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ISSN 2410-5708 / e-ISSN 2313-7215

Year 9 | No. 26 | p. 257 - 279 | October 2020 - January 2021

http://www.faremcarazo.unan.edu.ni

Topographic Position Index (TPI) to identify floodable areas and zoning of plant species in a mangrove swamp in the South Pacific of Nicaragua

https://doi.org/10.5377/torreon.v9i26.10264

Submitted on February 6, 2020 / Accepted on July 7, 2020

Ph.D Heyddy Calderón

Ph.D in Hydrology

UNAN-Managua, Geology and Geophysics Institute

https://orcid.org/0000-0002-4405-8971

heyddy.calderon@igg.unan.edu.ni

MSc. José Enrique Pérez

Master in Enviromental Management

UNAN-Managua

https://orcid.org/0000-0001-8456-3684

Ph.D Marcel Chow

Ph.D in AstroPhysics Sciences

UNAN-Managua, Geology and Geophysics Institute

https://orcid.org/0000-0001-6073-9956

B.Sc. Juan Bautista Reyna

Geological Engineering

UNAN-Managua

https://orcid.org/0000-0001-5065-8765

Section: Engineering, Industry and Construction

SCIENTIFIC ARTICLES

Keywords: TPI, mangrove forest, geomorphology, flooding areas, integrated management

Abstract

COP7 recognized that mangroves are vulnerable ecosystems and threatened by habitat loss and degradation, which need urgent actions to guarantee their conservation and rational use. Geomorphological and hydrological processes are key to the growth and development of mangrove forests. However, in Central America, very few studies exist in this regard. Mangrove forests offer valuable economic and ecological services, such as tourism and shelter for species of flora and fauna. Furthermore, they protect against sea-level rise caused by climate change. The hydrology of the mangrove swamp of Río Ostional (~ 0.2 km2), in the South Pacific of Nicaragua, has been studied in recent years suggesting a relationship between mangrove species and freshwater inputs. In this project, the use of the Topographic Position Index (TPI) was explored to identify small-scale floodplains with little variation in elevation (~ 3m) in a mangrove swamp. For this, a geomorphological characterization was carried out through a detailed topographic survey of the area and the analysis of the TPI as a method of classifying landforms to identify the flood zones; as well as the zoning of plant species. The classification of the TPI was related to the zoning of species. This relationship will allow the identification of the most sensitive areas to geomorphological modifications of possible anthropic origin, which is an essential input for comprehensive forest management.

Introduction

Central America has about 4,000 km2 of mangroves on the Pacific coast, of which Nicaragua has 400 km2 (Ellison, 2004). The Ostional mangrove forest, located in the municipality of San Juan del Sur, is a typical example of coastal ecosystems in the South Pacific of Nicaragua. The presence of mangroves and sand bars on the beach dominates the estuaries of these rivers (Jiménez, 1992). Ostional beach is also very close to La Flor Wildlife Refuge, and although to a lesser extent, it is also a nesting site for sea turtles. Additionally, the mangrove forest shelters other fauna species (birds, monkeys, small mammals) and is a tourist attraction that generates economic income for the population of Ostional (Calderón, 2014).

The Global Review of Wetland Resources and Priorities for Wetland Inventory (COP7) recognized that mangroves and coral reefs are some of the most vulnerable ecosystems and threatened by loss and degradation of habitats, and consequently, they need urgent and priority actions to guarantee their conservation and rational use. On the other hand, geomorphological and hydrological processes are key for the growth and development of mangrove forests (Feller and Sitnik, 1996; He et al., 2010; Jiménez, 1994,1999; Lugo and Snedaker, 1974, Tomlinson, 1986 ). This system has started to be studied from a hydrological point of view and during this process zoning patterns of mangrove species have been identified in a general way (Calderón, 2015; Calderón et al 2014, De Vries 2016). However, it is necessary to deepen further the understanding between the surface water flows towards the system and its relationship with the zoning of mangrove species. It is necessary to have this knowledge to identify the areas of the mangrove that are most sensitive to morphological changes of natural or anthropogenic origin, such as an alteration to natural relief, the appearance of new gullies, discharge of domestic gray water, or solid waste within the mangrove.

