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Revista de Biología Tropical, ISSN: 2215-2075, Vol. 70: 437-449, January-December 2022 (Published Jun. 20, 2022)
Impact of plot size on tropical forest
structure and diversity estimation
Alan Bernardes da Silveira¹; https://orcid.org/0000-0002-4884-1875
Samuel de Padua Chaves e Carvalho²*; https://orcid.org/0000-0002-5590-9049
Marcos Felipe Nicoletti³; https://orcid.org/0000-0003-4732-0119
Carlos Alberto Silva4; https://orcid.org/0000-0002-7844-3560
Ronaldo Drescher1; https://orcid.org/0000-0001-9549-6501
Mariana Peres de Lima Chaves e Carvalho1; https://orcid.org/0000-0002-9641-4579
Joao Paulo Sardo Madi5; https://orcid.org/0000-0002-9817-2657
Larissa Regina Topanotti6; https://orcid.org/0000-0001-5066-4196
Walmes Marques Zeviani7; https://orcid.org/0000-0001-5503-8565
Valdir Carlos Lima de Andrade8; https://orcid.org/0000-0002-5559-9124
1. Postgraduate program of Environmental and Forest Science, Federal University of Mato Grosso, Cuiabá, Brazil;
alan@onfbrasil.com.br, ronaldodrescher@gmail.com, marianaperes212@gmail.com
2. Postgraduate program of Forest Science, University of Brasilia, Brasilia, Brazil; sam.padua@gmail.com
(*Correspondence)
3. College of Agriculture and Veterinary, University of Santa Catarina, Lages, Brazil; marcos.nicoletti@udesc.br
4. School of Forest, Fisheries, and Geomatics Sciences, University of Florida, Gainesville, United States of America;
c.silva@ufl.edu
5. Postgraduate program of Forest Engineering, Federal University of Parana, Curitiba, Brazil;
joaosardomadi@gmail.com
6. Department of Forest Economics and Sustainable Land-use Planning, Faculty of Forest Sciences and Forest Ecology,
University of Göttingen, Göttingen, Germany; larissa.topanotti@uni-goettingen.de
7. Departament of Statistics, Federal University of Parana, Curitiba, Brazil; walmeszeviani@gmail.com
8. Departament of Forest Engineering, Federal Univerisity of Tocantins, Gurupi, Brazil; vclandradeuft@gmail.com
Received 12-X-2021. Corrected 31-III-2022. Accepted 15-VI-2022.
ABSTRACT
Introduction: Inventories are essential for forest management, but, in the Amazon region, the absence of
standardization produces information loss, low accuracy, and inconsistent measurements. This prevents valid
comparisons and compromises the use of information in networks and software. Sampling unit size is of key
importance in the inventory of native forests, particularly regarding accuracy and costs.
Objective: To identify a plot size that provides adequate precision for dendrometric parameters in the Amazon.
Methods: In Cotriguaçu, Mato Grosso, Brazil, we tested four plot sizes with six repetitions each: 2 500, 5 000,
7 500, and 10 000 m². We measured diameter at breast height, population density, basal area, and biomass. We
applied Shannon and Jaccard indexes; Weibull 2P and Gamma functions to fit the diametric distribution; and the
Akaike Information Criterion for the best model.
Results: There was a directly proportional relationship between plot area and population similarity, but diversity
did not indicate significant alterations. Plot size did not affect dendrometric attributes and diametric distribution.
Larger plot areas led to lower coefficients of variation and smaller confidence intervals. The Gamma function
was the best model to represent the distributions of different plot sizes.
https://doi.org/10.15517/rev.biol.trop.2022.48640
TERRESTRIAL ECOLOGY
438 Revista de Biología Tropical, ISSN: 2215-2075 Vol. 70: 437-439, January-December 2022 (Published Jun. 20, 2022)
In the management of native forests, forest
inventory is an essential procedure for forest
planning. According to de Araujo (2006), in
areas where forest management is required,
forest inventory is a key to understanding
the composition and structure of the forest,
through the gathering of information from
natural regeneration to the adult stage; it allows
to determine the potential and aptitude for the
management of the area.
