # crown ratio calculation (%) tree.add_value( 'lcw', 0.06185 * (tree.dbh**1.185) * math.exp(-0.009319 * plot.basal_area - 0.009502 * plot.age) ) # maximum crown-width (m) calculation
def biomass(self, tree: Tree): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Biomass equations: Doc.: Diéguez-Aranda U, Rojo A, Castedo-Dorado F, et al (2009). Herramientas selvícolas para la gestión forestal sostenible en Galicia. Forestry, 82, 1-16 Ref.: Diéguez-Aranda et al, 2009 """ wstb = 0.01230 * (tree.dbh**1.604) * (tree.height**1.413) wsb = 0.003600 * (tree.dbh**2.656) wb2_7 = 1.938 + 0.001065 * (tree.dbh**2) * tree.height wthinb = 0.03630 * (tree.dbh**2.609) * (tree.height**(-0.9417)) wb05 = 0.007800 * (tree.dbh**1.961) wl = 0.04230 * (tree.dbh**1.714) wr = 0.06174 * (tree.dbh**2.144) wt = wstb + wsb + wb2_7 + wthinb + wb05 + wl + wr # tree.add_value('wsw', wsw) # wsw = stem wood (Kg) tree.add_value('wsb', wsb) # wsb = stem bark (Kg) # tree.add_value('w_cork', w_cork) # w_cork = fresh cork biomass (Kg) # tree.add_value('wthickb', wthickb) # wthickb = Thick branches > 7 cm (Kg) tree.add_value( 'wstb', wstb) # wstb = wsw + wthickb, stem + branches >7 cm (Kg) tree.add_value('wb2_7', wb2_7) # wb2_7 = branches (2-7 cm) (Kg) # tree.add_value('wb2_t', wb2_t) # wb2_t = wb2_7 + wthickb; branches >2 cm (Kg) tree.add_value('wthinb', wthinb) # wthinb = Thin branches (2-0.5 cm) (Kg) tree.add_value('wb05', wb05) # wb05 = thinniest branches (<0.5 cm) (Kg) tree.add_value('wl', wl) # wl = leaves (Kg) # tree.add_value('wtbl', wtbl) # wtbl = wthinb + wl; branches <2 cm and leaves (Kg) # tree.add_value('wbl0_7', wbl0_7) # wbl0_7 = wb2_7 + wthinb + wl; branches <7 cm and leaves (Kg) tree.add_value('wr', wr) # wr = roots (Kg) tree.add_value('wt', wt) # wt = biomasa total (Kg)
def apply_tree_model(self, inventory: Inventory, model: TreeModel, operation: Operation): result_inventory = Inventory() min = operation.get_variable('min_age') if operation.has('min_age') else 0 max = operation.get_variable('max_age') if operation.has('max_age') else 1000 for plot in inventory.plots: cut_pies_mayores = list() dead_pies_mayores = list() result_pies_mayores = list() add_pies_mayores = list() # aquí recojo árboles de masa añadida, con status = I if min <= plot.age <= max: new_plot = Plot() new_plot.clone(plot) search_criteria = SearchCriteria() search_criteria.add_criteria('status', None, EQUAL) source_trees = Tree.get_sord_and_order_tree_list(plot.trees, search_criteria=search_criteria) for tree in source_trees: survives_ratio: float = 0.0 try: survives_ratio = model.survives(operation.get_variable('time'), new_plot, tree) except Exception as e: Tools.print_log_line(str(e), logging.ERROR) if survives_ratio > 0: new_tree = Tree() new_tree.clone(tree) new_tree.add_value('expan', survives_ratio * new_tree.expan) new_tree_dead = Tree() new_tree_dead.clone(tree) new_tree_dead.add_value('status', 'M') new_tree_dead.add_value('expan', (1 - survives_ratio) * new_tree_dead.expan) try: model.grow(operation.get_variable('time'), new_plot, tree, new_tree) except Exception as e: Tools.print_log_line(str(e), logging.ERROR) #ActualizaDatosPieMayor(new_tree); #source_trees.update_tree(tree) result_pies_mayores.append(new_tree) dead_pies_mayores.append(new_tree_dead) # Aquí comienza el código