On the other hand, there is no species zoning map, which is essential to generate a comprehensive mangrove management plan. Besides, flood zones are particularly important since the growth and development of the forest depend to a large extent on the delicate balance between freshwater flows and saltwater flows, which also determines the zoning of species. This work aims to contribute to the understanding of the hydrological processes in the mangrove systems of Central America and generate necessary inputs for the Comprehensive Management Plan of the Ostional Mangrove forest. The objective of this project is to test the use of the TPI to classify small-scale floodplains with little variation in elevation (~ 3m) in a mangrove swamp in southwest Nicaragua, to correlate them with zoning patterns of mangrove species.

Study area

Ostional is a small rural coastal community in the municipality of San Juan del Sur, Rivas. It is located in the Holdrige life zone of dry tropical forest. The study area is a floodplain about 0.5 km wide characterized by a blind estuary, closed by a sand bar produced seasonally by the “spring” tide. During the peak of the rainy season (October-November) the flood of the Ostional river breaks the bar releasing the water contained in the estuary (deVries, 2016). The presence of the sand bar helps to maintain a positive water balance during the dry season or drought, which favors the subsistence and growth of mangrove species (Calderón et al., 2014). The soil is clayey and the water table ranges from 1 to 0.5 m during the year. The mangrove species identified in the study area are white, red, piñuela and Buttonwood (deVries 2016).

The local population is around 1,500 people and the economy is based on fishing, tourism, and subsistence agriculture (Calderón, 2014). The mangrove area is one of the tourist attractions offered to visitors for bird watching, mammals, lizards, hiking, and kayaking. However, it is also used as a source of firewood and pasture.

Methodology

Characterization and zoning of plant species

The survey was carried out in the Ostional estuary making random points trying to give a homogeneous bearing of the place. The study is descriptive and cross-sectional, carried out from October 28 to 30, 2015, enough time to determine the presence and diversity of the plant species existing in the sampled points, given the rapid sampling characteristic of this research. The study population was all the plant species of the forest redoubt, vegetation associated with the mangrove swamp present in detailed transects adjusting to the biotypes of trees, shrubs, and herbs.

A sampling of six 10 x 10 m (100 m2) plots, two for each plant formation, was carried out to obtain homogeneous areas. This method was proposed by Foster et al., (1995), to carry out rapid vegetation evaluations. It was considered that it is usually better to do several small samplings than a few large ones. Foster et al., (1995) mention that 50 individuals for each sample can be an adequate number, with which several representative samplings can be made in a single day (Mateucc and Colma, 1982; Mostacedo & Fredericksen, 2000; Araujo et al ., 2005). The sample was analyzed with biodiversity indices to characterize the mangrove swamp and its associated flora. Margalef indices were used to determine its richness, Shannon-Weinner index to measure diversity, and the Simpson index to assess the dominance of the species. The species were identified with the Flora of Nicaragua bibliography (Steven et al., 2001).

Biodiversity indices

CalderonEc01.png

Where:

H´: Shannon diversity index–Wiener

D: Simpson’s dominance index

DMg = Margalef wealth index

Pi: ni / S

Ni: Number of individuals

Pi: Relative abundance of species i (pi: ni / N)

N: total number of individuals

S: specific wealth

Σni: N

Detailed topographic survey

The detailed survey was done with a Leica Ts09 plus total station. The elevations of three piezometers located on the shoreline at the study site were used as benchmarks. Those elevations were surveyed in 2012 with an Ashtech Locus L1 brand differential GPS with 5mm horizontal and 10mm vertical precision. For the data collection, the total station was oriented with the known coordinate method, due to the structure of the mangroves, a prism with a 3 m reach rod was used for high readings and a mini prism of 0.6 m for low readings, the altiplanimetric readings were performed in combination with prism laser and rebound laser measurements. A total of 433 points were raised trying to distribute them evenly in the area. Elevations range from 0.175 masl to 3,104 masl. However, in some places, the local density of trees made it difficult to collect data, so these areas have a lower density of points (Figure 1). The number of topographically surveyed points is conditioned by the density of trees, which prevents the prism from being seen. In some places, with fewer individuals, it was possible to have a higher density of points.

Generation of the Digital Terrain Model (DEM)

The digital elevation model was generated from the data collected in the detailed topographic survey (Figure 1). These data were modeled using the R statistical software. To choose the pixel size, a statistical analysis of the standard deviation of each point was performed with its closest neighbors (five neighbors to ensure statistical robustness). According to the distribution of the standard deviations of these data, a maximum of 2.5 m was obtained, so this value was established as the cell size for the generation of the DEM.

