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Mexico's National Forest and Soils Inventory 2009-2014

Mexico, 2009 - 2014
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Reference ID
MEX_2009-2014_INFyS_v01_EN_M_v01_A_ESS
Producer(s)
Comisión Nacional Forestal, Gerencia de Sistema Nacional de Monitoreo Forestal
Collections
Forest Inventory Data
Metadata
Documentation in PDF DDI/XML JSON
Created on
Sep 09, 2024
Last modified
Sep 09, 2024
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313
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  • Study Description
  • Downloads
  • Get Microdata
  • Identification
  • Scope
  • Coverage
  • Producers and sponsors
  • Sampling
  • Data collection
  • Data processing
  • Data appraisal
  • Data Access
  • Disclaimer and copyrights
  • Contacts
  • Metadata production
  • Identification

    Survey ID number

    MEX_2009-2014_INFyS_v01_EN_M_v01_A_ESS

    Title

    Mexico's National Forest and Soils Inventory 2009-2014

    Country
    Name Country code
    México MEX
    Study type

    Forest resource survey

    Series Information

    Mexico has previously conducted the National Forest and Soils Inventory for the period 2004-2007.

    Abstract

    The National Forest and Soil Inventory System (INFyS), established by Mexico's General Law for Sustainable Forest Development, serves as a critical national forestry policy instrument. Implemented by the National Forestry Commission (CONAFOR), INFyS generates comprehensive data on Mexico's forest resources and soil conditions. This data plays a vital role in informing sound decision-making for forestry policy, ultimately promoting sustainable forest management practices.

    Undertaken every five years, INFyS employs a rigorous assessment and monitoring methodology to evaluate the status and dynamics of Mexico's forest ecosystems. Following comprehensive field data analysis, INFyS publishes results reports detailing the extent, location, and composition of forest and other wooded lands; providing information on various forest vegetation types, formations, and classes; and reporting the changes in the nation's forest cover over time.

    INFyS data extends beyond domestic needs, contributing significantly to national reporting that fulfills international commitments. For instance, it supports reporting under the Forest Resources Assessment (FRA). Furthermore, INFyS data is instrumental in accounting for greenhouse gas (GHG) emissions within the forestry sector, aligning with the Paris Agreement. This includes quantifying emissions reductions achieved through deforestation and forest degradation mitigation efforts. By providing this crucial information, INFyS plays a central role in promoting sustainable forest management practices in Mexico.

    Kind of Data

    Sample survey data [ssd]

    Unit of Analysis

    Fields/plots

    Scope

    Notes

    The INFyS is a multipurpose and comprehensive inventory. In the second cycle, 36 quantitative variables and 171 qualitative variables were incorporated in each sampling unit, depending on the ecosystem and the year of collection. These variables are grouped according to the sampling level and type of information, and are divided into 24 sections.

    1. General information
    2. Species diversity by stratum
    3. Epiphyte diversity in trees
    4. Bodies of water
    5. Environmental impacts
    6. Additional information on fires
    7. Additional information on pests
    8. General information
    9. Trees (forest and jungle)
    10. Trees (other communities)
    11. Subsample
    12. Reforestation (forest and jungle and other communities)
    13. Minor vegetation (other communities)
    14. Cover (saplings, shrubs, herbs)
    15. Minor vegetation and soil cover
    16. General information
    17. Soil cover by vegetation
    18. Water erosion with soil loss
    19. Wind loss
    20. Soil works
    21. Minor fuels
    22. Major fuels
    23. Canopy cover
    24. Leaf litter

    Note. Data collection for each module depends on the availability of financial resources.

    Topics
    Topic
    forest inventory
    forest assessment
    forest survey
    timber production
    Keywords
    forest resources forest ecosystem forest land cover forest area forest vegetation tree-species diversity forest type mangroves forest health forest growth forest soils biomass carbon stocks volume timber deadwood canopy cover forest regenaration land use land-use change wildfires

    Coverage

    Geographic Coverage

    National coverage

    Universe

    INFyS is a land-based survey that covers all types of forests and other forest lands in the country. The target population of INFyS includes all naturally occurring forest vegetation in the country, comprising temperate and tropical forests, and vegetation in arid and semi-arid zones, palm groves, mangroves, hydrophilic communities, and other forest areas.