Forest inventory is responsible for quanti-
fying available resources, assessing their qual-
ity, and providing information that supports
the decision-making process to implement a
management system (Farias, 2012). According
to the same author, this activity also aims to
monitor managed species to obtain information
about possible impacts on the regeneration of
such species and the remaining fauna and flora.
Forest inventories play several roles in the
management of native forests. They provide
information about the stock of non-timber
species (Farias, 2012), forest carbon (Higuchi
et al., 2004; Vianna et al., 2010), and forest
structure (Cavalcanti et al., 2009; Cavalcanti
et al., 2011; Ubialli et al., 2009), among other
purposes. In the Amazon forest, according to
de Oliveira et al. (2014), inventories are mainly
used for volume estimation, as a tool to evalu-
ate the technical and economic feasibility of
forest management plans in private properties.
Inventories performed in the Amazon
rainforest adopt several methodologies (Silva,
1980; Silva & Lopes, 1984; Silva et al., 2005),
besides the network of permanent plots as
Rainfor - Amazon Forest Inventory Network
and TmFO - Tropical Managed Forests Obser-
vatory, especially with the emphasis on the size
and shape of the plot and also in the definition
of the minimum inclusion diameter, which ends
up being a problem. This variation in the size
and shape of the plots as well as the sampling
intensity can lead to uncertainties in forest
inventory (de Oliveira et al., 2014).
In this sense, absence of standardization
in forest inventory can generate certain con-
sequences. They refer to information loss,
low accuracy, and inconsistent measurement
standards which compromise the use of the
collected information in national or interna-
tional networks and processing software. Thus,
standardization of the methods would allow the
researcher to benefit from common expertise,
enhance research activities, favor the valoriza-
tion and dissemination of results, and optimize
the available resources.
Thus, when considering the hypothesis
that plot with 10 000 m² of área are the bet-
ter to realize the forest inventory diagnostics
in amazonia Pantropical, we suggested other
three variations in this size (2 500, 5 000 and
7 500 m²) compared with the 10 000 m² size,
to provide adequate precision for the estimation
of dendrometric parameters and diversity in an
area of Mixed Submontane Forest, in the legal
Brazilian Amazon region, Mato Grosso State.
MATERIALS AND METHODS
Study area: This study was conducted at
the São Nicolau farm, owned by the company
ONF Brazil. The farm is located in the legal
Amazon region (ME, 2019), Cotriguaçu city,
northwest of the Mato Grosso State, around
the coordinates 58.24 S and 9.84 W (Fig.
1). The farm has a total area of 10 287 ha,
which 7 500 ha is of native forest. Of these
7 500 ha of native forest, 1 800 ha have been
used as a Private Reserve of Natural Heritage
(RPPN Peugeot ONF), while the remnant of
the native forest area was used for sustainable
timber production.
Conclusions: For similar forests, we recommend the 2 500 m² plot to evaluate diameter at breast height, popula-
tion density, basal area, and biomass.
Key words: sustainable forest management; sampling; floristic analysis; structural analysis; tropical ecology.
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The property is located in a region with
an “A” type climate, according to the Köppen
method (Alvares et al., 2013). The region has
average annual temperatures between 25 °C
and 27 °C, an average annual rainfall of 2 500
mm, and relative humidity of 85 %.
The original forest type of the area under
study, according to MME (1982), compris-
es the Tropical Open Rainforest typology,
sub-montane formation with Palm trees. Its
understory is quite dense, mainly due to the
regeneration of palm trees. The region of the
Open Ombrophyla Rainforest is called the
“transition zone” between the Amazon and the
rest of the country.
Experimental design: The study was con-
ducted in the Annual Production Unit 1 (UPA
1) of the Forest Management Plan of Fazenda
São Nicolau, with 227 ha of area. Using QGIS
(QGIS Development Team, 2018), a grid of
size 100 m x 100 m was allocated throughout
the study area. After that, the first plot was
randomly chosen and the subsequent five were
systematically defined, with a six sample plot
allocated in this study area (Fig. 2).