correspondiente a la masa añadida (ingrowth) en las ejecuciones # Su funcionamiento, en principio, será similar a la función de supervivencia # Se añadirá el EXPAN que se considere a cada árbol directamente en las ejecuciones, y mostraremos en el output un "clon" de cada árbol con el valor del # EXPAN añadido, y con el status = I (Ingrowth) para poder identificarlo (como con árboles muertos) new_area_basimetrica: float = 0 distribution: float = 0 # creo esta variable, que estaba sin crear try: new_area_basimetrica = model.add_tree(operation.get_variable('time'), new_plot); except Exception as e: Tools.print_log_line(str(e), logging.ERROR) if new_area_basimetrica > 0: # si no se añade masa, se omite este paso try: distribution = model.new_tree_distribution(operation.get_variable('time'), new_plot, new_area_basimetrica) except Exception as e: Tools.print_log_line(str(e), logging.ERROR) order_criteria = OrderCriteria() order_criteria.add_criteria('dbh') # cambio add_variable por add_criteria tree_to_add: Tree = Tree.get_sord_and_order_tree_list(result_pies_mayores, order_criteria=order_criteria) sum_g = 0 # esta variable recoge el sumatorio de secciones normales de la parcela, para usar el valor en los cálculos posteriores for tree in tree_to_add: sum_g += tree.basal_area # * tree.expan --> no se multiplica por tree.expan if distribution == None: # si no existe una función de distribución # n_trees = len(tree_to_add) # calculamos el nº de árboles de la parcela --> ahora ya no hace falta, pero lo dejo de momento for tree in tree_to_add: # para los árboles que quiero añadir (todos los de la parcela serán modificados, en principio) # voy a añadir una parte proporcional a cada uno; duplico la lista de árboles para que en el output se añada la masa y además se pueda # mostrar que expan se ha añadido a cada árbol, tal cual se hace con los árboles muertos new_d_tree = Tree() # estos árboles serán los que se muestran sin status y pasan a la siguiente ejecución new_d_tree.clone(tree) new_d_tree.add_value('expan', (new_area_basimetrica*10000) / sum_g + new_d_tree.expan) ### hay que revisar este cálculo new_tree_add = Tree() # estos árboles serán los que se muestran con status = I new_tree_add.clone(tree) new_tree_add.add_value('status', 'I') # habría que conseguir que estos árboles aparecieran pintados en el output new_tree_add.add_value('expan', (new_area_basimetrica*10000) / sum_g) ### hay que revisar este cálculo result_pies_mayores.append(new_d_tree) # añado los árboles con EXPAN modificado a la lista add_pies_mayores.append(new_tree_add) # añado los árboles con status = I a una nueva lista # para los modelos en los que sí hay unas condiciones establecidas en new_tree_distribution, entonces se aplica lo siguiente else: # si existe una función de distribución definida por el usuario # var = 0 # acumulador del nº de árboles de cada CD --> ya no es necesario, lo silencio de momento sum_g = 0 # acumulador del sumatorio de secciones normales para cada CD count = 0 # contador para entrar en la posición de la lista que deseamos for tree in tree_to_add: # con este bucle añado el nº de árboles que hay para cada CD puesta por el usuario for k in distribution: # para cada CD puesta por el usuario if tree.dbh >= distribution[count][0] and tree.dbh < distribution[count][1]: # si se cumplen los límites de diámetro # var += 1 # añadimos 1 al nº de árboles que cumplen la condición sum_g += tree.basal_area # * tree.expan --> no se multiplica por tree.expan break # pasamos al siguiente árbol else: # si se deja de cumplir la condición de diámetro (los árboles están ordenados por dbh, de menor a mayor) # distribution[count].append(var) # añadimos el nº de árboles a la lista distribution[count].append(sum_g) # añadimos la suma de secciones normales por CD a la lista count += 1 # avanzamos una posición en la lista # var = 0 # comenzamos la cuenta desde 0 sum_g = 0 # comenzamos la cuenta desde 0 # distribution[count].append(var) # esto es necesario para añadir el valor a la última CD distribution[count].append(sum_g) # esto es necesario para añadir el valor a la última CD for tree in tree_to_add: # aquí se repartirá el valor del área basimétrica en las distintas clases diamétricas (propuestas en el modelo), de manera equitativa para cada árbol for k in distribution: # para cada CD if tree.dbh >= k[0] and tree.dbh < k[1]: # si se cumplen los límites de diámetro (ordenados de menor a mayor) new_d_tree = Tree() # estos árboles serán los que se muestran sin status y pasan a la siguiente ejecución new_d_tree.clone(tree) new_d_tree.add_value('expan', (k[2]*10000) / k[3] + new_d_tree.expan) # añadimos la parte proporcional del expan a cada árbol # OJO! Si hubiera que meter de nuevo el nº de pies en cada CD, entonces las posiciones de las listas variarían! new_tree_add = Tree() # estos árboles serán los que se muestran con status = I new_tree_add.clone(tree) new_tree_add.add_value('status', 'I') # habría que conseguir que estos árboles aparecieran pintados en el output new_tree_add.add_value('expan', (k[2]*10000) / k[3]) # añadimos la parte proporcional del expan a cada árbol result_pies_mayores.append(new_d_tree) # añado los árboles con EXPAN modificado a la lista add_pies_mayores.append(new_tree_add) # añado los árboles con status = I a una nueva lista break # salto al árbol siguiente result_pies_mayores.extend(cut_pies_mayores) # se añaden los pies cortados result_pies_mayores.extend(dead_pies_mayores) # se añaden los pies muertos result_pies_mayores.extend(add_pies_mayores) # añado árboles con status = I new_plot.add_trees(result_pies_mayores) # new_plot.recalculate() --> Spiros try: model.process_plot(operation.get_variable('time'), new_plot, result_pies_mayores) except Exception as e: Tools.print_log_line(str(e), logging.ERROR) new_plot.recalculate() result_inventory.add_plot(new_plot) else: Tools.print_log_line('Plot ' + str(plot.id) + ' was not added', logging.INFO) return result_inventory
def crown(self, tree: Tree, plot: Plot, func): """ Function to calculate crown variables for each tree. That function is run by initialize and process_plot functions. Crown equations: Doc.: Lizarralde I, Ordóñez C, Bravo F (2004). Desarrollo de ecuaciones de copa para" Pinus pinaster" Ait. en el Sistema Ibérico meridional. Cuadernos de la Sociedad Española de Ciencias Forestales, (18), 173-177 Ref.: Lizarralde et al. 2004 """ if func == 'initialize': # if that function is called from initilize, first we must check if that variables are available on the initial inventory if tree.hlcw == 0: # if the tree hasn't