The DEM was generated using simple kriging type interpolation, using the R GSTAT geostatistical library and the data collected from the topographic survey. The Kriging interpolation method is very precise and efficient to other interpolation methods in the creation of digital elevation models, it provides more robust analyzes with statistical foundations (Villatoro, 2008; Vílchez, 2000; Pineda M, 2015), by what this method was used in this study. As mentioned above, a cell size of 2.5 x 2.5 m was chosen. The variogram was adjusted using a spherical model. The selection of other models did not produce significant changes in the DEM.

Calderon01In.png

Figure 1. Study area and points of the topographic survey.

Geomorphological classification using TPI

The topographic position index or TPI (Topographic Position Index) allows us to describe morphological aspects of the terrain through the calculation and sectoring of slopes. The TPI is a method of classifying the position of the slope and the types of geomorphology.

The TPI value is given by:

CalderonEc04.png

Where the TPIi is calculated for the i-th pixel of the DEM and hi refers to the elevation of said pixel. µi is the average value of all pixels around the i-th pixel within a certain distance range. For this study, a range between 20 m and 50 m was considered, since this scale is consistent with the average length of the valleys and peaks according to the experience gained in the field during the topographic survey. Scales larger than this would cause the loss of the smaller geomorphological units. In the same way, σi is the standard deviation of the DEM pixels within that same range. Therefore the TPI is a statistical comparison of the elevation value of the pixels concerning the pixels in the vicinity. The result of the TPI depends on the scale since it uses values of its vicinity, that is, it depends on the measured lengths and the position of a slope (Weiss, 2001). Positive values represent locations that are higher than their surroundings (Summits). Negative values represent locations that are lower than the surroundings (Valleys). Values close to zero can be flat areas (with a slope close to zero) or areas of constant slope, where a criterion of the angle of the slope can be used to estimate whether it is one or the other case.

Calderon02In.png

Figure 2. Conceptualization of the TPI (modified from Weiss, 2001)

The TPI generates a map of continuous values. For geomorphological analysis, it is very useful to define thresholds to classify landforms. In this work, the values suggested by Weiss, 2001, which define six landforms, were used as thresholds:

I. Ridges: TPI > 1.0.

II. Upper slope: 1.0 > TPI > 0.5

III. Middle slope: 0.5 > TPI > -0.5 (angles greater than 15°)

IV. Flat: 0.5 > TPI > -0.5 (angles less than 15 °)

V. Lower slope: -0.5 > TPI > -1.0

VI. Valley: TPI < -1.0

Results

Biodiversity indices

The plant formations census, according to the Margalef index, indicates that the site of greatest wealth is the dry forest which surrounds the mangrove swamp and adjacent areas to the river; the lowest value corresponds to the mangrove swamp, where salinity, soil instability, and seasonal floods allow few species to proliferate. According to the Simpson index, which assesses dominance, it indicates the mangrove swamp as dominant, due to the presence of halophilic species (they tolerate salinity), which are the abundant ones, pointing to other plant formations with moderate dominance. The Shannon-Weinner index indicates that the beach and dry forest have almost similar diversity, with the dilemma that species and biotypes are dissimilar. The coastal species are mostly grasses and shrubs that grow on coastal dunes and salinized soils. The dry forest is mostly made up of trees that need deep soils and a neutral pH; finally, the index certifies that the plant diversity in the mangrove swamp is low.

Table 1. Biodiversity Indices

Plant formation

Shannon index

(Diversity)

Simpson index (Dominance)

Margalef index (Species richness)

Beach

2.81

0.085

3.472

Dry forest

2.71

0.128

5.086

Mangrove swamp

1.58

0.2777

1.507

Vegetable species

Ostional mangrove

The sampled site consists of 55 census species, located in 25 botanical families. Within the sampling points, 3 marked plant associations were characterized, which are:

1. Coastal vegetation,

2. Mangrove,

3. and dry secondary forest.