After the selection and installation of plots,
they were divided into four subplots of 2 500
m² each, which allowed the definition of a spa-
tial gradient of 2 500 m², 5 000 m², 7 500 m²,
and 10 000 m² across the dimensions of 25 m x
100 m, 50 m x 100 m, 75 m x 100 m and 100 m
x 100 m, respectively (Fig. 3). The design
resulting from the divisions of the allocated
plots had four plot sizes, each with six repeti-
tions, in which the variables of interest were
analyzed. The number of samples in the study
follow the requirements established by Decree
2152/14 of the Secretary of State for the Envi-
ronment for the State of Mato Grosso, Brazil.
Data collection: Trees with diameters at
breast height (DBH) 20 cm (Silva & Lopes,
1984) were measured and identified within
the plots. From the trees not identified in loco,
vegetative material was collected, pressed, and
Fig. 1. Location of the study area (orange polygon) on the Mato Grosso State, Brazil.
440 Revista de Biología Tropical, ISSN: 2215-2075 Vol. 70: 437-439, January-December 2022 (Published Jun. 20, 2022)
Fig. 2. Study area in details with the location of the six randomized plots (in brown).
Fig. 3. A didactic scheme exemplifying how the plots were allocated in the field.
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dried in an oven with forced ventilation at 60
°C for 48 hours, according to the herboriza-
tion methodology indicated by the Technical
Manual of Brazilian Vegetation (ME, 2012).
The material for the identification of these
species was then sent to the Herbarium IAN -
EMBRAPA, in Belém, Para State, Brazil.
Metrics calculated: Initially, the floristic
similarity between the different plot sizes was
calculated, using the Jaccard Index (Equation
1), according to Magurran (1988).
(1)
where: SJ = Jaccard similarity index; a = total
number of species present in sample “a”; b =
total number of species present in sample “b”;
c = total number of species common to samples
“a” and “b”.
The diversity was obtained as proposed by
Magurran (1988), by Shannon-Weaver Index
(Equation 2).
(2)
in which: H’ = Shannon-Weaver diversity
index; ni = number of individuals of the i-th
species in the sample; N = total number of indi-
viduals in the sample; ln = Napierian logarithm
(base e).
The Shannon’s indexes were compared
by Hutcheson’s Test with 5 % of signifi-
cance (Hugo & David, 2021; Hutcheson, 1970;
Magurran, 1988).
The horizontal structure of the vegetation
was evaluated through tree density (N.ha-1)
and basal area (m².ha-1) calculated at plot level
(Equation 3).
(3)
where: AB = Basal Area (m²/ha); DBH =
Diameter at Breast Height (cm); EF = Expan-
sion Factor (EF = 4 for 2 500 m² plot size; 2
for 5 000 m² plot size; and 1.33 for 7 500 m²
plot size).
Above Ground Biomass (AGB) was also
estimated at the individual tree-level using the
equation proposed by Chave et al. (2005) for
humid forests (Equation 4). After obtaining
this variable at the tree-level, the individual
biomass of the trees per plot was summed and
expanded to 1 hectare.
where: AGB = Above Ground Biomass (kg/
tree); DBH = Diameter at Breast Height (cm);
ln = Napierian logarithm (base e); r = wood
basic density.
The basic wood density values for each
species to apply the Chave et al. (2005) equa-
tion were obtained from the Global Wood
Density Database (Dryed) (Zanne, 2009). The
confidence intervals were obtained for biomass
(Mg.ha-1) and stocking density (n.ha-1).
The coefficient of variation was calculated
to verify the dispersion of the data (Equation 5).
(5)
where: CV = coefficient of variation (%); sd =
standard deviation, = mean.
(4)
Subsequently, in all plot size conditions,
the Weibull probability density function of two
parameters and Gamma (Equation 6, Equation
7) were fitted. The AIC – Akaike Information
Criteria was used to evaluate the best model
to represent the data. (Equation 8). These
functions were chosen because of the perfor-
mance to describe curves with different shapes
and flexibility.