height maximum crown-width (m) value, it is calculated tree.add_value( 'hlcw', tree.height / (1 + math.exp( float(-0.0041 * tree.height * 10 - 0.0093 * tree.bal - 0.0123 * plot.basal_area)))) if tree.hcb == 0: # if the tree hasn't basal crown height (m) value, it is calculated tree.add_value( 'hcb', tree.hlcw / (1 + math.exp( float(0.0078 * plot.basal_area - 0.5488 * math.log(plot.basal_area) - 0.0085 * tree.bal)))) else: tree.add_value( 'hlcw', tree.height / (1 + math.exp( float(-0.0041 * tree.height * 10 - 0.0093 * tree.bal - 0.0123 * plot.basal_area)))) tree.add_value( 'hcb', tree.hlcw / (1 + math.exp( float(0.0078 * plot.basal_area - 0.5488 * math.log(plot.basal_area) - 0.0085 * tree.bal)))) tree.add_value('cr', 1 - tree.hcb / tree.height) # crown ratio calculation (%) tree.add_value('lcw', (1 / 10.0) * (0.1826 * tree.dbh * 10) * math.pow(tree.cr, (0.1594 + 0.0014 * (tree.height - tree.hcb) * 10)) ) # maximum crown-width (m) calculation
def biomass(self, tree: Tree): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Biomass equations: Doc.: Balboa-Murias MA, Rojo A, Álvarez JG, Merino A (2006). Carbon and nutrient stocks in mature Quercus robur L. stands in NW Spain. Annals of forest science, 63(5), 557-565 Ref.: Balboa-Murias et al, 2006 Doc.: Diéguez-Aranda U, Rojo A, Castedo-Dorado F, et al (2009). Herramientas selvícolas para la gestión forestal sostenible en Galicia. Forestry, 82, 1-16 Ref.: Diéguez-Aranda et al, 2009 """ wsw = -5.714 + 0.01823 * (tree.dbh**2) * tree.height wsb = -1.500 + 0.03154 * (tree.dbh**2) + 0.001110 * (tree.dbh** 2) * tree.height wthickb = 3.427e-9 * (((tree.dbh**2) * tree.height)**2.310) wb2_7 = 4.268 + 0.003410 * (tree.dbh**2) * tree.height wthinb = 0.03851 * (tree.dbh**1.784) + 1.379 wb05 = 0.00024 * (tree.dbh**2) * tree.height wl = 0.01985 * (((tree.dbh**2) * tree.height)**0.7375) wr = 0.01160 * ((tree.dbh**2) * tree.height)**0.9625 wt = wsw + wsb + wb2_7 + wthickb + wthinb + wb05 + wl + wr tree.add_value('wsw', wsw) # wsw = stem wood (Kg) tree.add_value('wsb', wsb) # wsb = stem bark (Kg) # tree.add_value('w_cork', w_cork) # w_cork = fresh cork biomass (Kg) tree.add_value('wthickb', wthickb) # wthickb = Thick branches > 7 cm (Kg) # tree.add_value('wstb', wstb) # wstb = wsw + wthickb, stem + branches >7 cm (Kg) tree.add_value('wb2_7', wb2_7) # wb2_7 = branches (2-7 cm) (Kg) # tree.add_value('wb2_t', wb2_t) # wb2_t = wb2_7 + wthickb; branches >2 cm (Kg) tree.add_value('wthinb', wthinb) # wthinb = Thin branches (2-0.5 cm) (Kg) tree.add_value('wb05', wb05) # wb05 = thinniest branches (<0.5 cm) (Kg) tree.add_value('wl', wl) # wl = leaves (Kg) # tree.add_value('wtbl', wtbl) # wtbl = wthinb + wl; branches <2 cm and leaves (Kg) # tree.add_value('wbl0_7', wbl0_7) # wbl0_7 = wb2_7 + wthinb + wl; branches <7 cm and leaves (Kg) tree.add_value('wr', wr) # wr = roots (Kg) tree.add_value('wt', wt) # wt = biomasa total (Kg)