The mangrove swamp is characterized by presenting floodable areas with a mixture of fresh and saltwater. These sites are occupied by halophilic species or tolerant to high concentrations of salts and water stress. The species present at this site are Rhizophora mangle L (red), Laguncularia racemosa (L.) C.F. Gaertn (white), Pelliciera Rhizophora Planch. & Triana. (piñuela), Hippomane mancinella L., Prosopis juliflora (Sw.) DC., Conocarpus erectus L. (buttonwood), Coccoloba caracasana Meisn., Bromelia pinguin L., Talipariti tiliaceum (Arruda) Fryxell. These species are characteristic of mangrove zones in the Nicaraguan Pacific, except for Pelliciera Rhizophora, which had not been reported in the Nicaraguan Pacific; but it is known that it is distributed in the Caribbean zone of Nicaragua in Bluefields (Roth 1991). Strangely, this plant has not followed its natural distribution and dispersion since this mangrove is bordered by a ridge of sand, preventing its marine hydro dispersion.

The diversity indexes in the mangroves are low, therefore, in this investigation, we limited ourselves to mentioning the richness of species at the site. The trees found there are quite mature with heights greater than 12 meters with abundant recruit trees that come positioned from the uncovered mangrove areas.

Calderon03.png

Figure 3. Vegetative species in the Ostional estuary. a) Red mangrove b) Piñuela mangrove c) Coastal vegetation c) Dry forest

Ostional coastal area

It is characterized by having pioneering bushes or latizal species, mainly limited to the presence of marine sand, stones, calcareous residues, and lack of soil. The areas that are exposed to high solar radiation mostly have annual plants with a short life range, these species are limited to the sandbanks. The Shannon index (2.81) shows that the diversity in the tidal areas is moderately high, superior to the mangrove swamp, and compared to the forest and the Simpson index indicates that there is little dominance of the species developed in that area probably due to the ability to be a formation that does not have a plant balance since many species are competing for space.

Dry forest

The dry forest that appears on the banks of the Ostional River presents tree areas with heights greater than 15 meters with a diversity (2.71), according to Shannon less than that of the coastal zone with the great difference that the forest consists of specimens of higher heights, its diversity is less due to the equilibrium pattern of trees that have a long life and are perennial. Regarding the dominant species, there are no results according to the Simpson index that shows a pattern of dominant species in the census populations, keeping the diversity inversely proportional to the dominance reflected in the tables.

Geomorphological classification based on the TPI

As previously noted, the topographic position index is inherently scale-dependent (Weiss, 2001), and the TPI of the same point could change according to its scale. Thus, the TPI with a small analysis size captures the local Peaks and Valleys, while the large analyzes capture characteristics on a large scale (Janness, 2006). Since the terrain is not very large (approximately 300m x 600m), it is preferred to use a small scale (50m radius).

According to this classification, the plain areas surrounded by Summits would be the ones that accumulate the most freshwater (from precipitation or river overflow). The Summits are areas of little accumulation of freshwater, being above the surrounding areas. Steep slope areas are intermediate zones, where not much water accumulation is expected, but surface runoff is expected.

Calderon04In.png

Figure 4. Geomorphological classification and zoning map of Mangrove species

Discussion

Flooding and zoning of mangrove species

The contribution of freshwater to the mangrove system occurs through local precipitation and flooding from the estuary (deVries 2016; Calderón 2014). These contributions of freshwater accumulate thanks to the clay content of the soils in forest areas where there are small depressions or barriers formed by sediment deposits (deVries 2016). In this case, we use the geomorphological classification generated by the TPI as an indicator of areas where due to the slope, more or less accumulation of freshwater is expected.

Zones represented by polygons were defined where one mangrove species is much more abundant than the others (Figure 4). These polygons were superimposed on the landform typologies defined with the TPI to analyze patterns. Outside the polygons, the predominance of a single species could not be established, which limits our analysis.

White mangrove patches are found in the Steep and Flat areas. The piñuela mangrove is in a steep slope area but surrounded by peaks and plains. The red mangrove is concentrated in an area of the Plain, surrounded by Summits. Finally, the button is in the Summits area.

The white mangrove patches are found in the Steep and Flat areas. The piñuela mangrove is in a steep slope area but surrounded by peaks and plains. The red mangrove is concentrated in an area of the Plain, surrounded by Summits. Finally, the button is in the Summits area.