(6)
where: f(x) = density function of variable x; x
= class center diameter; b = scale parameter; c
= shape parameter.
442 Revista de Biología Tropical, ISSN: 2215-2075 Vol. 70: 437-439, January-December 2022 (Published Jun. 20, 2022)
(7)
where: f(x) = density function of variable x; x
= class center diameter; b = scale parameter; a
= shape parameter; .
AIC = -2ln(mv)+2p (8)
where: ln = logaritimic of the value; mv =
maximum likehood value; p = number of the
parameters of the model evaluated.
Finally, dendrometric parameters were
compared by the Dunnett’s Test assumpting the
10 000 m² plot size with a control treatment.
Further details can be obtained in Dunnett
(1955) and Signorell et al. (2021).
All analyses were performed in R Soft-
ware (R Core Team, 2019).
RESULTS
Considering all the plots, a total of 877
individuals with DBH 20 cm were recorded
in the forest inventory, with an average of 146
individuals per hectare. These individuals were
distributed in 36 families and 119 species.
The richest species-diverse families were
the following: Fabaceae with 34 species, Mora-
ceae with 10, Malvaceae with 8, followed
by Lecythidaceae, Meliaceae, and Sapotaceae,
with 5 species each. Regarding the number of
individuals per family, the most representative
were as follows: Burseraceae (254), Moraceae
(137), Fabaceae (108), and Sapotaceae (85),
which represented 66.5 % of the total sampled
individuals. More floristic informations can be
obtained in Silveira (2019).
The different plot sizes generated values of
Shannon-Weaver index (H’) (Table 1), and they
presented certain proximity among them. For
the similarity, the Jaccard Index (Sj) (Table 1),
it was observed that the largest plots presented
higher index values than the smaller ones,
when compared to the 10 000 m² plot (refer-
ence control plot size in this study).
Table 2 shows the results obtained con-
cerning mean diameter, mean population
density (number of trees per hectare), basal
area, and biomass, for the different plot sizes,
extrapolated to one hectare. The main struc-
tural parameter that differed in the plots was
biomass, where the smallest plot size showed
a higher value compared with the other plot
sizes, however without statistical difference as
showed in Table 2.
The statistics obtained for the density and
biomass variables for the different plot sizes are
shown in Table 3. The plot sizes that showed
the lowest standard deviation and coefficient
of variation were 10 000 m² and 7 500 m²,
respectively, which implies that these two sizes
would result in a better statistical performance.
TABLE 1
Shannon’s s (H’) and Jaccard’ Index for each plot size
Plot Size (m2) H’ SJ*
2 500 3.24 0.568
5 000 3.36 0.814
7 500 3.40 0.941
10 000 3.42
Note: The values of the Jaccard’s Index were obtained from
a comparison with the control plot - 10 000 m².
TABLE 2
Mean parameters of dendrometric atributes for each plot size investigated in this study
Variables Plot Size
2 500 m² 5 000 m² 7 500 m² 10 000 m²
DBH (cm)ns 36.91 36.64 36.34 36.24
Density (N ha-1)ns 160.00 146.66 145.83 146.16
Biomass (Mg ha-1)ns 344.67 288.61 279.54 278.32
Basal Area (m² ha-1)ns 22.38 19.83 19.34 19.09
*ns = no signficance for the Dunnett test (a = 5 %). The control was the 10 000 m² plot size. DBH = diameter at breast
height.
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Although there were no significant differ-
ences in these results (Table 3). Fig. 4 shows
that there is a tendency to reduce the coefficient
of variation according to the increase in the
plot area.
Through the AIC value, the best model
was Gamma (Table 4), admitting that the 2
units it’s sufficient to select one than other
model (Burnham & Anderson, 2002). So, the
Gamma model was used to represent the dia-
metric distribution for all plot size.
In the analysis of the diametric structure
obtained in the different plot sizes, the fitting
of the Gamma function is show in histograms
for each of the plot sizes, 2 500, 5 000 or 7 500
m², in comparison with the reference size,
10 000 m² (Fig. 4). The “inverted J” behavior,
characteristic of native forests, can be observed
in all of them.