def biomass(self, tree: Tree): """ Function to calculate volume variables for each tree. That function is run by initialize and process_plot functions. Biomass equations: Doc.: Ruiz-Peinado R, Montero G, del Río M (2012). Biomass models to estimate carbon stocks for hardwood tree species. Forest systems, 21(1), 42-52 Ref.: Ruiz-Peinado et al, 2012 Cork biomass equation: Doc.: Ribeiro F, Tomé M (2002). Cork weight prediction at tree level. Forest ecology and management, 171(3), 231-241 Ref.: Ribeiro and Tomé (2002) Doc.: Montero G, López E (2008). Selvicultura de Quercus suber L. En: Compendio de Selvicultura Aplicada en España, Fundación Conde del Valle de Salazar. Madrid, Spain. pp, 779-829 Ref.: Montero and López (2008) """ wsw = 0.00525*(tree.dbh**2)*tree.height + 0.278*tree.dbh*tree.height wthickb = 0.0135*(tree.dbh**2)*tree.height wb2_7 = 0.127*tree.dbh*tree.height wtbl = 0.0463*tree.dbh*tree.height wr = 0.0829*(tree.dbh**2) wt = wsw + wb2_7 + wthickb + wtbl + wr tree.add_value('wsw', wsw) # wsw = stem wood (Kg) # tree.add_value('wsb', wsb) # wsb = stem bark (Kg) # tree.add_value('w_cork', w_cork) # w_cork = fresh cork biomass (Kg) tree.add_value('wthickb', wthickb) # wthickb = Thick branches > 7 cm (Kg) # tree.add_value('wstb', wstb) # wstb = wsw + wthickb, stem + branches >7 cm (Kg) tree.add_value('wb2_7', wb2_7) # wb2_7 = branches (2-7 cm) (Kg) # tree.add_value('wb2_t', wb2_t) # wb2_t = wb2_7 + wthickb; branches >2 cm (Kg) # tree.add_value('wthinb', wthinb) # wthinb = Thin branches (2-0.5 cm) (Kg) # tree.add_value('wb05', wb05) # wb05 = thinniest branches (<0.5 cm) (Kg) # tree.add_value('wl', wl) # wl = leaves (Kg) tree.add_value('wtbl', wtbl) # wtbl = wthinb + wl; branches <2 cm and leaves (Kg) # tree.add_value('wbl0_7', wbl0_7) # wbl0_7 = wb2_7 + wthinb + wl; branches <7 cm and leaves (Kg) tree.add_value('wr', wr) # wr = roots (Kg) tree.add_value('wt', wt) # wt = biomasa total (Kg) if isinstance(tree.h_uncork, float) and isinstance(tree.dbh_oc, float) and isinstance(tree.nb, float): pbhoc = (tree.dbh_oc*math.pi) / 100 # perimeter at breast height outside cork (m) pbhic = tree.normal_circumference / 100 # perimeter at breast height inside cork (m) shs = tree.h_uncork # stripped height in the stem (m) nb = tree.nb + 1 # number of stripped main bough + 1 if tree.cork_cycle == 0: # To use inmediately before the stripping process if nb == 1: tree.add_value('w_cork', math.exp(2.3665 + 2.2722*math.log(pbhoc) + 0.4473*math.log(shs))) else: tree.add_value('w_cork', math.exp(2.1578 + 1.5817*math.log(pbhoc) + 0.5062*math.log(nb) + 0.6680*math.log(shs))) elif tree.cork_cycle == 1: # To use after the stripping process or in a intermediate age of the cork cycle production if nb == 1: tree.add_value('w_cork', math.exp(2.7506 + 1.9174*math.log(pbhic) + 0.4682*math.log(shs))) else: tree.add_value('w_cork', math.exp(2.2137 + 0.9588*math.log(shs) + 0.6546*math.log(nb))) elif isinstance(tree.h_uncork, float) and isinstance(tree.dbh_oc, float) and not isinstance(tree.nb, float): pbhoc = (tree.dbh_oc*math.pi) / 100 # perimeter at breast height outside cork (m) pbhic = tree.normal_circumference / 100 # perimeter at breast height inside cork (m) shs = tree.h_uncork # stripped height in the stem (m) nb = 1 # number of stripped main bough + 1 if tree.cork_cycle == 0: # To use inmediately before the stripping process tree.add_value('w_cork', math.exp(2.3665 + 2.2722*math.log(pbhoc) + 0.4473*math.log(shs))) elif tree.cork_cycle == 1: # To use after the stripping process or in a intermediate age of the cork cycle production tree.add_value('w_cork', math.exp(2.7506 + 1.9174*math.log(pbhic) + 0.4682*math.log(shs))) else: tree.add_value('w_cork', 0)