    Producers and sponsors

    Primary investigators
    Name
    Comisión Nacional Forestal
    Gerencia de Sistema Nacional de Monitoreo Forestal
    Producers
    Name
    Instituto Nacional de Estadística y Geografía
    Centro de Geociencias - Universidad Nacional Autónoma de México Campus Juriquilla, Qro. MX
    Instituto Nacional de Investigaciones Forestales, Agrícolas y Pecuarias
    Instituto Nacional de Ecología y Cambio Climático
    Funding Agency/Sponsor
    Name
    Secretaría de Medio Ambiente y Recursos Naturales
    Comisión Nacional Forestal

    Sampling

    Sampling Procedure

    INFyS uses systematic-stratified sampling design in two phases, in which 26,220 primary sampling plots (conglomerates) are located; sampling plots location is based on a systematic 2.5 x 2.5 km national sampling grid. Following this grid, 26,220 sampling plots or Primary Sample Units (UMP) are located in three sampling strata and intensities as follows: 5x5 km for temperate, sub-humid, and humid forests; 10x10 km for semi-arid forest-vegetation types; and 20x20 km for arid forest-vegetation types. The 2.5 x 2.5 km national sampling grid allows for implementing state and/or municipal forest inventories with greater detail.
    Each UMP is a circular plot of one hectare (56.42 m in radius), with four secondary sampling units (UMS) geometrically arranged as an inverted "Y" with respect to north. UMS number 1 is also the center of the UMP and UMS 2, 3 and 4 are peripheral. The distance from the center of UMS 1 to each of the other secondary sampling units is 45.14 m. The azimuth to locate sites 2, 3 and 4 from the center of the site 1 is 0°, 120, and 240° respectively.
    Within the conglomerate, measurements and observations are made on the different elements of vegetation and soil. Secondary sampling units (SSU) have a nested design with sampling sub-sites of different dimensions, according to the object of study. In UMS, specific information such as tree diameter at breast height (dbh) and height, species, tree damages and severity; and other dasometric features for trees with dbh equal to or greater than 7.5 cm is collected. In the case of vegetation of arid zones, data for larger individuals (with height equal to or greater than 25 cm, with the exception of globose life forms where the threshold is 10 cm in height) is recorded. In the center of each UMS, a 12.56-square meter circular subplot is established to collect data from trees with dbh less than 7.5 cm and height greater than or equal to 25 cm. Finally, in the center of each UMS, a 1-square meter (1 m x 1 m) plot is established to collect information on shrub and other non-tree species, such grasses, ferns, and lichens; data on soil condition, presence of organic matter, dead wood and erosion is also recorded. A full description of the field methodology for dat collection can be found at:
    https://www.conafor.gob.mx/apoyos/docs/externos/2022/DocumentosMetodologicos/2010/Manual_remuestreo_infys_2010.pdf

    Deviations from the Sample Design

    5% of the national sample (1,131 UMP), are conglomerates called satellite monitoring, since prior to sampling and after a feasibility analysis based on inaccessibility information in the first sampling cycle and geospatial inputs, they were excluded from the office for falling into inappropriate physiographic conditions for access.

    Response Rate

    Between 2009 and 2014, 85.5% of the conglomerates of the national sampling grid were sampled. This was mainly due to sampling plots were located in inaccessible areas, permission was not granted by landowners, or due to security or other reasons (e.g. land tenure or social conflicts).

    Weighting

    The ratio estimator statistical method is utilized to estimate key forest indicators (such as volume, biomass, carbon stocks, basal area, and tree density, among others), as outlined in Velasco et al. (2003), available at http://cienciasforestales.inifap.gob.mx/index.php/forestales/article/view/882. This method offers data on a per-hectare basis for relevant indicators, using the ratio of two sampled values to estimate a population parameter. In the context of forest inventories, this technique commonly involves using the proportion of sampling units containing a specific attribute of interest (e.g., trees, volume, or basal area) to estimate the total proportion of the population possessing that attribute; information on confidence intervals and the relative sampling error is also provided by this statistical method.
    Forest indicators are calculated at the national level by weighin, taking into account the area of each stratum. This ensures that the indicators accurately represent the composition and variability of the entire forest resource across the country.

    Data collection

    Dates of Data Collection
    Start End
    2009-01-03 2014-12-12
    Time Method

    Second sampling cycle: 2009-2014

    Mode of data collection
    • Field measurement [field]

    Data processing

    Data Editing

    CONAFOR contracted external providers to conduct cluster sampling for the INFyS. Specialized field crews were responsible for collecting data in physical formats. After a general review of the collected data by camp supervisors, if no errors were found, the data was organized. Subsequently, this data had to be digitized using the Capture Client software, specifically designed for INFyS. This Java-based software serves as a tool for data entry and management.