According to Jimenez (1998), in the mangroves of the Central American Pacific with seasonal dry climates, the salinity gradient of the soil increases when moving away from the estuaries and channels, since the frequency of flooding decreases and there is a higher concentration of salts, which is related to less development of tree size. In the case of Ostional, the sand bar closes the system to the sea and flooding occurs either due to the filling of the estuary or due to excessive precipitation. The red mangrove develops in the most floodable areas (near the estuary and the Plains area (flat) surrounded by Summits (ridges). In this case, near the estuary where it has a constant supply of water. Instead, the White Mangrove is concentrated in less floodable areas and the Buttonwood grows on ridges, outside the flood zone, which corresponds to already known zoning patterns (Figure 5).

Calderon05.png

Figure 5. Zoning of mangrove species and flooding areas by the tide (Red mangrove, Black Mangrove, White Mangrove, Buttonwood (https://www.floridamuseum.ufl.edu/southflorida/habitats/mangroves/zonation/)

The presence of piñuela mangrove is associated with the supply of freshwater. In undisturbed environments, it is a minor constituent but tends to spread if other trees have been removed and freshwater is available. This is the case at Ostional. It grows best in wet soils, slowly flooded by high tide (IUCN 2008). This species is on the IUCN Red List of Endangered Species and had not been reported for the Nicaraguan Pacific.

Conclusions

The Ostional estuary forest is made up of a mangrove area that includes: White, Red, Piñuela, and Buttonwood Mangrove. Besides, coastal vegetation and dry tropical forest were identified.

The TPI allowed an adequate classification of landforms in an area with little variation in elevations (~ 3m). The zoning of mangrove species in this area is associated with flood areas (Plains surrounded by Summits): red mangrove. The White Mangrove is located in areas of a steep slope where there are less flooding and the buttonwood in areas of Summits where no flooding occurs.

The piñuela mangrove has been able to spread due to the supply of freshwater from the estuary and the removal of other species due to anthropogenic activity. This species is on the IUCN Red List of Endangered Species and had not been reported for the Nicaraguan Pacific.

Using TPI as a terrain shape classification tool is a useful tool even for small variations in elevation and small scales.

Thanks to

The financing for this work was provided by the Research Fund (FPI) of the UNAN-Managua. The topographic survey was done by the Faculty of Sciences and Engineering with the help of Eng. Roberto Aguirre.

Bibliography


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Calderon, H., Weeda, R., & Uhlenbrook, S. (2014). Hydrological and geomorphological controls on the water balance components of a mangrove forest during the dry season in the Pacific Coast of Nicaragua. Wetlands, 34(4), 685-697.

De Vries, S. (2016). Blind estuaries during drought: The influences of a sandbar on mangrove trees. Tesis de Maestría. TU Delft.

Ellison, A., Farnsworth, E. & Moore, G. 2010. Pelliciera rhizophorae. The IUCN Red List of Threatened Species 2010: e.T178833A7621318. http://dx.doi.org/10.2305/IUCN.UK.20102.RLTS.T178833A7621318.en

Feller, I & Sitnik, M. 1996. Mangrove ecology: A manual for a field course, A fields manual focused on the biocomplexity on mangrove ecosystem. Smithsonian institution. 1-45.

Foster, B. R., N. C. Hernández, E., E. K. Kakudidi y R. J. Burnham. 1995. Un método de transectos variables para la evaluación rápida de comunidades de plantas en los trópicos. Manuscrito no publicado. Chicago: Environmental and Conservation Programs, Field Museum of Natural History; and Washington, D. C.: Conservation Biology, Conservation International.

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Appendix

Table 1. Species found in Ostional.

Species

Botanical Family

Annona reticulata L.

Annonaceae

Cascabela ovata (Cav.) Lippold

Apocynaceae

Rauvolfia tetraphylla L.

Apocynaceae

Stemmadenia pubescens Benth.

Apocynaceae

Crescentia alata Kunth

Bignoniaceae

Crescentia cujete L.

Bignoniaceae

Tabebuia rosea (Bertol.) DC.

Bignoniaceae

Cordia dentata Poir

Boraginaceae

Varronia inermis (Mill.) Borhidi

Boraginaceae

Bromelia pinguin L.

Bromeliaceae

Cleome spinosa Jacq.

Capparaceae

Conocarpus erectus L.

Combretaceae

Laguncularia racemosa (L.) C.F. Gaertn.

Combretaceae

Commelina erecta L.

Commelinaceae

Ipomoea pes-caprae (L.) R. Br.

Convolvulaceae

Euphorbia hirta L.

Euphorbiaceae

Hippomane mancinella L.

Euphorbiaceae

Hura crepitans L.