It was also observed that the values of
the parameters obtained, in the fitting of the
diametric model (Table 5) for the different
TABLE 3
Statistics for density and biomass variables for each plot size
Variables Estimators Plot Size
2 500 m² 5 000 m² 7 500 m² 10 000 m²
Density (N.ha-1) Mean 146.19 146.41 146.47 146.11
Standard Deviation 18.55 13.61 10.65 9.09
CV (%) 12.56 9.22 7.22 6.18
Lower C.I. 109.08 119.19 125.16 127.92
Upper C.I. 183.29 173.63 167.78 164.29
Biomass (Mg.ha-1) Mean 284.85 282.40 285.76 284.00
Standard Deviation 19.66 14.28 10.72 9.47
CV (%) 6.46 4.76 3.53 3.18
Lower C.I. 245.54 253.83 264.32 265.06
Upper C.I. 324.17 310.96 307.20 302.94
Note: CV - coefficient of variation; C.I. - confidence interval (95 %).
Fig. 4. Coefficient of variation (CV) of populational density and biomass for each plot size.
444 Revista de Biología Tropical, ISSN: 2215-2075 Vol. 70: 437-439, January-December 2022 (Published Jun. 20, 2022)
plot sizes, were very close to each other. These
results contribute to the similarity across the
curves observed in the Fig. 5.
DISCUSSION
The results obtained regarding the compo-
sition of families corroborate with other stud-
ies carried out in the Amazon region, such as
those by Carim et al. (2013), Condé and Tonini
(2013), and Pereira et al. (2011). In these stud-
ies, the number of individuals and the species
richness contribute to the sovereignty of the
inventoried families, which gives the physiog-
nomic characteristics of the forest.
In the study conducted by Condé and
Tonini (2013), the families with the highest
number of species also represented a greater
richness of individuals. Their result differs
from the results obtained here since the Burs-
eraceae family corresponds for 29 % of the
total sampled individuals yet with the concen-
tration of a single species, Protium autissimum.
According to Amaral et al. (2000), abundance
patterns are quite variable for species and
families in general.
rectangular plots of 400 m² and 2 500 m².
Ubialli et al. (2009) also commented that a
plot size of 2 500 m² installed in a rectangular
shape produces accurate estimates for phytoso-
ciological studies when considering the most
important species groups from the economic
and phytosociological point of view, regardless
of the sampling process, but with a sampling
intensity of 10 %.
The choice of the size of the sampling
units in those cases in which the prediction
of the parameters is not compromised by the
reduction of the plot size can be made due to
the operationality of the location and implanta-
tion. In this case, smaller units are advisable
when time is a constraint, as suggested by Pél-
lico Netto and Brena (1997).
The Shannon diversity index (H’) of the
different plot sizes was higher than 3.11, which
according to Saporreti Jr. et al. (2003), indi-
cates well-preserved area. Based on this crite-
rion, the sampled forest can be characterized as
a well-preserved area.
In all the different plot sizes, a similar
assessment of the forest community diver-
sity was obtained. This same index was higher
when compared to savanna area in Brazil
TABLE 4
AIC value for the models fitted
Function Plot size (m²) AIC
Gamma 2 500 1 992.832
Weibull - 2p 2 056.68
Gamma 5 000 3 623.105
Weibull - 2p 3 750.546
Gamma 7 500 5 386.31
Weibull - 2p 5 581.771
Gamma 10 000 7 157.747
Weibull - 2p 7 419.148
TABLE 5
Gamma parameters for the four fitted models for each plot size
Plot Size (m²) Shape Standard Error Scale Standard Error p-value
2 500 5.1849 0.4588 0.1396 0.0130 < 0.0001
5 000 5.3388 0.3492 0.1464 0.0100 < 0.0001
7 500 5.4341 0.2910 0.1504 0.0084 < 0.0001
10 000 5.5578 0.2579 0.1542 0.0075 < 0.0001
A study carried out in the Ecotonal Forest
in the northern region of Mato Grosso, Ubialli
et al. (2009) concluded that, according to the
plot size, the distribution pattern of the species
can change, and plots with larger dimensions
up to 1 ha are indicated to obtain the real pat-
tern of the spatial distribution of species in
the area. To carry out phytosociological stud-
ies using a sampling intensity of 10 % and a
random process, the estimates were accurate
for the most economical and phytosociologi-
cal important species, especially when using
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(Finger & Finger, 2015; Guilherme et al., 2004;
Rodrigues-Sousa et al., 2015), with values
4.03, 3.86 and 3.85, respectively. The differ-
ence could be explained by the minimum diam-
eter measured, where in these three studies was
10 cm. However, same values for the Shannon
index was obtained by Apgaua et al. (2014).