    To ensure data quality, specialized CONAFOR personnel conducted random audits within Capture Client to detect inconsistencies or errors. The consolidated data was stored in a central Microsoft SQL Server database, where SQL scripts were applied to perform automated analyses. Finally, the data was exported in .csv or Excel formats, facilitating analysis in statistical software such as R and Microsoft Excel for the calculation of forest indicators.

    Data appraisal

    Estimates of Sampling Error

    The quantitative data analysis provides important dasometric indicators such as tree density, crown cover, above-ground biomass, carbon stocks, and timber volume. Statistical methods are used to generate reports for these indicators. The estimation of these relevant indicators is based on the ratio estimator (ER) approach, a statistical methodological approach developed to improve the accuracy of average values of relevant forest indicators based on the sampled area (Velasco, et. al., 2003; available at http://cienciasforestales.inifap.gob.mx/index.php/forestales/article/view/882

    Data Appraisal

    Some issues were encountered during data collection. The main problems included the inaccessibility of primary sampling units, leading to biased estimations of indicators. Errors in field data collection included mainly misidentification of tree species by scientific names, inconsistencies between tree height and diameter, and mislabeling of vegetation types.

    Data Access

    Confidentiality
    Is signing of a confidentiality declaration required? Confidentiality declaration text
    yes Personal data provided by contacts in the field are confidential and therefore classified as reserved and these are not provided to any person who requests information about the INFyS.
    The Policy for the Management of Confidentiality in Statistical and Geographic Information (PGCIEG) establishes the general measures that must be implemented to manage the statistical confidentiality of the data provided by the System Informants (SI) under the National Statistical and Geographic Information System (SNIEG). The PGCIEG is mandatory for all State Units responsible for the generation and management of Information of National Interest (IIN), under the SNIEG criteria. PGCIEG is available at https://dof.gob.mx/nota_detalle.php?codigo=5634105&fecha=29/10/2021#gsc.tab=0.

    CONAFOR is mandated to implement the PCMSIG, as it is the institution responsible for INFyS implementation which was determined as IIN, by an agreement published on May 28, 2014, in the Official Gazette of the Federation, available at https://www.dof.gob.mx/nota_detalle.php?codigo=5346488&fecha=28/05/2014#gsc.tab=0.

    The PCIEG sets out measures to ensure the confidentiality of the data provided by the system's informants. The policy aims to protect the privacy of informants and ensure that the individual information they provide is kept confidential and used solely for statistical and geographic purposes.
    Access conditions

    Data available from an external repository

    Citation requirements

    "CONAFOR, (year of consultation). Database of the National Forest and Soils Inventory 2009-2014, Mexico"

    Disclaimer and copyrights

    Disclaimer

    As an authorized end user of the INFyS database, you agree to the following terms:
    CONAFOR is not responsible for how you interpret or apply the information from the database. Any decisions based on your interpretation release CONAFOR from responsibility. CONAFOR is also not responsible for discrepancies due to precision, rounding, numerical truncation, or technical changes that may affect the results.
    Although CONAFOR strives to provide high-quality information and has implemented security measures to protect the data, it does not accept responsibility for any alteration or manipulation of the data once it is published on the website.
    The website may contain links to other national and international organizations. However, CONAFOR does not take responsibility for the content or use of these sites.
    The laws, regulations, and provisions on the website do not create new rights or obligations beyond those published in the Official Gazette of the Federation.

    Contacts

    Contacts
    Name Affiliation Email
    José Armando Alanís de la Rosa, Gerente de Sistema Nacional de Monitoreo Forestal CONAFOR [email protected]
    Leonardo Ruiz Delgado, Subgerente de Instrumentos de Colecta de Datos CONAFOR [email protected]
    Carlos Isaías Godínez Valdivia, Subgerencia de Administración de Bases de Datos del Sistena Nacional de Monitoreo Forestal CONAFOR [email protected]
    Sergio Armando Villela Gaytán, Departamento de Inventario Forestal y de Suelos CONAFOR [email protected]
    Rodrigo Ramos Madrigal, Departamento de Estadísticas Forestales CONAFOR [email protected]

    Metadata production

    DDI Document ID

    DDI_MEX_2009-2014_INFyS_v01_EN_M_v01_A_ESS_FAO

    Producers
    Name Affiliation Role
    Dissemination and Outreach Team, Statistics Division Food and Agriculture Organization Metadata adapted for FAM

    Metadata version

    DDI Document version

    MEX_2009-2014_INFyS_v01_EN_M_v01_A_ESS_v01

    Back to Catalog
    Food and Agriculture Organization of the United Nations

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