Euphorbiaceae

Jatropha gossypiifolia L.

Euphorbiaceae

Sapium glandulosum (L.) Morong

Euphorbiaceae

Canavalia rosea (Sw.) DC.

Fabaceae

Crotalaria retusa L.

Fabaceae

Enterolobium cyclocarpum (Jacq.) Griseb

Fabaceae

Gliricidia sepium (Jacq.) Kunth

Fabaceae

Haematoxylum brasiletto H. Karst

Fabaceae

Mimosa pudica L.

Fabaceae

Pithecellobium lanceolatum (Humb. & Bonpl. ex Willd.) Benth.

Fabaceae

Prosopis juliflora (Sw.) DC.

Fabaceae

Samanea saman (Jacq.) Merr.

Fabaceae

Senna atomaria L.

Fabaceae

Senna pallida (Vahl) H.S. Irwin & Barneby

Fabaceae

Tamarindus indica L

Fabaceae

Vachellia collinsii (Saff.) Seigler & Ebinger

Fabaceae

Vachellia farnesiana (L.) Wight & Arn.

Fabaceae

Astraea lobata (L.) Klotzsch

Malvaceae

Guazuma ulmifolia Lam.

Malvaceae

Sida sp.

Malvaceae

Talipariti tiliaceum (Arruda) Fryxell

Malvaceae

Waltheria indica L.

Malvaceae

Azadirachta indica A.

Meliaceae

Trichilia martiana C. DC.

Meliaceae

Castilla elastica Sessé

Moraceae

Pisonia macranthocarpa (Donn. Sm.) Donn. Sm.

Nyctaginaceae

Passiflora foetida L.

Passifloraceae

Turnera scabra Millsp

Passifloraceae

Petiveria alliacea L.

Phytolaccaceae

Piper sp.

Piperaceae

Coccoloba caracasana Meisn.

Polygonaceae

Coccoloba floribunda (Benth.) Lindau

Polygonaceae

Rhizophora mangle L.

Rhizophoraceae

Thouinidium decandrum (Bonpl.) Radlk.

Sapindaceae

Simarouba amara Aubl.

Simaroubaceae

Pelliciera rhizophorae Planch. & Triana

Tetrameristaceae

Cissus verticillata (L.) Nicolson & C.E. Jarvis

Vitaceae

Mangrove

Species

Family

Rhizophora mangle L.

Rhizophoraceae

Laguncularia racemosa (L.) C.F. Gaertn.

Combretaceae

Pelliciera rhizophorae Planch. & Triana

Tetrameristaceae

Hippomane mancinella L.

Euphorbiaceae

Prosopis juliflora (Sw.) DC.

Fabaceae

Conocarpus erectus L.

Combretaceae

Coccoloba caracasana Meisn.

Polygonaceae

Bromelia pinguin L.

Bromeliaceae

Talipariti tiliaceum (Arruda) Fryxell

Malvaceae

Table 2. With the application of the diversity index present in the coastal area of the beaches of Ostional.

Species

ni

Pi

Ln (Pi)

Astraea lobata (L.) Klotzsch

2

0,008403361

-4,779123493

-0,040160702

Azadirachta indica A.

19

0,079831933

-2,527831695

-0,20180169

Crescentia cujete L.

3

0,012605042

-4,373658385

-0,055130148

Canavalia rosea (Sw.) DC.

6

0,025210084

-3,680511204

-0,092785997

Cascabela ovata (Cav.) Lippold

2

0,008403361

-4,779123493

-0,040160702

Cissus verticillata (L.) Nicolson & C.E. Jarvis

1

0,004201681

-5,472270674

-0,022992734

Cleome spinosa Jacq.

4

0,016806723

-4,085976313

-0,068671871

Commelina erecta L.

4

0,016806723

-4,085976313

-0,068671871

Crotalaria retusa L.

2

0,008403361

-4,779123493

-0,040160702

Euphorbia hirta L.

16

0,067226891

-2,699681951

-0,181491224

Guazuma ulmifolia Lam.

5

0,021008403

-3,862832761

-0,081151949

Haematoxylum brasiletto H. Karst

10

0,042016807

-3,169685581

-0,133180066

Hippomane mancinella L.

1

0,004201681

-5,472270674

-0,022992734

Ipomoea pes-caprae (L.) R. Br.

10

0,042016807

-3,169685581

-0,133180066

Jatropha gossypiifolia L.