The forest researched by the authors was
Tropical Forest with a dry season. The value
obtained was 3.6. According to Rodrigues-
Sousa et al. (2015), the Shannon index, when
evaluated for each indivudal, was 3.55 in
Riparian Forest.
In the evaluation of similarity, by Jac-
card index, the plots with the highest similarity
were the ones with 5 000 and 7 500 m², and
the one of 2 500 m² presented the lowest value
compared with the standard plot size of 10 000
m². However, for all plot sizes, the Jaccard
index was higher than 0.5, which, according
to Kent and Coker (1992), indicates high
similarity.
The mean values of the basal area for the
category DBH 20 cm were close to those
presented by Higuchi et al. (2004), in other
locations of the Brazilian Amazon. The values
presented by these authors ranged from 17.72
to 23.08 m².ha. The predicted biomass values
are close to those found in other studies as well.
Alves et al. (2003), found estimates of roughly
290 Mg.ha-1 for primary forests in Rondônia.
For the same type of forest, Brown et al. (1995)
obtained values of 285 Mg.ha-1. In discrepancy
with such results, Nascimento and Laurance
Fig. 5. Comparative analyses about distributions fitting by Gamma to four plot sizes. A. 10 000 m² x 2 500 m²; B. 10 000
m² x 5 000 m²; C. 10 000 m² x 7 500 m²; D. All plot sizes.
446 Revista de Biología Tropical, ISSN: 2215-2075 Vol. 70: 437-439, January-December 2022 (Published Jun. 20, 2022)
(2002) obtained an average biomass above
ground much higher, 397.7 Mg.ha-1, in intact
forests in the central Amazon.
It was observed that the effect of reducing
the size of plots on the prediction of biomass
and population density was not statistically
significant according to the Dunnett Test (Table
2). This behavior can be evidenced by observ-
ing the confidence intervals (Table 3) for
the different sizes of the sampling units for
the aforementioned dendrometric attributes,
in which the mean values are always contem-
plated. Still, it is worth mentioning that the
largest plots presented a smaller range ampli-
tude than the other plot sizes. Pinto et al. (2021)
evaluated the influence of the plot size in many
forests types and concluded that the bests sizes
were between 600 and 1 400 m² for the bio-
diversity parameters.
It was possible to verify that the estimation
of biomass and population density, considering
the dimensions of the plots, reached plausible
results, with coefficient of variation varying
from 6.18 to 12.56 % for density and 3.18 to
6.46 % for biomass (Fig. 5). This result corrob-
orates the findings of de Oliveira et al. (2014),
found that, for sampling of individuals with
DAP 20 cm in the Amazon forest, an uncer-
tainty level below 10 % was obtained from
sampling units with dimensions of 1 200 m².
Small plot sizes show a tendency to present
higher values of coefficient of variation. In this
study, the highest values of coefficient of varia-
tion for both biomass and population density
estimation was found in the 2 500 m² plot size.
The study by Cavalcanti et al. (2009), which
conducted in a forest characterized as Open
Forest and considered individuals with DAP
40 cm, obtained a high coefficient of variation
for sampling units with 2 500 m². The authors
observed that the coefficient tended to decrease
as the area of the sampling unit increased up to
2 ha. This behavior was expected since larger
plots tend to better capture forest variability
(Wagner et al., 2010).