26

0,109243697

-2,214174136

-0,241884569

Mimosa pudica L.

3

0,012605042

-4,373658385

-0,055130148

Passiflora foetida L.

2

0,008403361

-4,779123493

-0,040160702

Petiveria alliacea L.

2

0,008403361

-4,779123493

-0,040160702

Rauvolfia tetraphylla L.

3

0,012605042

-4,373658385

-0,055130148

Senna pallida (Vahl) H.S. Irwin & Barneby

23

0,096638655

-2,336776458

-0,225822935

Sida sp.

9

0,037815126

-3,275046096

-0,123846281

Simarouba amara Aubl.

2

0,008403361

-4,779123493

-0,040160702

Stemmadenia pubescens Benth.

3

0,012605042

-4,373658385

-0,055130148

Tamarindus indica L

4

0,016806723

-4,085976313

-0,068671871

Turnera scabra Millsp

22

0,092436975

-2,38122822

-0,220113533

Vachellia collinsii (Saff.) Seigler & Ebinger

45

0,18907563

-1,665608184

-0,314925917

Varronia inermis (Mill.) Borhidi

5

0,021008403

-3,862832761

-0,081151949

Waltheria indica L.

4

0,016806723

-4,085976313

-0,068671871

238

-2,813493928

Table 3. Explaination of the Shannon index for diversity in the dry forest present near the Ostional.

Species

ni

pi

Ln(pi)

Annona reticulata L.

2

0,0645161

-2,74084

-0,176828

Azadirachta indica A.

31

0,2695652

-1,310945

-0,353385

Castilla elastica Sessé

1

0,0086957

-4,744932

-0,04126

Cissus verticillata (L.) Nicolson & C.E. Jarvis

1

0,0086957

-4,744932

-0,04126

Coccoloba caracasana Meisn.

2

0,0173913

-4,051785

-0,070466

Coccoloba floribunda (Benth.) Lindau

1

0,0086957

-4,744932

-0,04126

Cordia dentata Poir

1

0,0086957

-4,744932

-0,04126

Crescentia alata Kunth

1

0,0086957

-4,744932

-0,04126

Crescentia cujete L.

1

0,0086957

-4,744932

-0,04126

Enterolobium cyclocarpum (Jacq.) Griseb

1

0,0086957

-4,744932

-0,04126

Gliricidia sepium (Jacq.) Kunth

2

0,0173913

-4,051785

-0,070466

Guazuma ulmifolia Lam.

1

0,0086957

-4,744932

-0,04126

Hura crepitans L.

3

0,026087

-3,64632

-0,095121

Piper sp.

2

0,0173913

-4,051785

-0,070466

Pisonia macranthocarpa (Donn. Sm.) Donn. Sm.

1

0,0086957

-4,744932

-0,04126

Pithecellobium lanceolatum (Humb. & Bonpl. ex Willd.) Benth.

4

0,0347826

-3,358638

-0,116822

Prosopis juliflora (Sw.) DC.

5

0,0434783

-3,135494

-0,136326

Samanea saman (Jacq.) Merr.

1

0,0086957

-4,744932

-0,04126

Sapium glandulosum (L.) Morong

1

0,0086957

-4,744932

-0,04126

Senna atomaria L.

1

0,0086957

-4,744932

-0,04126

Simarouba amara Aubl.

2

0,0173913

-4,051785

-0,070466

Stemmadenia pubescens Benth.

4

0,0347826

-3,358638

-0,116822

Tabebuia rosea (Bertol.) DC.

1

0,0086957

-4,744932

-0,04126

Thouinidium decandrum (Bonpl.) Radlk.

12

0,1043478

-2,260025

-0,235829

Trichilia martiana C. DC.

11

0,0956522

-2,347037

-0,224499

Vachellia collinsii (Saff.) Seigler & Ebinger

14

0,1217391

-2,105875

-0,256367

Vachellia farnesiana (L.) Wight & Arn.

8

0,0695652

-2,665491

-0,185425

115

-2,715673

Simpson Index that demonstrates and supports diversity in the area where dominant plants do not exist in the census conducted in the coastal area.

Species

ni

Pi

Pi ^2

Astraea lobata (L.) Klotzsch

2

0,008403361

7,06165E-05

Azadirachta indica A.

19

0,079831933

0,006373137

Crescentia cujete L.