The diametric distribution in all sizes of
the sampling units followed the pattern of an
inverted J (Fig. 4). According to Campbell
et al. (1986), the inverted J is a characteristic
behavior for dryland and flooded Amazon
forests According to Silva et al. (2008), this
behavior represents a decrease in individuals
as the diametric classes increase. As stated by
Phillips et al. (1994), when a diametric struc-
ture presents in its first-class more than 65 % of
the sampled individuals, it exhibits the natural
dynamic of mortality and recruitment of new
individuals due to the death and tree fall.
When analyzed the parameters of the
Gamma function the results showed values
close to each other. This shows that the size of
the sampling units did not significantly reflect
the diametric structure of the forest. That is, all
the variability in DBH was captured for all plot
size, regardless of size.
After verifying the similarities between the
curves, we did an exercise just to exemplify
the use of these fitted curves. Trees larger than
or equal to 50 cm of DBH were predicted, as
this value is the minimum harvesting diam-
eter established by the environmental agency
(SEMA-MT) through decree 2152/2014. The
results obtained from the proportion of trees
above the established diameter were 22, 23, 23,
and 25 % for plots with 10 000, 7 500, 5 000,
and 2 500 m² respectively, values are also very
close to each other when comparing the small-
est plots with the 1 ha plot.
The diversity analysis of populations using
the Shannon index showed that the change in
the size of the plots did not show a significant
difference, implying that the use of smaller
plots captured the floristic diversity of the
forest. In the forest structure analysis, the
plot sizes did not influence the prediction of
biometric attributes of population density and
biomass, as well as the diametric structure.
Considering the level of inclusion DBH 20
cm, all dimensions of the analyzed plots in this
study could be used in forest inventories and,
despite the values in coefficient of variation
and confidence interval, plots with areas of
2 500 m² is recommended.
Ethical statement: the authors declare
that they all agree with this publication and
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made significant contributions; that there is no
conflict of interest of any kind; and that we fol-
lowed all pertinent ethical and legal procedures
and requirements. All financial sources are
fully and clearly stated in the acknowledge-
ments section. A signed document has been
filed in the journal archives.
ACKNOWLEGMENTS
To ONF Brazil for all supports to develop
this study.
RESUMEN
Impacto del tamaño de la parcela en la estructura y
estimación de la diversidad de los bosques tropicales
Introducción: Los inventarios son fundamentales para la
gestión forestal, pero en la Amazonía la ausencia de estan-
darización produce pérdida de información, baja precisión
y mediciones inconsistentes. Esto impide comparaciones
válidas y compromete el uso de información en redes y
programas. El tamaño de la unidad de muestreo es de
importancia clave en el inventario de bosques nativos, par-
ticularmente en lo que respecta a la precisión y los costos.
Objetivo: Identificar un tamaño de parcela que proporcio-
ne una precisión adecuada para los parámetros dendromé-
tricos en la Amazonía.
Métodos: En Cotriguaçu, Mato Grosso, Brasil, probamos
cuatro tamaños de parcela con seis repeticiones cada una:
2 500, 5 000, 7 500 y 10 000 m². Medimos diámetro a
la altura del pecho, densidad de población, área basal y
biomasa. Se aplicaron los índices de Shannon y Jaccard;
Funciones Weibull 2P y Gamma para adaptarse a la distri-
bución diametral; y el Criterio de Información de Akaike
para el mejor modelo.
Resultados: Hubo una relación directamente proporcional
entre el área de parcela y la similitud poblacional, pero la
diversidad no indicó alteraciones significativas. El tamaño
de la parcela no afectó los atributos dendrológicos y la
distribución diametral. Las áreas de parcela más grandes
dieron lugar a coeficientes de variación más bajos e inter-
valos de confianza más pequeños. La función Gamma fue
el mejor modelo para representar las distribuciones de
diferentes tamaños de parcela.
Conclusiones: Para bosques similares, recomendamos la
parcela de 2 500 m² para evaluar diámetro a la altura del
pecho, densidad de población, área basal y biomasa.
Palabras clave: gestión forestal sostenible; muestreo;
análisis florístico; análisis estructural; ecología tropical.
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