3

0,012605042

0,000158887

Canavalia rosea (Sw.) DC.

6

0,025210084

0,000635548

Cascabela ovata (Cav.) Lippold

2

0,008403361

7,06165E-05

Cissus verticillata (L.) Nicolson & C.E. Jarvis

1

0,004201681

1,76541E-05

Cleome spinosa Jacq.

4

0,016806723

0,000282466

Commelina erecta L.

4

0,016806723

0,000282466

Crotalaria retusa L.

2

0,008403361

7,06165E-05

Euphorbia hirta L.

16

0,067226891

0,004519455

Guazuma ulmifolia Lam.

5

0,021008403

0,000441353

Haematoxylum brasiletto H. Karst

10

0,042016807

0,001765412

Hippomane mancinella L.

1

0,004201681

1,76541E-05

Ipomoea pes-caprae (L.) R. Br.

10

0,042016807

0,001765412

Jatropha gossypiifolia L.

26

0,109243697

0,011934185

Mimosa pudica L.

3

0,012605042

0,000158887

Passiflora foetida L.

2

0,008403361

7,06165E-05

Petiveria alliacea L.

2

0,008403361

7,06165E-05

Rauvolfia tetraphylla L.

3

0,012605042

0,000158887

Senna pallida (Vahl) H.S. Irwin & Barneby

23

0,096638655

0,00933903

Sida sp.

9

0,037815126

0,001429984

Simarouba amara Aubl.

2

0,008403361

7,06165E-05

Stemmadenia pubescens Benth.

3

0,012605042

0,000158887

Tamarindus indica L

4

0,016806723

0,000282466

Turnera scabra Millsp

22

0,092436975

0,008544594

Vachellia collinsii (Saff.) Seigler & Ebinger

45

0,18907563

0,035749594

Varronia inermis (Mill.) Borhidi

5

0,021008403

0,000441353

Waltheria indica L.

4

0,016806723

0,000282466

238

D

0,085163477

1-D

0,914836523

Simpson's index in the dry forest where it is shown that it is in condition of balanced diversity or in search of balance where pioneer species are disappearing to remain perennial.

Species

ni

pi

Pi ^2

Annona reticulata L.

2

0,064516129

0,0041623

Azadirachta indica A.

31

0,269565217

0,0726654

Castilla elastica Sessé

1

0,008695652

7,561E-05

Cissus verticillata (L.) Nicolson & C.E. Jarvis

1

0,008695652

7,561E-05

Coccoloba caracasana Meisn.

2

0,017391304

0,0003025

Coccoloba floribunda (Benth.) Lindau

1

0,008695652

7,561E-05

Cordia dentata Poir

1

0,008695652

7,561E-05

Crescentia alata Kunth

1

0,008695652

7,561E-05

Crescentia cujete L.

1

0,008695652

7,561E-05

Enterolobium cyclocarpum (Jacq.) Griseb

1

0,008695652

7,561E-05

Gliricidia sepium (Jacq.) Kunth

2

0,017391304

0,0003025

Guazuma ulmifolia Lam.

1

0,008695652

7,561E-05

Hura crepitans L.

3

0,026086957

0,0006805

Piper sp.

2

0,017391304

0,0003025

Pisonia macranthocarpa (Donn. Sm.) Donn. Sm.

1

0,008695652

7,561E-05

Pithecellobium lanceolatum (Humb. & )

4

0,034782609

0,0012098

Prosopis juliflora (Sw.) DC.

5

0,043478261

0,0018904

Samanea saman (Jacq.) Merr.

1

0,008695652

7,561E-05

Sapium glandulosum (L.) Morong

1

0,008695652

7,561E-05

Senna atomaria L.

1

0,008695652

7,561E-05

Simarouba amara Aubl.

2

0,017391304

0,0003025

Stemmadenia pubescens Benth.

4

0,034782609

0,0012098

Tabebuia rosea (Bertol.) DC.

1

0,008695652

7,561E-05

Thouinidium decandrum (Bonpl.) Radlk.

12

0,104347826

0,0108885

Trichilia martiana C. DC.

11

0,095652174

0,0091493

Vachellia collinsii (Saff.) Seigler & Ebinger

14

0,12173913

0,0148204

Vachellia farnesiana (L.) Wight & Arn.

8

0,069565217

0,0048393

115

D

0,1237086

1-D

0,8762914